Archive

IMPLEMENTED RECONFIGURABLE CACHE MEMORY ARCHITECTURE BASED ON 32-BITS MIPS PROCESSOR

Authors:

Aqeel Al-Hilali

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00001

Abstract:

This work presents the design of a reconfigurable cache memory utilizing a 32-bit MIPS processor, implemented through the utilization of VHDL (Very high-speed IC Hardware Description Language). A comprehensive implementation of a 32-bit, single-cycle MIPS processor is presented in VHDL. This processor is capable of supporting 50 instructions, comprising 25-R-type, 16-I-type, and 9-J-type instructions. The processor incorporates a three-dimensional reconfigurable cache memory architecture, enabling the modification of cache memory size, cache organization (in terms of associativity), and cache block size. The reconfigurable cache memory concept proposes the use of multi-cache controller units to execute reconfiguration operations and ensure that all permitted cache memory sets can be utilized with varying levels of associativity. The design is built on an FPGA using the Xilinx ISE design suite, which is based on the hardware description language. To ensure that assess functionality of the proposed reconfigurable cache memory design for various reconfiguration scenarios, numerous assembly language programs have been developed and performed on the MIPS processor. The results validated the efficacy of the suggested reconfigurable cache memory concept and demonstrated its simulation using the Xilinx ISim simulator.

Keywords:

Cache memory,MIPS processor,VHDL language,Reconfiurable cache,FPGA,

Refference:

I. AbdulAmeer, Sabah Auda, et al. “Cyber Security Readiness in Iraq: Role of the Human Rights Activists.” International Journal of Cyber Criminology 16.2 (2022): 1-14.
II. D. Camarmas-Alonso, F. García-Carballeira, E. Del-Pozo-Puñal and A. C. Mateos, “A new generic simulator for the teaching of assembly programming,” 2021 XLVII Latin American Computing Conference (CLEI), Cartago, Costa Rica, 2021, pp. 1-9, doi: 10.1109/CLEI53233.2021.9640144.
III. D. Page, “A Practical Introduction to Computer Architacture”, London, UK: Springer- Verlag, 2009.
IV. D. Sweetman, “See MIPS Run”, 2nd ed., San Francisco, USA: Morgan Kaufmann, 2007.
V. H. S. Mehta, “Design of MIPS Processor”, MSc. Thesis, California State University Northridge, California, USA, 2012.
VI. I. Lokegaonkar, D. Nair and V. Kulkarni, “Enhancement of Cache Memory Performance,” 2021 3rd International Conference on Advances in Computing, Communication Control and Networking (ICAC3N), Greater Noida, India, 2021, pp. 1490-1492, doi: 10.1109/ICAC3N53548.2021.9725639.
VII. J. Colmenar, J. Alvareza and J. Martinb, “Multi-objective optimization of energy consumption and execution time in a single level cache memory for embedded systems”. In The Journal of System and Software, Vol. 111, pp. 200-212, 2016.
VIII. J. L. Hennessy, D. A. Patterson, “Computer Organization and Design: The Hardware/Software Interface”, 4th ed., Waltham, USA: Morgan Kaufmann, 2012.
IX. J. L. Hennessy, D. A. Patterson, “Computer Architecture: A Quantitative Approach”, 5th ed., San Francisco, USA: Morgan Kaufmann, 2012.
X. J. Park, J. Lee and S. Kim, “A Way-Filtering-Based Dynamic Logical-Associative Cache Architecture for Low-Energy Consumption”. IEEE Transactions on Very Large Scale Integration (VLSI) System, Vol. 25, Issue 3, pp. 793-805, 2017.
XI. J. Pereira, “Educational package based on the MIPS architecture for FPGA platforms”, MSc. Thesis, University of Porto, Portugal, 2009.
XII. K. Kumar, M. Bharathi and S. Hariprasad, “Reconfigurable cache Implementation on FPGA”. International Journal of Scientific & Engineering Research, Vol. 4, Issue 7, pp. 1924-1928, July 2013.
XIII. K. Sundararajan, M. Jones and N. Topham, “Smart cache: A self adaptive cache architecture for energy efficiency”. In International Conference on Embedded Computer Systems: Architectures, Modeling and Simulation, pages 41-50, July 2011.
XIV. M. B. Ibne Reaz, et al., “A Single Clock Cycle MIPS RISC Processor Design using VHDL”, IEEE International Conference on Semiconductor Electronics (ICSE2002), Penang, Malaysia, PP. 126 – 129, DEC. 2002.
XV. Mezaal, Yaqeen S., et al. “Cloud computing investigation for cloud computer networks using cloudanalyst.” Journal of Theoretical and Applied Information Technology, 96(20), 2018.
XVI. M. C. Altiniğneli, “Pipelined Design Approach to Microprocessor Architectures a Partial Implementation: MIPS™ Pipelined Architecture on FPGA”, MSc. Thesis, Middle East Technical University, Turkey, 2005.
XVII. M. Linder, M. Schmid, “Processor Implementation in VHDL”, MSc. thesis, University of Ulster, Augsburg, Germany, 2007.
XVIII. P. Dandamudi, Fundamentals of Computer Organization and Design. 2nd ed. New York, USA: Springer, 2002.
XIX. R. Anjana, G. Krunal, “ VHDL Implementation of a MIPS RISC Processor”, International Journal of Advanced Research in Computer Science and software Engineering, Vol. 2, No.8, PP.83-88, 2012.
XX. R. Bhargavi and T. Sudarshan, “Design Space Exploration of Cache Memory –A Survey”. In International Conference on Electrical, Electronics, and Optimization Techniques (ICEEOT), pp. 2294-2297, 2016.
XXI. R. Srinidhi “MIPS Processor Implementation”, MSc. Thesis, California State University Northridge, California, USA, 2012.
XXII. Roshani, Saeed, et al. “Filtering power divider design using resonant LC branches for 5G low-band applications.” Sustainability 14.19 (2022): 12291.
XXIII. R. S. Balpande, R. S. Keote, “Design of FPGA based Instruction Fetch & Decode Module of 32-bit RISC (MIPS) Processor”, International Conference on Communication Systems and Network Technologies (CSNT 2011), Katra, Jammu, PP. 409 – 413, Jun 2011.
XXIV. “Simplescalar”, http://www.simplescalar.com.
XXV. Shareef, M. S., Mezaal, Y. S., Sultan, N. H., Khaleel, S. K., Al-Hillal, A. A., Saleh, H. M., … & Al-Majdi, K. (2023). Cloud of Things and fog computing in Iraq: Potential applications and sustainability. Heritage and Sustainable Development, 5(2), 339-350.
XXVI. S. T, V. R. V and R. S. R., “Calculator Interface Design in Verilog HDL Using MIPS32 Microprocessor,” 2022 International Conference on Wireless Communications Signal Processing and Networking (WiSPNET), Chennai, India, 2022, pp. 126-129. 10.1109/WiSPNET54241.2022.9767133.
XXVII. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “New dual band dual-mode microstrip patch bandpass filter designs based on Sierpinski fractal geometry.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XXVIII. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “A novel design of two loosely coupled bandpass filters based on Hilbert-zz resonator with higher harmonic suppression.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XXIX. Yaqeen S. Mezaal, & Abdulkareem, S. F. (2018, May). New microstrip antenna based on quasi-fractal geometry for recent wireless systems. In 2018 26th Signal Processing and Communications Applications Conference (SIU) (pp. 1-4). IEEE.
XXX. V. Robio, “A FPGA Implementation of A MIPS RISC Processor for Computer Architecture Education”, MSc. thesis, New Mexico State University, Las Cruses, New Mexico, America, 2004.
XXXI. V. R. Wadhankar, V. Tehre, “A FPGA Implementation of a RISC Processor for Computer Architecture”, National Conference on Innovative Paradigms in Engineering & Technology (NCIPET-2012), Nagpur, India, PP. 24-28, 2012.

View Download

A COMPARATIVE STUDY OF QUADRUPOLE RAIL LAUNCHER AND TWO-WING ARMATURE ELECTROMAGNETIC LAUNCHER: MAGNETIC AND PERFORMANCE METRICS

Authors:

Gajja Prasad, Kondamudi Srichandan

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00002

Abstract:

This study presents a novel two-wing armature electromagnetic launcher design that aims to overcome the limitations of conventional quadrupole railguns. The proposed TWAEL system exhibits significantly enhanced magnetic field properties, achieving a 23-fold increase in magnetic flux density, an increase in magnetic field intensity, and a 1.6-fold increase in current density compared to the QRL under identical input conditions. Consequently, the TWAEL demonstrates a 6.7-fold greater electromagnetic co-energy storage capacity per unit volume, translating to substantially higher accelerative forces, reaching up to 18,045 N. Simulations validate the TWAEL's superior performance in terms of magnetic field characteristics and energy conversion efficiency, highlighting its potential as an advanced, high-performance electromagnetic propulsion system for various applications.

Keywords:

Compressive Strength,GGBS,Metakaoline,Regression Analysis,Split Tensile Strength,

Refference:

I. Du, Xiangyu, et al. “Design and experimental study of a curved contact quadrupole railgun.” , vol. 11, no. 19, 28 Sep. 2022, p. 3108. 10.3390/electronics11193108.
II. Jamison, A., K., and R.E. Stearns. “Electrical performance of a round bore, augmented, quadrupole railgun.” , vol. 33, no. 1, 1 Jan. 1997, p. 560-565. 10.1109/20.560074.
III. Karpagam, R., et al. “Understanding the behaviour of magnetic field distribution of railgun under transient conditions using finite element method.” , vol. 31, 1 Feb. 2024, p. 100971. 10.1016/j.measen.2023.100971.
IV. Kumar, Pradeep. Studies and optimisation of pulsed power components and armature of electromagnetic railgun.
V. Liu, Shaowei, et al. “Investigation of Electromagnetic Characteristic in Series-Connected Augmented Quadrupole Rail Launcher.” Institute of Electrical and Electronics Engineers, vol. 48, no. 1, 1 Jan. 2020, p. 299-304. 10.1109/tps.2019.2960023.
VI. Liu, Shaowei, et al. “Research on transient contact characteristics of the hyperbolic rail augmented quadrupole launcher.” , vol. 50, no. 10, 1 Oct. 2022, p. 3794-3801. 10.1109/tps.2022.3205048.
VII. Liu, Yong, et al. Analysis and expansion of measuring method for rail heat in electromagnetic railgun. 1 Jan. 2024, p. 1-8. 10.1109/tps.2024.3424686.
VIII. Ma, Jiahe, et al. Finite element analysis of current density distribution in the sliding contact interface of electromagnetic railguns: A literature review. 1 Jan. 2024, p. 1-1. 10.1109/access.2024.3414648.
IX. Majumder, Balo, Dipjyoti, et al. “Effect of driving current profile on acceleration efficiency of electromagnetic railgun.” , vol. 14, no. 8, 1 Aug. 2024. 10.1063/5.0214320.
X. Mao, Wang, et al. “Analysis of the research progress of electromagnetic railgun based on CiteSpace.” , vol. 12, 1 Jan. 2024, p. 3499-3513. 10.1109/access.2023.3349028.
XI. Praneeth, Naga, R., S., and Bhim Singh. “Investigations on taper angle variation and its effects on electromagnetic railgun parameters.” , vol. 52, no. 4, 1 Apr. 2024, p. 1481-1485. 10.1109/tps.2024.3395360.
XII. Prasad, G, Prasad, G, and Kondamudi Srichandan. Performance evaluation on two wing ring type armature with inductive type electromagnetic launching system. 25 Nov. 2022, p. 1-5. 10.1109/piicon56320.2022.10045133.
XIII. Qiao, Zhiming, et al. “Check for updates multi-stage LCR square-wave circuit as practical pulsed power supply for electromagnetic railgun.” , vol. 3, p. 174.
XIV. Rodriguez, Josiah, et al. Design and simulation of an electromagnetic railgun for high velocity impact testing.
XV. Shao, K.R., et al. Numerical calculation of contact resistance of electromagnetic railgun. 1 Jan. 2024, p. 441-451. 10.1007/978-981-97-1420-9_49.
XVI. Shu, Tao, et al. “Comparison and analysis of electromagnetic characteristics of new quadrupole track electromagnetic launcher.” , vol. 711, no. 1, 1 Jan. 2020, p. 012004. 10.1088/1757-899x/711/1/012004.
XVII. Wen, Ruihu, et al. Comprehensive electromagnetic protection method of radio fuze for electromagnetic railgun. p. 0.
XVIII. Wu, Kongwei, et al. “Investigation on the microstructure evolution and mechanical properties of electromagnetic rail material in a launch environment.” , vol. 208, 1 Feb. 2024, p. 113582. 10.1016/j.matchar.2023.113582.
XIX. Yang, Zhiyong, et al. “An electromagnetic rail launcher by quadrupole magnetic field for heavy intelligent projectiles.” , vol. 45, no. 7, 1 Jul. 2017, p. 1095-1100. https://doi.org/10.1109/tps.2016.2646377.
XX. Yang, Zhiyong, et al. “An Electromagnetic Rail Launcher by Quadrupole Magnetic Field for Heavy Intelligent Projectiles.” Institute of Electrical and Electronics Engineers, vol. 45, no. 7, 1 Jul. 2017, p. 1095-1100. 10.1109/tps.2016.2646377.
XXI. Yang, Zhiyong, et al. Performances of a large scale quadrupole railgun. 1 Dec. 2017, p. 853-857. 10.1109/icctec.2017.00189.
XXII. Manohar, Kintali, et al. “A Comprehensive design and simulation of quadrupole electromagnetic linear systems for precise positioning in aerospace.” , vol. 19, no. 6, 11 Jun. 2024, 10.26782/jmcms.2024.06.00006.
XXIII. Manohar, Kintali, and Kondamudi Srichandan. “Analysis of quadrupole magnetic field reluctance-based launcher with different coil switching patterns.” , vol. 51, no. 5, 1 May. 2023, p. 1370–1376. 10.1109/tps.2023.3266515.
XXIV. Srichandan, Kondamudi, et al. “A novel type coil-multipole field hybrid electromagnetic launching system.” , vol. 15, 1 Dec. 2019, p. 102786. 10.1016/j.rinp.2019.102786.
XXV. Srichandan, Kondamudi, and Mallikarjuna Rao Pasumarthi. “Computations of magnetic forces in multipole field electromagnetic launcher.” , vol. 4, no. 3, 1 Jun. 2019, p. 761. 10.33889//ijmems.2019.4.3-059.
XXVI. Kondamudi, Srichandan, et al. “Design and analysis of cored type multipole field electromagnetic launcher (C-MFEML).” , vol. 8, p. 391–395.

View Download

MICROSCOPICAL EXPLORATION OF POND ASH-INDUCED COMPRESSED INTERLOCKING BRICKS

Authors:

Gaurav Udgata, Kaliprasanna Sethy, Amaresh Tripathy, Kirtikanta Sahoo, Dipti Ranjan Biswal

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00003

Abstract:

Burnt clay bricks are widely used across India and remain one of the most essential materials in building construction. However, the excessive extraction of clay poses a threat to society, as brick kilns largely rely on high-quality clay sourced from agricultural land. To counter this issue this study evaluates the compressive strength and microstructural characteristics of pond ash-induced compressed interlocking bricks made using fly ash, pond ash, quarry dust, and varying amounts of lime and cement. Four different mixes (S1 to S4) were tested for compressive strength after 28 days, with the S2 mix containing 10% lime and no cement achieving the highest strength of 5.48 N/mm². SEM analysis showed a dense microstructure in S2, while S1 exhibited unreacted fly ash and calcium hydroxide, resulting in a lower strength of 3.94 N/mm². XRD results confirmed the presence of calcium silicate hydrate (CSH) gel in S2, responsible for the enhanced strength. EDAX analysis highlighted the highest calcium content in S2, further indicating the extensive pozzolanic reactions leading to better densification. The study confirms that the use of lime alone, in the absence of cement, can result in higher compressive strength through improved microstructural development.

Keywords:

Fly ash,Interlocking Blocks,Microstructure,Pond ash,

Refference:

I. Al-Fakih, Amin, et al. “Characteristic compressive strength correlation of rubberized concrete interlocking masonry wall.” Structures. Vol. 26. Elsevier, 2020. 10.1016/j.istruc.2020.04.010
II. Al-Fakih, Amin, et al. “Development of interlocking masonry bricks and its’ structural behaviour: A review paper.” IOP Conference Series: Earth and Environmental Science. Vol. 140. No. 1. IOP Publishing, 2018. 10.1088/1755-1315/140/1/012127
III. Annual report, Central Electricity Authority, Ministry of Power, Government of India, New Delhi, (2022-2023). https://cea.nic.in/wp-content/uploads/annual_reports/2023/Approved_CEA_Annual_Report_2022_23.pdf
IV. Balamuralikrishnan, R., and J. Saravanan. “Effect of addition of alccofine on the compressive strength of cement mortar cubes.” Emerging Science Journal 5.2 (2021): 155-170. 10.1016/j.cscm.2023.e01968
V. Bazzar, Kaoutar, Fatima Zahra Hafiane, and Adil Hafidi Alaoui. “The early age strength improvement of the high volume fly ash mortar.” Civil Engineering Journal 7.8 (2021): 1378-1388. 10.28991/cej-2021-03091731
VI. Bhavsar, Jay K., and Vijay Panchal. “Ceramic waste powder as a partial substitute of fly ash for geopolymer concrete cured at ambient temperature.” Civil Engineering Journal 8.07 (2022). 10.28991/CEJ-2022-08-07-05
VII. Chanda, Dabashis. A Study on Socio Demographic & Health Condition of Brick Field Workers in Different Areas of Bangladesh. Diss. East West University, 2016. http://dspace.ewubd.edu/handle/2525/1995
VIII. Ghosh, Ambarish, and Chillara Subbarao. “Hydraulic conductivity and leachate characteristics of stabilized fly ash.” Journal of Environmental Engineering 124.9 (1998): 812-820. 10.1061/(ASCE)0733-9372(1998)124:9(812)

IX. Ghosh, Prasenjit, and Sudha Goel. “Physical and chemical characterization of pond ash.” International Journal of Environmental Research and Development 4.2 (2014): 129-134.https://www.academia.edu/download/43606636/Physical_and_chemical_characterization_o20160310-16230-288rxh.pdf
X. Gupta, Gaurav, Hemant Sood, and Pardeep Gupta. “Performance evaluation of pavement geomaterials stabilized with pond ash and brick kiln dust using advanced cyclic triaxial testing.” Materials 13.3 (2020): 553. 10.3390/ma13030553
XI. Javan, Anooshe Rezaee, et al. “Mechanical behaviour of composite structures made of topologically interlocking concrete bricks with soft interfaces.” Materials & Design 186 (2020): 108347. http://dx.doi.org/10.1016/j.matdes.2019.108347
XII. Kumar, Rinku, and Naveen Hooda. “An experimental study on properties of fly ash bricks.” International journal of research in aeronautical and mechanical engineering 2.9 (2014): 56-67. https://www.jetir.org/papers/JETIRZ006049.pdf
XIII. Lal, Dhirajkumar, Aniruddha Chatterjee, and Arunkumar Dwivedi. “Investigation of properties of cement mortar incorporating pond ash–an environmental sustainable material.” Construction and Building Materials 209 (2019): 20-31. 10.1016/j.conbuildmat.2019.03.049
XIV. Mohamad, Habib Musa, et al. “Manufacture of concrete paver block using waste materials and by-products: a review.” GEOMATE Journal 22.93 (2022): 9-19. 10.21660/2022.93.j2363
XV. Prakash, K. Shyam, and Ch Hanumantha Rao. “Strength characteristics of quarry dust in replacement of sand.” IOP Conference Series: Materials Science and Engineering. Vol. 225. No. 1. IOP Publishing, 2017. 10.1088/1757-899X/225/1/012074
XVI. Rath, B., Shirish Deo, and G. Ramtekkar. “Durable glass fiber reinforced concrete with supplimentary cementitious materials.” International Journal of Engineering 30.7 (2017): 964-971. 10.5829/ije.2017.30.07a.05
XVII. Romeekadevi, M., and K. Tamilmullai. “Effective Utilization of Fly Ash and Pond Ash in High Strength Concrete.” International Journal of Engineering Research & Technology (IJERT)-special issue 3 (2015): 1-7 10.17577/IJERTCONV3IS04063.
XVIII. Safiee, Nor Azizi, et al. “Structural behavior of mortarless interlocking load bearing hollow block wall panel under out-of-plane loading.” Advances in structural engineering 14.6 (2011): 1185-1196. http://dx.doi.org/10.1260/1369-4332.14.6.1185
XIX. Sarkar, Raju, and A. R. Dawson. “Economic assessment of use of pond ash in pavements.” International Journal of Pavement Engineering 18.7 (2017): 578-594. 10.1080/10298436.2015.1095915
XX. Sarkar, Ritwik, Nar Singh, and Swapan Kumar Das. (2007) “Effect of addition of pond ash and fly ash on properties of ash—clay burnt bricks.” Waste management & research, Vol 25, No 6, 566-571. 10.1177/0734242X07080114
XXI. Shafabakhsh, Gholamali, and Saeed Ahmadi. (2016) “Evaluation of coal waste ash and rice husk ash on properties of pervious concrete pavement.” International Journal of Engineering, Vol 29, No 2, 192-201. 10.5829/idosi.ije.2016.29.02b.08
XXII. Sharmin, Shaila, Wahidul K. Biswas, and Prabir K. Sarker. “Exploring the Potential of Using Waste Clay Brick Powder in Geopolymer Applications: A Comprehensive Review.” Buildings 14.8 (2024): 2317. 10.3390/buildings14082317
XXIII. Sonawane, Prashant G., Arun Kumar Dwivedi, and P. Ash (2013). “Technical properties of pond ash-clay fired bricks–an experimental study.” American Journal of Engineering Research (AJER), Vol 2, No 9, 110-117. https://www.academia.edu/download/32048746/P029110117.pdf
XXIV. Thanoon, Waleed A., et al. “Development of an innovative interlocking load bearing hollow block system in Malaysia.” Construction and Building Materials 18.6 (2004): 445-454. 10.1016/j.conbuildmat.2004.03.013
XXV. Tripathy, A., & Acharya, P. K. (2024). Strength, life cycle analysis, embodied energy and cost-sensitivity assessment of sugarcane bagasse ash-based ternary blends of geopolymer concrete. European Journal of Environmental and Civil Engineering, 28(3), 591-610. 10.1080/19648189.2023.2219709
XXVI. Udgata,Gaurav.,Sahoo, Kirtikanta., Biswal, Dipti., Sahoo, Subham.(2024) “SUSTAINABLE INVESTIGATION ON POND ASH-INDUCED COMPRESSED INTERLOCKING BRICKS.” Journal of Mechanics of Continua and mathematical sciences, Vol-19,No-6 . 10.26782/jmcms.2024.06.00003
XXVII. Verma, Aditya, et al. “Utilization of pond ash as partial replacement of cement concrete mix.” International Research Journal of Engineering and Technology (IRJET) 3.3 (2016). https://www.irjet.net/archives/V3/i3/IRJET-V3I3108.pdf
XXVIII. Vidhya, K., and S. Kandasamy. “Experimental investigations on the properties of coal-ash brick units as green building materials.” International Journal of Coal Preparation and Utilization 36.6 (2016): 318-325. 10.1080/19392699.2015.1118379
XXIX. Vidhya, K., et al. “Experimental studies on pond ash brick.” J. Eng. Res. Develop 6.5 (2013): 6-11. http://www.ijerd.com/paper/vol6-issue5/B06050611.pdf
XXX. Vidhya, K., Kandasamy, K., Karthikeyan, S. R., & SathickBasha, G. (2013). Experimental studies on pond ash brick. J. Eng. Res. Develop, 6(5), 6-11. https://www.ijerd.com/paper/vol6-issue5/B06050611.pdf
XXXI. Vijay Adhithya A., Kalpana V. G., and Malavan K. (2021) “Development and performance evaluation of interlocking bricks using industrial waste materials.” International Journal of Advance Research, Ideas and Innovations in Technology, Volume 7, Issue 4 – V7I4-1207.https://www.ijariit.com/manuscript/development-and-performance-evaluation-of-interlocking-bricks-using-industrial-waste-materials/

View Download

BAYESIAN ANALYSIS OF TOPP-LEONE EXPONENTIAL DISTRIBUTION WITH IDENTICAL PRIORS

Authors:

D. Saridha, R. K. Radha

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00004

Abstract:

This study focuses on estimating the shape and scale parameters of the Topp-Leone Exponential distribution. Bayes estimators are obtained using Exponential, Gamma, LogNormal, and Weibull distributions as the identical priors under asymmetric loss functions such as LINEX and Entropy and integrated with the Lindley approximation method. The simulation study was employed to determine identical prior and loss functions for the shape and scale parameters. It is observed that LINEX loss function with Exponential-Exponential prior for the shape parameter and the scale parameter Gamma-Gamma prior is most preferred for this distribution.

Keywords:

Asymmetric Loss Functions,Bayes Estimate,Lindley’s Approximation,MSE,Prior,

Refference:

I. Al-Shomrani, A., Arif O, Ibrahim, S., Hanif, S., and Shahbaz, M. “Topp–Leone Family of Distributions: Some Properties and Application.” Pakistan Journal of Statistics and Operation Research, vol. 12, no.3, 2016, pp. 443-451, doi.org/10.18187/pjsor.v12i3.1458.

II. Anitta, SA., and Dais George. ‘Bayesian Analysis of Two Parameter Weibull Distribution using Different Loss Functions.” Stochastic Modeling and Applications, vol. 24, no.2, 2020, https://www.mukpublications.com/resources/6_FT13_Final.pdf.

III. Epstein, B., and Sobel M. “Some theorems to life resting form an exponential distribution.” Annals of Mathematical Statistics, vol. 25, no.2, 1954, pp. 373-381, doi: 10.1214/aoms/1177728793.

IV. Metiri, Farouk, Zeghdoudi, Halim, and Riad Remiata, Mohamed .”On Bayes estimates of Lindley distribution under Linex loss function: Informative and Non-informative priors.” Global Journal of Pure and AppliedMathematics, vol. 12,2016, pp. 391- 400, https://api.semanticscholar.org/CorpusID:46201692.

V. Olayode, Fatoki.”The Topp-Leone Rayleigh Distribution with Application.” American Journal of Mathematics and Statistics, vol.9, no.6, 2019, pp. 215-220, 10.5923/j.ajms.20190906.02.

VI. Fithriani, I., Hakim, Arief, and Novita, Mila. “A comparison of the Bayesian method under symmetric and asymmetric loss functions to estimate the shape parameter K of Burr distribution.” Journal of Physics Conference Series, (2019),1218, 2019, 10.1088/1742-6596/1108/1/012053

VII. Genc, A. “Moments of order statistics of Topp Leone distribution.”Statistical Papers, vol.53, no.1,2012, pp.117-131, 10.1007/s00362-010-0320-y.

VIII. Albderia, Kadhim, Jawad , Hind.”Estimate survival function of the Topp-Leone exponential distribution with an application.” International journal Nonlinear Analysis and Applications, vol.12, no.2, 2021, pp: 53-60, 10.22075/ijnaa.2021.5014.
IX. Kawsar, F., and Ahmed, SP. “Bayesian Approach in Estimation of shape parameter of Exponentiated moment Exponential distribution.” Journal of Statistical Theory and Applications, vol. 17, no.2, 2017, pp.359-374, 10.2991/jsta.2018.17.2.13

X. Kotz, S., and Seier, E. “Kurtosis of the Topp Leone distributions.”. Interstat,2007, pp.1-15, https://www.researchgate.net/publication/228417010_Kurtosis_of_the_Topp-Leone_distributions.

XI. Lindley, DV. “Approximate Bayesian methods, Journal of Statistical Computation and Simulation.” Trabajos de Estadistica y de Investigacion Operativa vol. 31, 1980, pp. 223-245, http://eudml.org/doc/40822.

XII. Mohammed, H., and Khan, Ali, Athar, AbuJarad. “Bayesian Survival Analysis of Topp-Leone Generalized Family with Stan.” International Journal of Statistics and Applications, vol. 8, no.5, 2018, pp. 274-290, 10.5923/j.statistics.20180805.06.

XIII. Rasheed, Noman. “Topp–Leone compound Rayleigh distribution: properties and applications.” Research Journal of Mathematical and Statistical Science, vol. 7, no.3,2019, pp. 51–58, https://www.researchgate.net/publication/335987957_Topp-Leone_Compound_Rayleigh_Distribution_Properties_and_Applications

XIV. Nadarajah, S., and Kotz,S. “Moments of some J-shaped distributions.”Journal of Applied Statistics, vol. 30, no.3, 2003, pp. 311-317, 10.1080/0266476022000030084.

XV. Singh, Randhir. “Bayesian estimation of the unknown parameter and reliability of the Exponential distribution with a non-natural conjugate prior.” Journal of Emerging Technologies and Innovative Research, vol 8, 2021, pp. 228-236, https://www.jetir.org/papers/JETIR2109426.

XVI. Singh, SK., Singh, Umesh, and Kumar, Dinesh. “Estimation of parameters and reliability function of Exponentiated Exponential distribution: Bayesian approach under General Entropy loss function.” Pakistan Journal of Statistics and Operation Research, vol. 7,2011, pp.199-216, 10.18187/pjsor.v7i2.239.

XVII. Saridha, D., Radha, RK., and Venkatesan, P. “Bayesian estimation of Topp-Leone Exponential distribution using symmetric loss functions for identical priors.” Sirjana Journal. vol. 54, No.3,2024, pp: 19-26, 10.0015.SRJ.2024.V54I2.0096781.222.

XVIII. Topp. CW., and Leone, FC. “A family of J-shaped frequency functions.”.Journal of the American Statistical Association, vol. 50, 1955, pp.209-219, 10.1080/01621459.1955.10501259.

View Download

FUZZY PRODUCTION MODEL WITH FUZZY VALUED DEMAND WITH NONLINEAR SELLING PRICE, WARRANTY, AND LEVEL OF GREENNESS OF THE PRODUCT UNDER FUZZY DETERMINATION RATE

Authors:

Mrityunjoy Kumar Pandit

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00005

Abstract:

Many studies on manufacturing and inventory management for increasingly problematic commodities have focused on how quality, greenness, product warranties, and environmental concerns might be incorporated into industrial operations. However, comparatively few articles have integrated these two themes. To close this knowledge gap and advance practice, these two decaying object criteria must be included in the study. The following assumptions are used to create a warranty-based, sustainable production inventory model for green products.  In this article, we look at how greenness, product assurances, and reducing carbon emissions technologies impact overall profit to assist those making decisions to make better choices regarding pricing and replenishment. Due to the consideration of fuzzy valued inventory parameters along with the objective function's nonlinearity and the presence of five decision variables, we have addressed this problem with the help of the Lingo 18 software along with the defuzzification technique. The mathematical formula is quantitatively demonstrated in one experiment, and a sensitivity analysis is performed to determine the effects of various factors on overall profit and management insights.

Keywords:

Fuzzy Production model,Fuzzy valued demand,Green level of the product,Triangular fuzzy number,

Refference:

I. Bai, Qingguo, Mingzhou Jin, and Xianhao Xu. “Effects of carbon emission reduction on supply chain coordination with vendor-managed deteriorating product inventory.” International Journal of Production Economics 208 (2019): 83-99.
II. Battini, Daria, Alessandro Persona, and Fabio Sgarbossa. “A sustainable EOQ model: Theoretical formulation and applications.” International Journal of Production Economics 149 (2014): 145-153.
III. Bazan, Ehab, Mohamad Y. Jaber, and Ahmed MA El Saadany. “Carbon emissions and energy effects on manufacturing–remanufacturing inventory models.” Computers & Industrial Engineering 88 (2015): 307-316.
IV. Cárdenas-Barrón, Leopoldo Eduardo, et al. “An EOQ inventory model with nonlinear stock dependent holding cost, nonlinear stock dependent demand and trade credit.” Computers & Industrial Engineering 139 (2020): 105557.
V. Chen, Liang-Ho, and Liang-Yuh Ouyang. “Fuzzy inventory model for deteriorating items with permissible delay in payment.” Applied Mathematics and Computation 182.1 (2006): 711-726.
VI. Das, Subhajit, et al. “An application of control theory for imperfect production problem with carbon emission investment policy in interval environment.” Journal of the Franklin Institute 359.5 (2022): 1925-1970.
VII. Duary, Avijit, et al. “Advance and delay in payments with the price-discount inventory model for deteriorating items under capacity constraint and partially backlogged shortages.” Alexandria Engineering Journal 61.2 (2022): 1735-1745.
VIII. Dutta, Debashis, and Pavan Kumar. “Fuzzy inventory model for deteriorating items with shortages under fully backlogged condition.” International Journal of Soft Computing and Engineering (IJSCE) 3.2 (2013): 393-398.
IX. Halat, Kourosh, and Ashkan Hafezalkotob. “Modeling carbon regulation policies in inventory decisions of a multi-stage green supply chain: A game theory approach.” Computers & Industrial Engineering 128 (2019): 807-830.
X. Hou, Kuo-Lung, Li-Chiao Lin, and Yung-Fu Huang. “Integrated inventory models with process quality improvement under imperfect quality and carbon emissions.” 2016 IEEE International Conference on Mobile Services (MS). IEEE, 2016.
XI. Hou, Kuo-Lung, Li-Chiao Lin, and Yung-Fu Huang. “Integrated inventory models with process quality improvement under imperfect quality and carbon emissions.” 2016 IEEE International Conference on Mobile Services (MS). IEEE, 2016.
XII. Hua, Guowei, T. C. E. Cheng, and Shouyang Wang. “Managing carbon footprints in inventory management.” International journal of production economics 132.2 (2011): 178-185.
XIII. Jaber, Mohamad Y., Christoph H. Glock, and Ahmed MA El Saadany. “Supply chain coordination with emissions reduction incentives.” International Journal of Production Research 51.1 (2013): 69-82.
XIV. Kazemi, Nima, et al. “Economic order quantity models for items with imperfect quality and emission considerations.” International Journal of Systems Science: Operations & Logistics 5.2 (2018): 99-115.
XV. Khan, M. A. A., Halim, M. A., AlArjani, A., Shaikh, A. A., & Uddin, M. S. (2022). Inventory management with hybrid cash-advance payment for time-dependent demand, time-varying holding cost and non-instantaneous deterioration under backordering and non-terminating situations. Alexandria Engineering Journal, 61(11), 8469-8486.
XVI. Kim, Min-Soo, et al. “An improved way to calculate imperfect items during long-run production in an integrated inventory model with backorders.” Journal of Manufacturing Systems 47 (2018): 153-167.
XVII. Kumar, Sanju, Ravish Kumar Yadav, and Aashish Singh. “Study on fuzzy inventory model for deteriorating items with recurring seasonal demand pattern.” International Journal of Mathematics in Operational Research 24.3 (2023): 408-424.
XVIII. Kumar, Sharad, et al. “Sustainable fuzzy inventory model for deteriorating item with partial backordering along with social and environmental responsibility under the effect of learning.” Alexandria Engineering Journal 69 (2023): 221-241.
XIX. Kumar, Sharad, et al. “Sustainable fuzzy inventory model for deteriorating item with partial backordering along with social and environmental responsibility under the effect of learning.” Alexandria Engineering Journal 69 (2023): 221-241.
XX. quantity and market demand in dedicated or combined remanufacturing systems.” Applied Mathematical Modelling 64 (2018): 135-167.
XXI. Lin, Tien-Yu, and Bhaba R. Sarker. “A pull system inventory model with carbon tax policies and imperfect quality items.” Applied Mathematical Modelling 50 (2017): 450-462.
XXII. Manna, Amalesh Kumar, et al. “A fuzzy imperfect production inventory model based on fuzzy differential and fuzzy integral method.” Journal of Risk and Financial Management 15.6 (2022): 239.
XXIII. Manna, Amalesh Kumar, et al. “A fuzzy imperfect production inventory model based on fuzzy differential and fuzzy integral method.” Journal of Risk and Financial Management 15.6 (2022): 239.
XXIV. Manna, Amalesh Kumar, et al. “Modeling of a carbon emitted production inventory system with interval uncertainty via meta-heuristic algorithms.” Applied Mathematical Modelling 106 (2022): 343-368.
XXV. Manna, Amalesh Kumar, et al. “Modeling of a carbon emitted production inventory system with interval uncertainty via meta-heuristic algorithms.” Applied Mathematical Modelling 106 (2022): 343-368.
XXVI. Mishra, U., Wu, J. Z., Tsao, Y. C., & Tseng, M. L. (2020). Sustainable inventory system with controllable non-instantaneous deterioration and environmental emission rates. Journal of Cleaner Production, 244, 118807.
XXVII. Mishra, Umakanta, Jei-Zheng Wu, and Biswajit Sarkar. “A sustainable production-inventory model for a controllable carbon emissions rate under shortages.” Journal of Cleaner Production 256 (2020): 120268.
XXVIII. Mishra, Umakanta, Jei-Zheng Wu, and Biswajit Sarkar. “Optimum sustainable inventory management with backorder and deterioration under controllable carbon emissions.” Journal of Cleaner Production 279 (2021): 123699.
XXIX. Oberthür, Sebastian. The Kyoto Protocol: International Climate Policy for the 21st Century. Springer, 1999.
XXX. Rahman, Md Sadikur, et al. “An application of real coded Self-organizing Migrating Genetic Algorithm on a two-warehouse inventory problem with Type-2 interval valued inventory costs via mean bounds optimization technique.” Applied Soft Computing 124 (2022): 109085.
XXXI. Rahman, Md Sadikur, et al. “Interval valued demand related inventory model under all units discount facility and deterioration via parametric approach.” Artificial Intelligence Review (2022): 1-40.
XXXII. Rani, Smita, Rashid Ali, and Anchal Agarwal. “Fuzzy inventory model for new and refurbished deteriorating items with cannibalisation in green supply chain.” International Journal of Systems Science: Operations & Logistics 9.1 (2022): 22-38.
XXXIII. Rout, Chayanika, et al. “Cooperative sustainable supply chain for deteriorating item and imperfect production under different carbon emission regulations.” Journal of cleaner production 272 (2020): 122170.
XXXIV. Salameh, Moueen K., and Mohamad Y. Jaber. “Economic production quantity model for items with imperfect quality.” International journal of production economics 64.1-3 (2000): 59-64.
XXXV. Sarkar, Biswajit, et al. “Combined effects of carbon emission and production quality improvement for fixed lifetime products in a sustainable supply chain management.” International Journal of Production Economics 231 (2021): 107867.
XXXVI. Shi, Yan, et al. “Optimal replenishment decisions for perishable products under cash, advance, and credit payments considering carbon tax regulations.” International Journal of Production Economics 223 (2020): 107514.
XXXVII. Shu, Tong, et al. “Manufacturers’/remanufacturers’ inventory control strategies with cap-and-trade regulation.” Journal of cleaner production 159 (2017): 11-25.
XXXVIII. Tiwari, Sunil, et al. “Joint pricing and inventory model for deteriorating items with expiration dates and partial backlogging under two-level partial trade credits in supply chain.” International Journal of Production Economics 200 (2018): 16-36.
XXXIX. Tiwari, Sunil, et al. “Retailer’s optimal ordering policy for deteriorating items under order-size dependent trade credit and complete backlogging.” Computers & Industrial Engineering 139 (2020): 105559.
XL. Tiwari, Sunil, et al. “Two-warehouse inventory model for non-instantaneous deteriorating items with stock-dependent demand and inflation using particle swarm optimization.” Annals of Operations Research 254 (2017): 401-423.
XLI. Tiwari, Sunil, Waqas Ahmed, and Biswajit Sarkar. “Sustainable ordering policies for non-instantaneous deteriorating items under carbon emission and multi-trade-credit-policies.” Journal of Cleaner Production 240 (2019): 118183.
XLII. Tiwari, Sunil, Yosef Daryanto, and Hui Ming Wee. “Sustainable inventory management with deteriorating and imperfect quality items considering carbon emission.” Journal of Cleaner Production 192 (2018): 281-292.
XLIII. Toptal, Ayşegül, Haşim Özlü, and Dinçer Konur. “Joint decisions on inventory replenishment and emission reduction investment under different emission regulations.” International journal of production research 52.1 (2014): 243-269.
XLIV. Vijai Stanly, Sharmila, and R. Uthayakumar. “Inventory model for deteriorating items involving fuzzy with shortages and exponential demand.” International Journal of Supply and operations management 2.3 (2015): 888-904.
XLV. Wangsa, Ivan Darma, et al. “A sustainable vendor-buyer inventory system considering transportation, loading and unloading activities.” Journal of Cleaner Production 271 (2020): 122120.
XLVI. Yadav, Gunjan, and Tushar N. Desai. “Lean Six Sigma: a categorized review of the literature.” International Journal of Lean Six Sigma 7.1 (2016): 2-24.
XLVII. Yadav, Gunjan, et al. “Hybrid BWM-ELECTRE-based decision framework for effective offshore outsourcing adoption: a case study.” International Journal of Production Research 56.18 (2018): 6259-6278.
XLVIII. Yang, Ya, et al. “Deterioration control decision support for perishable inventory management.” Decision support systems 134 (2020): 113308.

View Download

COHESIVE FUZZY GRAPHS WITH APPLICATION IN URBAN DEVELOPMENT AND INFRASTRUCTURE COLLABORATION

Authors:

S. Sheelarani, J. Jon Arockiaraj

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00006

Abstract:

Public officials face a challenge when illustrating and assessing strategies for developing active communities, necessitating a thorough examination of inter-ministerial collaboration. This research is focused on introducing a Cohesive fuzzy graph that portrays cooperation and contributing factors between various ministries. The current graph can adeptly convert complex information by utilizing two variables, thereby enhancing the fidelity and effectiveness of hesitant fuzzy graphs in representing both information and phases. We demonstrate a cohesive fuzzy graph's practical application using the ideas of score function and deviation degree.

Keywords:

Cohesive fuzzy graph,Complex fuzzy graph,Fuzzy graph,Hesitant fuzzy graph. ,

Refference:

I. AbuHijleh, Eman A. “Complex hesitant fuzzy graph.” Fuzzy Information and Engineering 15.2 (2023): 149-161. 10.26599/FIE.2023.9270010.

II. Alkouri, Abdulazeez (Moh’D. Jumah) S., and Abdul Razak Salleh. “Complex intuitionistic fuzzy sets.” AIP conference proceedings. Vol. 1482. No. 1. American Institute of Physics, 2012. 10.1063/1.4757515.

III. Atanassov, Krassimir T., and Krassimir T. Atanassov. Intuitionistic fuzzy sets. Physica-Verlag HD, 1999. 10.1016/S0165-0114(86)80034-3.

IV. Chen, Na, Zeshui Xu, and Meimei Xia. “Interval-valued hesitant preference relations and their applications to group decision making.” Knowledge-based systems 37 (2013): 528-540. 10.1016/j.knosys.2012.09.009.

V. Javaid, Muhammad, Agha Kashif, and Tabasam Rashid. “Hesitant fuzzy graphs and their products.” Fuzzy Information and Engineering 12.2 (2020): 238-252. 10.1080/16168658.2020.1817658.

VI. Karaaslan, Faruk. “Hesitant fuzzy graphs and their applications in decision making.” Journal of Intelligent & Fuzzy Systems 36.3 (2019): 2729-2741. 10.3233/JIFS-18865.
VII. Pathinathan, T., J. Jon Arockiaraj, and J. Jesintha Rosline. “Hesitancy fuzzy graphs.” Indian Journal of Science and Technology 8.35 (2015): 1-5. 10.17485/ijst/2015/v8i35/86672.

VIII. Ramot, Daniel, et al. “Complex fuzzy sets.” IEEE transactions on fuzzy systems 10.2 (2002): 171-186. 10.1109/91.995119.

IX. Rosenfeld, Azriel. “Fuzzy graphs.” Fuzzy sets and their applications to cognitive and decision processes. Academic press, 1975. 77-95. 10.1016/B978-0-12-775260-0.50008-6.

X. Talafha, Mohammad, et al. “Complex hesitant fuzzy sets and its applications in multiple attributes decision-making problems.” Journal of Intelligent & Fuzzy Systems 41.6 (2021): 7299-7327. 10.3233/JIFS-211156.

XI. Torra, Vicenç. “Hesitant fuzzy sets.” International journal of intelligent systems 25.6 (2010): 529-539. 10.1002/int.20418.

XII. Xue, Xingsi, et al. “On cohesive fuzzy sets, operations and properties with applications in electromagnetic signals and solar activities.” Symmetry 15.3 (2023): 595. 10.3390/sym15030595.

XIII. Yaqoob, Naveed, et al. “Complex intuitionistic fuzzy graphs with application in cellular network provider companies.” Mathematics 7.1 (2019): 35. 10.3390/math7010035.

XIV. Zadeh, Lotfi A. “Fuzzy sets.” Information and Control (1965). 10.1016/S0019-9958(65)90241-X.

View Download

KNOWLEDGE VS PRACTICE IN COMMUNITY MENTAL HEALTH NURSING: INSIGHTS FROM NURSING OFFICERS & CHOS IN ODISHA

Authors:

Anasuya Pattanayak, Soumya Sonalika, Debajani Sahoo, Alpana Mishra, Sikandar Kumar, Debasis Pradhan

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00007

Abstract:

Mental health care is a greatly underserved aspect of the general well-being, especially in resource-lacking settings. In India, mental healthcare has faced challenges of vast untreated mental disorders within populations. Community mental health care nursing has proven to be a very promising strategy. The objective of the study is to analyze the community mental health services about the curriculum for community mental health nursing. A quantitative research approach has been adapted to accomplish this by using a community-based survey research design. A total of 200 nursing service workers including Nursing Officers & CHO have been selected by following a multistage sampling strategy from four selected districts of Odisha. Demonstrating gradual improvements with experience, practice scores had a mean ± SD and median (IQR) each with a significant p-value of 0.015. It was found that most of the cases (56%) had a good or very good level of knowledge of mental health nursing, but 45.5% had good or very good practice in mental health nursing. The study revealed that the knowledge and the practice of the service gap of mental health were minimal. The majority of participants displayed good knowledge and sound practice. Recommendations by the nursing personnel included in-service education and training programmes to improve their knowledge along with the provision of adequate numbers of staff to manage the cases efficiently.

Keywords:

Community Mental Health Nursing,Community Nursing Officers,Knowledge,Practice,

Refference:

I. Abbaspour H, Heydari A, Esmaily H. Study of the Relationship between Nurses’ Work Experience and Clinical Competency. Med Edu Bull 2021; 2(1): 155-62. 10.22034/MEB.2021.313001.1036
II. Abu Salah A, Aljerjawy M, Salama A. Gap between Theory and Practice in the Nursing Education: the Role of Clinical Setting JOJ Nurse Health Care. 2018; 7(2): 555707.
III. Alzahrani, M. S. (2023). The role of the mental health nurse in the application of different treatment modalities in mental health nursing: Essa. Evidence-Based Nursing Research, 5(2), 45-47. https://doi.org/10.47104/ebnrojs3.v5i2.287.
IV. ANCC Primary Accreditation Provider Application Manual.2015 California Board of Registered Nursing, Title 16.
V. Atashzadeh-Shoorideh F, Mohtashami J, Pishgooie SAH et al. Effectiveness of implementation of “mental health nursing students’ clinical competency model” on academic performance of nursing students [version 1; peer review: 1 approved, 1 not approved] F1000Research 2018, 7:1212 10.12688/f1000research.14284.1
VI. Bing Xiang Yang, Teresa E. Stone, Scott A. Davis, The effect of a community mental health training program for multidisciplinary staff, Archives of Psychiatric Nursing,Volume 32, Issue 3, 2018, Pages 413-417, ISSN 0883-9417, 10.1016/j.apnu.2017.12.007
VII. Bruckner T, Scheffler R, Shen G, Yoon J, Chisholm D, Morris J. The mental health workforce gap in low- and middle-income countries: a needs-based approach.Bull World Health Organ. 2011;89:94.
VIII. Coker, A., Coker, O. O., Alonge, A., & Kanmodi, K. (2018). Nurses’ knowledge and attitudes towards the mentally-ill in Lagos, South-Western Nigeria. Int J Adv Community Med, 1, 15-21.
IX. Cook JA, Mueser KT. Community health Workers: potential allies for the field of psychiatric Rehabilitation ?. 2015;38:207–209.
X. Duran Gül K, Akpınar H. The relationship between nursing students’ mental health literacy levels and holistic nursing competencies. J Health Sci Med. 2023;6(6):1147-1153.
XI. February 26 ITWD, April 7 2017UPDATED:,Ist 2017 11:24. The biggest cause for disability worldwide will shock you [Internet]. India Today. [cited 2021 Dec 25]. Available from: https://www.indiatoday.in/lifestyle/health/story/world-health- organisation-depression-largest-contributor-disability-mental-health-lifest-962749-2017- 02-26
XII. Fulton B, Scheffler R, Sparkes S, Auh E, Vujicic M, Soucat A. Health workforce skill mix and task shifting in low income countries: a review of recent evidence. Hum Resour Health. 2011;9
XIII. Gandhi, S., Poreddi, V., Govindan, R., G, J., Anjanappa, S., Sahu, M., Narayanasamy, P., N, M., C, N., & Badamath, S. (2019). Knowledge and perceptions of Indian primary care nurses towards mental 37(1), e06. https://doi.org/10.17533/udea.iee.v37n1a06
XIV. Gurung, G. (2014). Knowledge and attitude of nurses regarding mental illness. Journal of Chitwan Medical College, 4(2), 40-43.
http://www.who.int/iris/handle/10665/255047. Accessed September 27, 2018. dle/10665/275501/WHO-HIS-HWF-CHW-2018.1-eng.pdf?ua=1.
http://www.who.int/iris/handle/10665/255047.AccessedSeptember 27, 2018. International, vol. 2018, Article ID 8715272, 6 pages, 2018. 10.1155/201 8/8715272
XV. Jena, S., Sahoo, K.C., Samal, M. et al. Rural community attitude towards mental healthcare: a mixed-method study in Khurda district of Odisha, India. Middle East Curr Psychiatry 27, 48 (2020). 10.1186/s43045-020-00057-6
XVI. Kandeger A, Guler HA, Egilmez U, Guler O (2018) Major depressive disorder comorbid severe hydrocephalus caused by Arnold – Chiari malformation. Does exposure to a seclusion and restraint event during clerkship influence medical students’ attitudes toward psychiatry? Indian J Psychiatry 59(4): 2017–2018. 10.4103/psychiatry.IndianJPsychiatry
XVII. Keating, S. (2011).Curriculum development and evaluation in nursing. New York, NY: Springer Publishing Company
XVIII. Kishore J, Gupta A, Jiloha RC, Bantman P (2011) Myths, beliefs and perceptions about mental disorders and health-seeking behavior in Delhi, India. Indian J Psychiatry 53(4):324–329 10.4103/0019-5545.91906
XIX. L. Liana and H.D. Windarwati. Clinical Epidemiology and Global Health 11 (2021) 100709 10.1016/j.cegh.2021.100709

XX. Lahariya C, Singhal S, Gupta S, Mishra A (2010) Pathway of care among psychiatric patients attending a mental health institution in central India. Indian J Psychiatry 52(4):333 10.4103/0019-5545.74308
XXI. Li S, Cao M, Zhu X. Evidence-based practice. Medicine 2019; 98:39 (e17209).
XXII. Liu A, Sullivan S, Khan M, Sachs S, Singh P. Community health workers in global health: scale and scalability. Mt Sinai J Med. 2011;78:419–435.
XXIII. Marastuti A, Sofia MAS, Carla R, Courtney RM, Byron MY, Good MJD.Development and evaluation of a mental health training program for community health workers in Indonesia. Community Ment Health J; 2020.
XXIV. Mariam MG, Bedaso A, Ayano G, Ebrahim J (2016) Knowledge, Attitude and Factors Associated with Mental Illness among Nurses Working in Public Hospitals, Addis Ababa, Ethiopia. J Ment Disord Treat 2: 108. doi:10.4172/2471- 271X.1000108
XXV. McCollum R, Gomez W, Theobald S, Taegtmeyer M. How equitable are community health worker programmes and which programme features influence equity of community health worker services? A systematic review16.BMC Public Health; 2016.
XXVI. Mitchell C, https://www.facebook.com/pahowho. PAHO/WHO | Mental health problems are the leading cause of disability worldwide, say experts at PAHO Directing Council side event [Internet]. Pan American Health Organization / World Health Organization.2019 [cited2021Dec25].Availablefrom:https://www3.paho.org/hq/index.php?option=com_con
XXVII. Nayak N, ‘Mental Health Services Spreads Wings In Odisha’, Odisha Post., January 7th 2020, 09.00 IST https://www.orissapost.com/mental-health-services-spread-wings-in- odisha/
XXVIII. Nevin Günaydin, Sibel Arguvanli Çoban, Experiences of nursing students during clinical education in mental health clinics: A phenomenological qualitative study, Nurse Education in Practice, Volume 54, 2021,103113, ISSN 1471-5953, 10.1016/j.nepr.2021.103113.
XXIX. Olaniran A, Smith H, Unkels R, Bar-Zeev S, van den Broek N. Who is a community health worker? – a systematic review of definitions10. Global Health Action; 2017.
XXX. Organization WH. Enhancing the Role of Community Health Nursing for Universal Health Coverage; 2017 [cited 2018 27 September]. Available at: Organization WH. Enhancing the Role of Community Health Nursingfor Universal Health Coverage; 2017 [cited 2018 27 September].
XXXI. Phetsile G. Zwane, et al. Challenges faced by mental health nurses working with people living with mental illness in Eswatini: A qualitative study [Internet]. Elsevier; 2022 [cited 2024Sept2]. Available from: https://www.sciencedirect.com/science/article/pii/S2214139122000828
XXXII. Rehm J, Shield KD (2019) Global burden of disease and the impact of mental and addictive disorders. Current Psychiatry Reports 21(2) 10.1007/s11920- 019-0997-0
XXXIII. Rentala, Sreevani1; Thimmajja, Sunanda Govinder2,; Vasudevareddy, Savitha S.3; Srinivasan, P.4; Desai, Mahesh5. Impact of Mental Health First Aid Training for Primary Health Care Nurses on Knowledge, Attitude and Referral of Mentally Ill Patients. Indian Journal of Continuing Nursing Education 23(2):p 184-189, Jul–Dec 2022. | DOI: 10.4103/ijcn.ijcn_62_22
XXXIV. Risjord MW (2010) Nursing knowledge: Science, practice and philosophy. Oxford, Wiley Blackwell, United Kingdom 33(2): 129-131.
XXXV. Sagar R, Dandona R, Gururaj G, Dhaliwal RS, Singh A, Ferrari A et al (2020) The burden of mental disorders across the states of India: the Global Burden of Disease Study 1990– 2017. Lancet Psychiatry 7(2):148–161. 10.1016/S2215-0366(19)30475-4
XXXVI. Saraceno B, van Ommeren M, Batniji R, Cohen A, Gureje O, Mahoney J. Barriers to improvement of mental health services in low-income and middle-income countries. Lancet. 2007;370:74.
XXXVII. Sibeko G, Milligan PD, Roelofse M, et al. Piloting a Mental Health Training Programme for Community Health Workers in South Africa : An Exploration of Changes in Knowledge. 2018:1–10. confidence and attitudes.
XXXVIII. Siv Camilla Marriott, Ellen Karine Grov, Marianne Thorsen Gonzalez, Learning and achieving basic mental health competence in placement studies with the support of a tool: A qualitative study of student nurses’ experiences, International Journal of Nursing Studies Advances, Volume 7,2024,100219, ISSN 2666-142X, 10.1016/j.ijnsa.2024.100219.
XXXIX. Spencer MS, Rosland AM, Kieffer EC, et al. Effectiveness of a community health worker intervention among African American and Latino adults with type 2 diabetes: a randomized controlled trial. Am J Publ Health. 2011;101:2253–2260.tent&view=article&id=15481:mental-health-problems-are-the-leading-cause-of disability-worldwide-say-experts-at-paho-directing-council-side- event&Itemid=72565&lang=en
XL. World Health Organization (WHO).WHO Guideline on Health Policy and System Support to Optimize Community Health Worker Selected Highlights [Internet]. WHO Guideline on Health Policy and System Support to Optimize Community Health Worker Selected Highlights. 2012. Available from:, https://apps.who.int/iris/bitstream/han dle/10665/275501/WHO-HIS-HWF-CHW-2018.1-eng.pdf?ua=1.
XLI. X. Q., & Ruan, J. (2022). Experiences and challenges faced by community mental health workers when providing care to people with mental illness: a qualitative study. BMC psychiatry, 22(1), 623. 10.1186/s12888-022-04252-z

View Download

YOLOV7-BASED MOVING OBJECT DETECTION IN DENSE FOG CONDITIONS

Authors:

Sharmistha Puhan, Sambit Kumar Mishra

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00008

Abstract:

Detecting moving objects in dense foggy conditions is a challenging problem in computer vision, with critical applications in smart transportation systems, surveillance, and autonomous driving. Fog particles scatter and absorb light, significantly reducing visibility and making it difficult for traditional computer vision algorithms to accurately detect moving objects. To address this challenge, researchers have proposed learning-based approaches that leverage deep neural networks to recognize moving objects and adapt to the unique characteristics of foggy environments. In this study, we present a learning-based method utilizing the YOLOv7 framework to effectively detect moving objects in dense fog conditions. The proposed approach involves four key stages: feature extraction, feature fusion, object detection, and non-maximum suppression. The results achieved are highly promising when compared to state-of-the-art techniques.

Keywords:

Moving Object Detection,Bad Weather,Foggy Environment,YOLO,YOLOv7,Profound Learning,Neural Network,

Refference:

I. Ahmed, Muhammad, et al. “Survey and performance analysis of deep learning based object detection in challenging environments.” Sensors 21.15 (2021): 5116. 10.3390/s21155116

II. Bijelic, Mario, et al. “Seeing through fog without seeing fog: Deep multimodal sensor fusion in unseen adverse weather.” Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition. 2020. 10.1109/CVPR42600.2020.01170

III. Bochkovskiy, Alexey, Chien-Yao Wang, and Hong-Yuan Mark Liao. “Yolov4: Optimal speed and accuracy of object detection.” arXiv preprint arXiv:2004.10934 (2020). 10.48550/arXiv.2004.10934

IV. Chaturvedi, Saket S., Lan Zhang, and Xiaoyong Yuan. “Pay” Attention” to Adverse Weather: Weather-aware Attention-based Object Detection.” 2022 26th International Conference on Pattern Recognition (ICPR). IEEE, 2022. 10.1109/ICPR56361.2022.9956149

V. Dong, Nan, Zhen Jia, Jie Shao, Zhipeng Li, Fuqiang Liu, Jianwei Zhao, and Pei-Yuan Peng. “Adaptive Object Detection and Visibility Improvement in Foggy Image.” Journal of Multimedia, vol.6, no. 1, 2011. doi:10.4304/jmm.6.1.14-21
VI. Farhadi, Ali, and Joseph Redmon. “Yolov3: An incremental improvement.” Computer vision and pattern recognition. Vol. 1804. Berlin/Heidelberg, Germany: Springer, 2018. 10.48550/arXiv.1804.02767

VII. Horvat, Marko, Ljudevit Jelečević, and Gordan Gledec. “A comparative study of YOLOv5 models performance for image localization and classification.” Central European Conference on Information and Intelligent Systems. Faculty of Organization and Informatics Varazdin, 2022.

VIII. Hsu, Han-Kai, et al. “Progressive domain adaptation for object detection.” Proceedings of the IEEE/CVF winter conference on applications of computer vision. 2020. 10.1109/WACV45572.2020.9093358

IX. Huang, Shih-Chia, Trung-Hieu Le, and Da-Wei Jaw. “DSNet: Joint semantic learning for object detection in inclement weather conditions.” IEEE transactions on pattern analysis and machine intelligence 43.8 (2020): 2623-2633. 10.1109/tpami.2020.2977911
X. Krišto, Mate, Marina Ivasic-Kos, and Miran Pobar. “Thermal object detection in difficult weather conditions using YOLO.” IEEE access 8 (2020): 125459-125476. 10.1109/ACCESS.2020.3007481

XI. Kumar, Prashant, et al. “Detection of video objects in dynamic scene using local binary pattern subtraction method.” Intelligent Computing, Communication and Devices: Proceedings of ICCD 2014, Volume 2. Springer India, 2015.

XII. Li, Chuyi, et al. “YOLOv6: A single-stage object detection framework for industrial applications.” arXiv preprint arXiv:2209.02976 (2022). 10.48550/arXiv.2209.02976

XIII. Liu, Wenyu, et al. “Image-adaptive YOLO for object detection in adverse weather conditions.” Proceedings of the AAAI conference on artificial intelligence. Vol. 36. No. 2. 2022. 10.1609/aaai.v36i2.20072

XIV. Nie, Xin, Meifang Yang, and Ryan Wen Liu. “Deep neural network-based robust ship detection under different weather conditions.” 2019 IEEE Intelligent Transportation Systems Conference (ITSC). IEEE, 2019. 10.1109/ITSC.2019.8917475

XV. Nithyanandham, Lalithamani. “Obstacle Detection of Vehicles under Fog.” International Journal of Simulation–Systems, Science & Technology 20.1 (2019).

XVI. Redmon, J. “You only look once: Unified, real-time object detection.” Proceedings of the IEEE conference on computer vision and pattern recognition. 2016. 10.1109/CVPR.2016.91

XVII. Rout, Deepak Kumar, and Sharmistha Puhan. “A spatio-temporal framework for moving object detection in outdoor scene.” International Conference on Computing and Communication Systems. Berlin, Heidelberg: Springer Berlin Heidelberg, 2011. https://doi.org/10.1007/978-3-642-29216-3_54

XVIII. Rout, Deepak Kumar, and Sharmistha Puhan. “Video object detection using inter-frame correlation based background subtraction.” 2013 IEEE Recent Advances in Intelligent Computational Systems (RAICS). IEEE, 2013. 10.5120/14255-2364

XIX. Sen, Prithwish, Anindita Das, and Nilkanta Sahu. “Object detection in foggy weather conditions.” International Conference on Intelligent Computing & Optimization. Cham: Springer International Publishing, 2021. 10.1007/978-3-030-93247-3_70

XX. Sindagi, Vishwanath A., et al. “Prior-based domain adaptive object detection for hazy and rainy conditions.” Computer Vision–ECCV 2020: 16th European Conference, Glasgow, UK, August 23–28, 2020, Proceedings, Part XIV 16. Springer International Publishing, 2020. 10.1007/978-3-030-58568-6_45

XXI. Sharma, Teena, et al. “Deep learning-based object detection and scene perception under bad weather conditions.” Electronics 11.4 (2022): 563. 10.3390/electronics11040563

XXII. Walambe, Rahee, et al. “Lightweight object detection ensemble framework for autonomous vehicles in challenging weather conditions.” Computational Intelligence and Neuroscience 2021.1 (2021): 5278820. 10.1155/2021/5278820

XXIII. Zou, Zhengxia, et al. “Object detection in 20 years: A survey.” Proceedings of the IEEE 111.3 (2023): 257-276. 10.48550/arXiv.1905.05055

XXIV. Zhao, Zhong-Qiu, et al. “Object detection with deep learning: A review.” IEEE transactions on neural networks and learning systems 30.11 (2019): 3212-3232. 10.1109/TNNLS.2018.2876865

View Download

QUALITATIVE ANALYSIS OF DEMOGRAPHIC PERSPECTIVE AND HUMAN POPULATION MODEL WITHIN BANGLADESH AND SRI LANKA

Authors:

Pinakee Dey, Anish Kumar Adhikary, Adham Abhi, Sharmin Sultana, Asif Hasan, Tania Rahman, Md. Monower Anjum Niloy, Shuvo Sarker, Rezaul Karim

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00009

Abstract:

This article presents projections of the future population growth in Bangladesh and Sri Lanka, along with a comparative analysis of the demographics of these two countries. Based on our projections, the projected population of Bangladesh in 2060 is estimated to be around 211 million, while the population of Sri Lanka is projected to be around 356 million. The exponential expansion of the global population represents one of the most formidable challenges facing humanity, profoundly impacting individual well-being while compelling transformative adaptations within societal frameworks and governmental institutions. Moreover, we have computed a forecast for the next period and included a demographic evaluation of the rural populations and crime rates of both nations in this piece. This study critically examines the precision and applicability of three mathematical frameworks, namely, the least squares model, the logistic growth model, and the Malthusian (exponential growth) model, in forecasting population dynamics within Bangladesh and Sri Lanka by the conclusion of the twenty-first century. Even though transgender individuals are recognized as the third gender, the appropriate statistics are not yet available. In addition, the study presents a speculative analysis of how the state has addressed the growth of its population in previous instances and how it would address it in coming years.

Keywords:

Crime Report and Rural People,Mean Absolute Percentage Error,Population Model,

Refference:

Ⅰ. Akhter, Tanjima, Jamal Hossain, and Salma Jahan. “Population projection of the districts Noakhali, Feni, Lakhshmipur and Comilla, Bangladesh by using logistic growth model.” Pure and Applied Mathematics Journal 10.3 (2018): 164-176, 10.11648/j.pamj.20170606.13.
Ⅱ. AL MAMUN, H. A. S. A. N., et al. “ANALYZING AND PROJECTION OF FORECASTING POPULATION OF BANGLADESH USING EXPONENTIAL MODEL, LOGISTIC MODEL, AND DISCRETE LOGISTIC MODEL.” 10.17605/OSF.IO/S5UCD.
Ⅲ. Berkey, Catherine S., and Nan M. Laird. “Nonlinear growth curve analysis: estimating the population parameters.” Annals of human biology 13.2 (1986): 111-128, 10.1080/03014468600008261.
Ⅳ. Clark, T. J., and Angela D. Luis. “Nonlinear population dynamics are ubiquitous in animals.” Nature ecology & evolution 4.1 (2020): 75-81, 10.1038/s41559-019-1052-6.
Ⅴ. Cocks, Edmond. “Malthus on population quality.” Social Biology 18.1 (1971): 84-87, doi: 10.1080/19485565.1971.9987904.
Ⅵ. Cohen, Joel E. “Population growth and earth’s human carrying capacity.” Science 269.5222 (1995): 341-346, doi: 10.1126/science.7618100.
Ⅶ. Ehrlich, Isaac, and Francis Lui. “The problem of population and growth: A review of the literature from Malthus to contemporary models of endogenous population and endogenous growth.” Journal of Economic Dynamics and Control 21.1 (1997): 205-242, 10.1016/0165-1889(95)00930-2.
Ⅷ. Feeney, Griffith, and Iqbal Alam. “New estimates and projections of population growth in Pakistan.” Population and development review 29.3 (2003): 483-492, 10.1111/j.1728-4457.2003.00483.x.
Ⅸ. Henson, Shandelle M. “Mathematical models in population biology and epidemiology.” (2003): 254-258, 10.2307/3647954.
Ⅹ. Hsieh, Shun-Chieh. “Analyzing urbanization data using rural–urban interaction model and logistic growth model.” Computers, Environment and urban systems 45 (2014): 89-100, 10.1016/j.compenvurbsys.2014.01.002.
Ⅺ. Islam, Rashedul, et al. “Proliferation of stem cells in a population model.” Afr. J. Bio. Sci. 6.5 (2024): 2305-2328, 10.33472/AFJBS.6.5.2024.2305-2328.
Ⅻ. Karim, ANM Rezaul, et al. “Modeling on population growth and its adaptation: A comparative analysis between Bangladesh and India.” Journal of Applied and Natural Science 12.4 (2020): 688-701. 10.31018/jans.v12i4.2396.
XIII. Karim, Rezaul, et al. “A study about the prediction of population growth and demographic transition in Bangladesh.” Journal of Umm Al-Qura University for Applied Sciences (2024): 1-13, 10.1007/s43994-024-00150-0.
XIV. Karim, Rezaul, et al. “Investigate future population projection of Bangladesh with the help of Malthusian model, Sharpe-lotka model and Gurtin Mac-Camy model.” International Journal of Statistics and Applied Mathematics 5.5 (2020): 77-83, doi: 10.22271/maths.2020.v5.i5b.585.
XV. Karim, Rezaul, et al. “INVESTIGATION ON PREDICTING FAMILY PLANNING AND WOMEN’S AND CHILDREN’S HEALTH EFFECTS ON BANGLADESH BY CONDUCTING AGE STRUCTURE POPULATION MODEL.”, Journal of Mechanics of Continua and Mathematical Sciences, Vol. 19, no. 3, pp. 65–86, Mar. 2024, 10.26782/jmcms.2024.03.00005.
XVI. Kerry, C. C., et al. “A comparative study of mathematical and statistical models for population projection of Nigeria.” International Journal of Scientific and Engineering Research 8.2 (2017): 777-785. Available: http://www.ijser.org
XVII. Mimi, Mehenaz Aktar, Md Eaqub Ali, and Kanak Chandra Roy. “ANALYZE THE GROWTH RATE OF A PREY-PREDATOR SYSTEM WITH SIMULATION USING MATLAB.” Turkish Journal of Computer and Mathematics Education (TURCOMAT) 14.03 (2023): 480-497.
XVIII. Mondol, Hironmoy, Uzzwal Kumar Mallick, and Md Haider Ali Biswas. “Mathematical modeling and predicting the current trends of human population growth in Bangladesh.” Modelling, Measurement & Control. D: Manufacturing, Management, Human & Socio-Economic Problems 39.1 (2018), 10.18280/mmc_d.390101.
XIX. Mulligan, Gordon F. “Logistic population growth in the world’s largest cities.” Geographical Analysis 38.4 (2006): 344-370, 10.1111/j.1538-4632.2006.00690.x.
XX. Ofori, T., et al. “Mathematical Model of Ghana??????? s Population Growth.” International Journal of Modern Management Sciences 2.2 (2013): 57-66. Available: www.google.com.gh/publicdata/explore
XXI. Rosario, G. M., and M. J. Antony. “Mathematical Model for Future Popu-lation Scenario in India and China–An Econometric Approach.” International Journal of Scientific & Engineering Research 8.5 (2017): 62. Available: http://www.ijser.org
XXII. Shepherd, John J., and Laura Stojkov. “The logistic population model with slowly varying carrying capacity.” Anziam Journal 47 (2005): C492-C506, 10.21914/anziamj.v47i0.1058.
XXIII. Steinmann, Gunter, and John Komlos. “Population growth and economic development in the very long run: A simulation model of three revolutions.” Mathematical social sciences 16.1 (1988): 49-63, 10.1016/0165-4896(88)90004-2.
XXIV. Steven, Janet, and James Kirkwood. “Predicting population growth: modeling with projection matrices.” Mathematical concepts and methods in modern biology using modern discrete models (Eds.: RS Robeva and TL Hodge) (2013): 213-238. 10.1016/B978-0-12-415780-4.00007-7.
XXV. Turner Jr, Malcolm E., Brent A. Blumenstein, and Jeanne L. Sebaugh. “265 Note: A generalization of the logistic law of growth.” Biometrics (1969): 577-580. 10.2307/2528910.
XXVI. Ullah, Mohammad Sharif, et al. “Analyzing and projection of future Bangladesh population using logistic growth model.” International Journal of Modern Nonlinear Theory and Application 8.3 (2019): 53-61. 10.4236/ijmnta.2019.83004.
XXVII. Wali, Augustus N., Doriane Ntubabare, and Vedaste Mboniragira. “Mathematical modeling of Rwanda’s population growth.” (2011).

View Download

RELIABILITY MODELING AND STOCHASTIC EVALUATION OF A MACHINE OF VARIOUS UNITS WITH IMMEDIATE REPAIR OF FAILED UNIT

Authors:

Shakuntla Singla, Ritu Rani, Diksha Mangla, Umar Muhammad Modibbo

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00010

Abstract:

This article discusses the design reliability and quality of dairy products. Reliability and stochastic analysis of a dairy plant divided into two units using the regenerative method. At startup time, both units are in active mode. If one of the units fails, the system remains in active mode but goes into a reduced state. If both units fail, the system enters an invalid state. The distribution of the repair time is arbitrary in this system, whereas the malfunctioning time is exponentially distributed. With the data gathered from the milk plant, we assess average time to system failure, availability, busy time, and profitability through a mathematical analysis in this work that makes use of the Laplace transform, semi-Markov process, and regenerative point. Consequently, the conclusion of this paper helps plant managers make timely maintenance decisions and enhance the system’s overall performance.

Keywords:

Average time to system failure,reliability,Laplace transform,busy time,

Refference:

I. Adlakha, N., Taneja, G. and Batra, S. (2017). Reliability and cost-benefit analysis of a twounit cold standby system used for communication through satellite with assembling andactivation time. Int. J. Appl. Eng. Res., 12, pp.: 9697–9702. https://www.ripublication.com/ijaer17/ijaerv12n20_59.pdf

II. Ahmadini, A.A.H., Singla, S., Mangla, D., Modibbo, U.M. and Rani, S., 2024. Reliability Assessment and Profit Optimization of Multi-unit Mixed Configured System using ABC Algorithm under Preventive Maintenance. IEEE Access, Digital Object Identifier 10.1109/ACCESS.2024.3406994
III. Barak M.S., Garg R. and Kumar A. (2021), “Reliability measures analysis of a milk plant using RPGT”, Life Cycle Reliab Saf Eng 10, pp.: 295-302. 10.1007/s41872-020-00163-8
IV. Batra, S. and Taneja, G. (2018). A reliability model for the optimum number of standby units in a system working with two operative units. Ciencia e Tecnica, 33:0254-0223.

V. Batra, S. and Taneja, G. (2018). Optimization of number of hot standby units through reliability models for a system operative with one unit. International Journal of Agricultural and Statistical Sciences,14. https://www.researchgate.net/publication/329376891

VI. Batra, S. and Taneja, G. (2018). Reliability and optimum analysis for number of standby units in a system working with one operative unit. International Journal of Applied Engineering Research, 13: 2791-2797. https://www.ripublication.com/ijaer18/ijaerv13n5_93.pdf

VII. Batra, S. and Taneja, G. (2019). Reliability modeling and optimization of the number of hot standby units in a system working with two operative units. An international journal of advanced computer technology, 10:3059-3068. https://ijact.in/index.php/j/article/view/481/461

VIII. Garg R. (2020). Behavioural Analysis of single Unit System Using RPGT. Journal of Xi’an University of Architecture and Technology, pp.: 2723-2735. 20.19001.JAT.2020.XII.I2.20.2084

IX. Jain, M. and Gupta, R. (2013). Optimal replacement policy for a repairable system with multiple vacations and imperfect fault coverage. Comput. Ind. Eng., 66(4), pp. 710-719. 10.1016/j.cie.2013.09.011

X. John, Y.M., Sanusi, A., Yusuf, I. and Modibbo, U. M. (2022). Reliability analysis of multi-hardware-software system with failure interaction. J., 66, pp. 957-977. 10.47852/bonviewJCCE2202216

XI. Kumari S., Khurana P. and Singla S. (2022). Behavior and profit analysis of a thresher plant under steady state. Int J Syst Assur Eng Manag 13, pp.: 166-171. 10.1007/s13198-021-01183-y

XII. Levitin, G., Finkelstein, M., and Xiang, Y. (2020). Optimal preventive replacement for cold standby systems with elements exposed to shocks during operation and task transfers. IEEE Transactions on Systems, Man, and Cybernetics: Systems, 10, pp.: 2168–2216. 10.1109/TSMC.2020.3034493

XIII. Mahmoud, M. A. W. and Moshref, M. E. (2009). On a two-unit cold standby system considering hardware, human error failures, and preventive maintenance. Math. Comput. Model., 51, pp.: 736–745. 10.1016/j.mcm.2009.10.019

XIV. Malhotra. and Taneja, G. (2015). Comparative study between a single unit system and a two-unit cold standby system with varying demand.Springerplus, 4, pp.: 1–17. 10.1186/s40064-015-1484-7

XV. Malhotra, R., Dureja, T., and Goyal, A. (2021). Reliability analysis a two-unit cold redundant system working in a pharmaceutical agency with preventive maintenance. In Journal of Physics: Conference Series, 10, pp.: 1742–1750. 10.1088/1742-6596/1850/1/012087

XVI. Manocha, A. and Taneja, G. (2015). Stochastic analysis of a two-unit cold standby system with arbitrary distributions for life, repair and waiting times. Int. J. Performability Eng., 11, pp.:293–299. 10.23940/ijpe.15.3.p293.mag

XVII. Manocha, A., Taneja, G. and Singh, S. (2017). Stochastic and cost-benefit analysis of two-unit hot standby database system. Int. J. Performability Eng., 13, pp.: 63–72. 10.23940/ijpe.17.01.p5.6372

XVIII. Modibbo, U. M., Arshad, M., Abdalghani, O. and Ali, I. (2021). Optimization and estimation in system reliability allocation problem. Rel. Eng. Syst. Saf., 212. 10.1016/j.ress.2021.107620

XIX. Raghav, Y.S., Mradula, Varshney, R., Modibbo, U.M, Ahmadini, ., A. A. H., and Ali, I. (2022). Estimation and optimization for system availability under preventive maintenance. IEEE Access, 10, pp.: 94337-94353. 10.1109/ACCESS.2022.3204394

XX. Singla, S. and Rani, S., 2023, November. Performance Optimization of 3: 4:: Good System. Second International Conference on Informatics (ICI) IEEE, pp.: 1-4. https://iciconference.org/

XXI. Singla S., Mangla, D., Panwar, P. and Taj, S. Z. (2024). Reliability optimization of a degraded system under preventive maintenance using genetic algorithm,” J. Mech. Continua Math. Sci., 2024. 10.26782/jmcms.2024.01.00001

XXII. Singla S, Mangla D, Kumar M. A., Muhammad M.U. (2024). Reliability optimization methods: A systematic literature review. Yugoslav Journal of Operations Research. 10.2298/YJOR230715031S

XXIII. Singla, S., Rani, S., Modibbo, U. M. and Ali, I. (2023). Optimization of system parameters of 2:3 good serial system using deep learning. Rel., Theory Appl., pp. 670-679. 10.24412/1932-2321-2023-476-670-679

View Download

INVESTIGATION OF THE MANET NETWORK PERFORMANCE CONCERNING DIFFERENT ROUTING PROTOCOLS

Authors:

Aqeel Ali Al-Hilali, Dalal Abdulmohsin, Mustafa Bashar, Ali Ali Saber, Hussein Alaa Diame

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00011

Abstract:

Mobile Ad-Hoc Network is a decentralized organization that operates without a foundation. Due to the Mobile Ad-Hoc Network's self-configurable and simple organizational component, many applications may be run. Because of this, various applications are available. If helpful guidelines are established, Mobile Ad-Hoc Network will become dependable. We shall research the organization's competent steering convention for hypertext transfer protocol traffic. We must reach this conclusion with accuracy since this will be the main focus of our inquiry. Latency and throughput were employed to achieve show research goals. For this work reenactment inquiry, your expectations must be based on the conventions it chose since they performed better on all four perspectives. After analyzing its needs, an organization may improve its operations by choosing better conventions. This may boost an organization's efficiency. This research examined AODV, DSR, and OLSR routing methods. This study used OPNET Modeler 14.5 to enhance ad-hoc network performance.

Keywords:

AODV,DSR,Opnet,OLSR,Routing protocols,

Refference:

I. AbdulAmeer, Sabah Auda, et al. “Cyber Security Readiness in Iraq: Role of the Human Rights Activists.” International Journal of Cyber Criminology 16.2 (2022): 1-14.
II. Adhvaryu, K. ” Performance comparison of multicast routing protocols based on route discovery process for MANET ” . In Inventive Communication and Computational Technologies (pp. 79-85). Springer, Singapore, 2020.
III. Aina, F., Yousef, S., & Osanaiye, O. ” Analysing admission control for AODV and DSR routing protocol in mobile ad-hoc network” . Bulletin of Electrical Engineering and Informatics, Vol.10, No. 5, pp.2667-2677, 2021.‏
IV. Al Mojamed, M., & Kolberg, M. ” Structured Peer-to-Peer overlay deployment on MANET: A survey” . Computer Networks, Vol. 96, pp. 29-47, 2016.
V. Barbudhe, S. E., Thakare, V. M., & Sherekar, S. S. ” A Novel Approach to Minimize Flooding in MANET Using Symmetric and Asymmetric Paths “. International Journal of Electronics, Communication and Soft Computing Science & Engineering (IJECSCSE), Vol. 3, No.18‏ , 2014.
VI. Chitkara, M., & Ahmad, M. W.” Review on manet: characteristics, challenges, imperatives and routing protocols “. International journal of computer science and mobile computing, Vol. 3, No. 2, pp. 432-437., 2014. ‏
VII. Gupta, N. K., Yadav, R. S., & Nagaria, R. K. (2020). ” 3D geographical routing protocols in wireless ad hoc and sensor networks: An overview” Wireless Networks, Vol. 26, No. 4, pp.2549-256, 2020.
VIII. Hamdi, M. M., Audah, L., Rashid, S. A., Mohammed, A. H., Alani, S., & Mustafa, A. S. ” A review of applications, characteristics and challenges in vehicular ad hoc networks (VANETs)” . In 2020 International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA) (pp. 1-7). IEEE., 2020.
IX. Hassan, M. H., Mostafa, S. A., Mohammed, M. A., Ibrahim, D. A., Khalaf, B. A., & Al-Khaleefa, A. S. ” Integrating African Buffalo optimization algorithm in AODV routing protocol for improving the QoS of MANET “. Journal of Southwest Jiaotong University, Vol. 54, No. 3, 2019.‏
X. Lavanya, P., Reddy, V. S. K., & Prasad, A. M. ” Performance comparison of DSDV, OLSR, AODV and DSR for mobile ad hoc networks” . International Journal of Emerging Technology and Advanced Engineering, Vol. 8, No. 1, pp. 209-218, 2018.
XI. Mezaal, Yaqeen S., et al. “Cloud computing investigation for cloud computer networks using cloudanalyst.” Journal of Theoretical and Applied Information Technology, 96(20), 2018.
XII. Padmavathy, N. ” Reliability Evaluation of Environmentally Affected Mobile Ad Hoc Wireless Networks”. Advances in Communication and Computational Technology, pp. 1297-1310, 2021.
XIII. Padmavathy, N. ” Reliability Evaluation of Environmentally Affected Mobile Ad Hoc Wireless Networks” . Advances in Communication and Computational Technology, pp. 1297-1310.‏
XIV. Quy, V. K., Nam, V. H., Linh, D. M., Ban, N. T., & Han, N. D. ” A survey of QoS-aware routing protocols for the MANET-WSN convergence scenarios in IoT networks” . Wireless Personal Communications, Vol. 120, No. 1, pp. 49-62, 2021. ‏
XV. Roshani, Saeed, et al. “Filtering power divider design using resonant LC branches for 5G low-band applications.” Sustainability 14.19 (2022): 12291.
XVI. Saini, T. K., & Sharma, S. C. ” Prominent unicast routing protocols for Mobile Ad hoc Networks: Criterion, classification, and key attributes” . Ad Hoc Networks, Vol. 89, pp. 58-77.‏, 2019.
XVII. Shareef, M. S., Mezaal, Y. S., Sultan, N. H., Khaleel, S. K., Al-Hillal, A. A., Saleh, H. M., … & Al-Majdi, K. (2023). Cloud of Things and fog computing in Iraq: Potential applications and sustainability. Heritage and Sustainable Development, 5(2), 339-350.
XVIII. Shantaf, A. M., Kurnaz, S., & Mohammed, A. H.” Performance evaluation of three mobile ad-hoc network routing protocols in different environments” . In 2020 International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA) (pp. 1-6). IEEE, 2020.
XIX. Sharma, V., Alam, B., & Doja, M. N. ” An improvement in DSR routing protocol of MANETs using ANFIS ” . In Applications of Artificial Intelligence Techniques in Engineering (pp. 569-576). Springer, Singapore, 2019. ‏
XX. Souidi, M., Habbani, A., Berradi, H., & El Mahdi, F. ” Geographic forwarding rules to reduce broadcast redundancy in mobile ad hoc wireless networks” . Personal and Ubiquitous Computing, Vol. 23, No. (5), pp. 765-775, 2019‏.
XXI. Soundarya, D., Janane, S., & Ramachandran, K. A. ” A Survey On DSR Routing Protocol. International Journal of Research in Engineering, Science and Management, Vol. 4, No. 2, pp.142-145, 2021.

XXII. Sureshbhai, T. H., Mahajan, M., & Rai, M. K. ” An investigational analysis of DSDV, AODV and DSR routing protocols in mobile Ad Hoc networks” . In 2018 International Conference on Intelligent Circuits and Systems (ICICS) (pp. 281-285). IEEE, 2018.
XXIII. Tahboush, M., & Agoyi, M. ” A hybrid wormhole attack detection in mobile ad-hoc network (MANET)”. IEEE Access, Vol. 9, pp. 11872-11883, 2021.
XXIV. Tahir, A., Shah, N., Abid, S. A., Khan, W. Z., Bashir, A. K., & Zikria, Y. B. ” A three-dimensional clustered peer-to-peer overlay protocol for mobile ad hoc networks “. Computers & Electrical Engineering, Vol. 94, pp. 107364, 2021‏.
XXV. Toh, C. K. ” Wireless ATM and ad-hoc networks: Protocols and architectures” . Springer Science & Business Media, 2012.‏
XXVI. Toh, C. K. ” Associativity-based routing for ad hoc mobile networks”. Wireless personal communications, Vol. 4, No. 2, pp.103-139, 1997‏.
XXVII. Yang, W., Zhang, H., & Lin, J. ” Simple applications of BERT for ad hoc document retrieval” . arXiv preprint arXiv:1903.10972, 2019.
XXVIII. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “New dual band dual-mode microstrip patch bandpass filter designs based on Sierpinski fractal geometry.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XXIX. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “A novel design of two loosely coupled bandpass filters based on Hilbert-zz resonator with higher harmonic suppression.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XXX. Yaqeen S. Mezaal, & Abdulkareem, S. F. (2018, May). New microstrip antenna based on quasi-fractal geometry for recent wireless systems. In 2018 26th Signal Processing and Communications Applications Conference (SIU) (pp. 1-4). IEEE.
XXXI. Zanjireh, M. M., Shahrabi, A., & Larijani, H. ” Anch: A new clustering algorithm for wireless sensor networks “. In 2013 27th International Conference on Advanced Information Networking and Applications Workshops (pp. 450-455). IEEE, 2013.
XXXII. Zhang, J., Chen, T., Zhong, S., Wang, J., Zhang, W., Zuo, X., … & Hanzo, L. ” Aeronautical $ Ad~ Hoc $ networking for the Internet-above-the-clouds” . Proceedings of the IEEE, Vol. 107, No. 5, pp. 868-911, 2019.‏

View Download

UNIFIED MULTIMODAL BIOMETRICS FUSION USING DEEP LEARNING FOR SECURING IOT

Authors:

Prabhjot Kaur, Chander Kaur

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00012

Abstract:

Advancements in multimodal biometrics, which amalgamate multiple biometric traits, hold promise for augmenting the accuracy and robustness of biometric identification systems. The focal point of this innovative study is the enhancement of multimodal biometrics identification, using face and iris images as the key biometric traits. This work taps into the expansive collection of face and iris images present in the WVU-Multimodal dataset for evaluation purposes. Our proposed approach employs “Convolutional Neural Network (CNN)” architectures, notable for their efficacy in computer vision tasks, to extract potent discriminative features from the input images. This work specifically incorporates three popular CNN architectures: ResNet-50, InceptionNet, XceptionNet, and fine-tuned CNN. To amalgamate the extracted features, investigate various fusion techniques in the security-centric industry: early fusion, and score-level fusion. Early fusion is an approach that merges the raw images of both face and iris at the input level to a single CNN model. Use the Gabor approach to enhance the image's quality and make the face and iris information more visible. This technique modifies the histogram equalization process for local regions, thus enabling better visibility and subsequent feature extraction. Our experimental evaluation employs performance metrics like accuracy, “Equal Error Rate”, and “Receiver Operating Characteristic” curves. In this work undertakes a comparative analysis to appraise the performance of the different CNN architectures and fusion techniques under scrutiny.

Keywords:

CNN Models,Deep Learning,Gabor Technique,Security,Fusion,

Refference:

I. A. Gutub, N. Al-Juaid, E. Khan: ‘Counting-based secret sharing technique for multimedia applications.’ Multimedia Tools and Applications 78 (2019): 5591-5619.
II. C. Kamlaskar, A. Abhyankar: ‘Multimodal System Framework for Feature Level Fusion based on CCA with SVM Classifier.’ 2020 IEEE-HYDCON. IEEE, 2020.
III. D. Singh, V. Kumar: ‘A comprehensive review of computational dehazing techniques.’ Archives of Computational Methods in Engineering 26.5 (2019): 1395-1413.
IV. F. Cherifi, K. Amroun, M. Omar: ‘Robust multimodal biometric authentication on IoT device through ear shape and arm gesture.’ Multimedia Tools and Applications 80.10 (2021): 14807-14827.
V. F. Wang, J. Han: ‘Robust multimodal biometric authentication integrating iris, face and palmprint.’ Information technology and control 37.4 (2008).
VI. I. Boucherit, M.O. Zmirli, H. Hentabli and B.A. Rosdi: ‘Finger vein identification using deeply-fused Convolutional Neural Network.’ Journal of King Saud University-Computer and Information Sciences 34.3 (2022): 646-656.
VII. J. Lowe: ‘Ocular Motion Classification for Mobile Device Presentation Attack Detection.’ University of Missouri-Kansas City, 2020.
VIII. K. Gunasekaran, J. Raja, R. Pitchai: ‘Deep multimodal biometric recognition using contourlet derivative weighted rank fusion with human face, fingerprint and iris images.’ Automatika: časopis za automatiku, mjerenje, elektroniku, računarstvo i komunikacije 60.3 (2019): 253-265.
IX. K.P. Kumar, P.K. Prasad, Y. Suresh, M.R. Babu, M.J. Kumar: ‘Ensemble recognition model with optimal training for multimodal biometric authentication.’ Multimedia Tools and Applications (2024): 1-25.
X. L. Wan, K. Liu, H.A. Mengash., N. Alruwais, M. Al Duhayyim, K. Venkatachalam, : ‘Deep learning-based photoplethysmography biometric authentication for continuous user verification.’ Applied Soft Computing 156 (2024): 111461Darren Williams. : ‘Concrete Strength Prediction from Early-Age Data’. Technical Paper, Honor Project, Technical Paper, University of Adelaide.
XI. L. Wang, X. Meng, D. Li, X. Zhang, S. Ji, S. Guo: ‘DEEPFAKER: a unified evaluation platform for facial deepfake and detection models.’ ACM Transactions on Privacy and Security, 27(1), pp.1-34, 2024.
XII. P. Dhiman, V. Kukreja, A. Kaur: ‘Citrus fruits classification and evaluation using deep convolution neural networks: an input layer resizing approach.’ 2021 9th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions)(ICRITO). IEEE, 2021.
XIII. P. Sivakumar, B.R. Rathnam, S. Divakar, M.A. Teja, R.R. Prasad: ‘A Secure and Compact Multimodal Biometric Authentication Scheme using Deep Hashing.’ 2021 IEEE International Conference on Intelligent Systems, Smart and Green Technologies (ICISSGT). IEEE, 2021.
XIV. P. Xiao: ‘Network Malware Detection Using Deep Learning Network Analysis.’ Journal of Cyber Security and Mobility, pp.27-52, 2024.
XV. P.P. Sarangi, D.R. Nayak, M. Panda, B. Majhi : ‘A feature-level fusion based improved multimodal biometric recognition system using ear and profile face.’ Journal of Ambient Intelligence and Humanized Computing 13.4 (2022): 1867-1898.
XVI. P.P. Sarangi, D.R. Nayak, M. Panda, B. Majhi: ‘A feature-level fusion based improved multimodal biometric recognition system using ear and profile face.’ Journal of Ambient Intelligence and Humanized Computing 13.4 (2022): 1867-1898.
XVII. P.S. Chanukya, T. K. Thivakaran.: ‘Multimodal biometric cryptosystem for human authentication using fingerprint and ear.’ Multimedia Tools and Applications 79.1 (2020): 659-673.
XVIII. Q. Jiang, G. Zhao, X. Ma, M. Li, Y. Tian, X. Li, : ‘Cross-modal Learning based Flexible Bimodal Biometric Authentication with Template Protection.’ IEEE Transactions on Information Forensics and Security (2024).
XIX. R. Deshmukh,P. Yannawar: ‘Deep learning based person authentication system using fingerprint and brain wave.’ International Journal of Computing and Digital Systems 15.1 (2024): 723-739.
XX. R. Ryu, S. Yeom, S.H. Kim, D. Herbert.: ‘Continuous multimodal biometric authentication schemes: a systematic review.’ IEEE Access 9 (2021): 34541-34557.
XXI. R.A. Ramirez-Mendoza, J.D. Lozoya-Santos, R. Zavala-Yoé, L.M. Alonso-Valerdi, R. Morales-Menendez, B. Carrión, P.P. Cruz, H.G. Gonzalez-Hernandez: ‘Biometry: Technology, Trends and Applications.’ CRC Press; 2022 Jul 7.
XXII. R.O. Mahmoud, M. M. Selim, O.A. Muhi: ‘Fusion time reduction of a feature level based multimodal biometric authentication system.’ International Journal of Sociotechnology and Knowledge Development (IJSKD) 12.1 (2020): 67-83.
XXIII. S. Aleem, P. Yang, S. Masood, P. Li, B. Sheng: ‘An accurate multi-modal biometric identification system for person identification via fusion of face and finger print.’ World Wide Web 23.2 (2020): 1299-1317.
XXIV. S. Balaji, U. Rahamathunnisa: ‘Multimodal Biometrics Authentication in Healthcare Using Improved Convolution Deep Learning Model.’ INTERNATIONAL JOURNAL ON ARTIFICIAL INTELLIGENCE TOOLS 32.03 (2023): 2340013.
XXV. S. Pahuja, N. Goel: ‘State-of-the-Art Multi-trait Based Biometric Systems: Advantages and Drawbacks.’ International Conference on Emerging Technologies in Computer Engineering. Cham: Springer International Publishing, 2022.
XXVI. S. Salturk, N. Kahraman: ‘Deep learning-powered multimodal biometric authentication: integrating dynamic signatures and facial data for enhanced online security.’ Neural Computing and Applications (2024): 1-12.
XXVII. T. Gernot, C. Rosenberger: ‘Robust biometric scheme against replay attacks using one-time biometric templates.’ Computers & Security 137 (2024): 103586.
XXVIII. U. Sumalatha, K.K. Prakasha, S. Prabhu, V.C. Nayak: ‘A Comprehensive Review of Unimodal and Multimodal Fingerprint Biometric Authentication Systems: Fusion, Attacks, and Template Protection.’ IEEE Access (2024).
XXIX. V. Talreja, C. V. Matthew, M.N. Nasser: ‘Multibiometric secure system based on deep learning.’ 2017 IEEE Global conference on signal and information processing
XXX. WVU Multimodal Dataset. Accessed: Jan. 28, 2018. [Online]. Available: http://biic.wvu.edu/
XXXI. X. Zhang, D. Cheng, P. Jia, Y. Dai, X. Xu: ‘An efficient android-based multimodal biometric authentication system with face and voice.’ IEEE Access 8 (2020): 102757-102772.
XXXII. X. Zhang, L. Yao, C. Huang, T. Gu, Z. Yang, Y. Liu: ‘DeepKey: A multimodal biometric authentication system via deep decoding gaits and brainwaves.’ ACM Transactions on Intelligent Systems and Technology (TIST) 11.4 (2020): 1-24.
XXXIII. Y. Xu, A. Zhong, J. Yang, D. Zhang: ‘Bimodal biometrics based on a representation and recognition approach.’ Optical Engineering 50.3 (2011): 037202-037202.
XXXIV. Y. Yin, S. He, R. Zhang, H. Chang, X. Han, J. Zhang: ‘Deep learning for iris recognition: a review.’ arXiv preprint arXiv:2303.08514 (2023).
XXXV. Z. Boulkenafet, J. Komulainen, A. Hadid: ‘Face spoofing detection using colour texture analysis.’ IEEE Transactions on Information Forensics and Security 11.8 (2016): 1818-1830.

View Download

NOVEL APPROACH FOR HYPERLEDGER FABRIC USING IOT FOR BANK TRANSACTIONS

Authors:

Haitham Al-Aboodi, Kheriolah Rahsepar Fard

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00013

Abstract:

The increase of attacks on bank accounts and credit cards through various types of attacks. Also, the rapid growth of online bank transfers and rapid transactions in stores and marketing worldwide make the urgent to use ciphering for securing the transactions process. In this paper, ways are proposed to enhance the algorithm that used ciphering and authentications of the user to ensure that the same user made the transactions. This is done through using the blockchain such as the Hyperledger fabric with the using the Internet of things for the authentications. The proposed algorithm helps in improving the safety of online transactions and helps protect the information of the user through the several nodes that use IOT for verifications and authentications. The results enhanced the blockchain of the Hyperledger fabric by enhancing the ways of the transactions and the process through the power of IoT.

Keywords:

Complex Network,Hyperledge Fabric,IoT,Online Transactions,

Refference:

I. AbdulAmeer, Sabah Auda, et al. “Cyber Security Readiness in Iraq: Role of the Human Rights Activists.” International Journal of Cyber Criminology 16.2 (2022): 1-14.
II. blockchain technology use cases in financial services, https://www2.deloitte.com/nl/nl/pages/financial-services/articles/ blockchain-technology-use-cases-in-financial-services.html. Retrieved: April 2019.
III. Ethereum, 2020. [Online]. Available: https://ethereum.org/
IV. E. Androulaki, A. Barger, V. Bortnikov, C. Cachin, K. Christidis, A. D. Caro, D. Enyeart, C. Ferris, G. Laventman, Y. Manevich, S. Muralidharan, C. Murthy, B. Nguyen, M. Sethi, G. Singh, K. Smith, A. Sorniotti, C. Stathakopoulou, M. Vukolic, S. W. Cacco and J. Yellick, “Hyperledger Fabric: A Distributed Operating System for Permissioned Blockchains,” In Proc. 2018 the Thirteenth EuroSys Conference (EuroSys’18), No. 30, Porto, Portugal, April 23-26, 2018.
V. Hyperledger, 2020. [Online]. Available: https://www.hyperledger.org/use/fabric
VI. H. Sukhwani, N. Wang, K. S. Trivedi and A. Rindos, “Performance Modeling of Hyperledger Fabric (Permissioned Blockchain Network),” In Proc. 2018 IEEE 17th International Symposium on Network Computing and Applications (NCA), Cambridge, MA, 2018, pp. 1-8.
VII. NXT, 2020. [Online]. Available: https://www.jelurida.com/nxt/what-is-nxt
VIII. N. Reiff, Blockchain Technology’s Three Generations, 2020. [Online]. Available: https://www.investopedia.com/tech/blockchain-technologys-three-generations/
IX. P. Thakkar, S. Nathan and B. Viswanathan, “Performance Benchmarking and Optimizing Hyperledger Fabric Blockchain Platform,” 2018 IEEE 26th International Symposium on Modeling, Analysis, and Simulation of Computer and Telecommunication Systems (MASCOTS), Milwaukee, WI, 2018, pp. 264-276.
X. Q. Nasir, I. A. Qasse, M. A. Talib, and A. B. Nassif, “Performance Analysis of Hyperledger Fabric Platforms,” Security and Communication Networks, vol. 2018, Article ID 3976093, 14 pages, 2018. 10.1155/2018/3976093.
XI. Stellar, 2020. [Online]. Available: https://www.stellar.org/
XII. S. Nakamoto, “Bitcoin: A Peer-to-Peer Electronic Cash System,” [Online]. Available: http://www.bitcoin.org. Retrieved: April 2019.
XIII. S. Pongnumkul, C. Siripanpornchana and S. Thajchayapong, “Performance Analysis of Private Blockchain Platforms in Varying Workloads,” In Proc. 2017 the 26th International Conference on Computer Communication and Networks (ICCCN), Vancouver, BC, Canada, 2017, pp. 1-6.
XIV. T. T. Dinh, J. Wang, G. Chen, R. Liu, B. C. Ooi, and K. Tan, “Blockbench: A framework for analyzing private blockchains,” in Proc. the 2017 ACM International Conference, pp. 1085–1100, Chicago, IL, USA, May 14-19, 2017.
XV. Waves, 2020. [Online]. Available: https://wavesprotocol.org/
XVI. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “New dual band dual-mode microstrip patch bandpass filter designs based on Sierpinski fractal geometry.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XVII. Yaqeen S. Mezaal, Halil T. Eyyuboglu, and Jawad K. Ali. “A novel design of two loosely coupled bandpass filters based on Hilbert-zz resonator with higher harmonic suppression.” 2013 Third International Conference on Advanced Computing and Communication Technologies (ACCT). IEEE, 2013.
XVIII. Yaqeen S. Mezaal, & Abdulkareem, S. F. (2018, May). New microstrip antenna based on quasi-fractal geometry for recent wireless systems. In 2018 26th Signal Processing and Communications Applications Conference (SIU) (pp. 1-4). IEEE.
XIX. Yaqeen S. Mezaal, et al. “Cloud computing investigation for cloud computer networks using cloudanalyst.” Journal of Theoretical and Applied Information Technology, 96(20), 2018.
XX. Yaqeen S. Mezaal, et al. Cloud of Things and fog computing in Iraq: Potential applications and sustainability. Heritage and Sustainable Development, 5(2), 339-350.
XXI. Yaqeen S. Mezaal, et al.”Filtering power divider design using resonant LC branches for 5G low-band applications.” Sustainability 14.19 (2022): 12291.

View Download

ENERGY MANAGEMENT IN HYBRID PV-WIND-BATTERY STORAGE-BASED MICROGRID USING MONTE CARLO OPTIMIZATION TECHNIQUE

Authors:

Bibhu Prasad Ganthia, Praveen B. M., S. R. Barkunan, A. V. G. A. Marthanda, N. M. G. Kumar, S. Kaliappan

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00014

Abstract:

The paper presents an efficient energy management system designed for a small-scale hybrid microgrid incorporating wind, solar, and battery-based energy generation systems using three types of Monte Carlo simulation techniques. The heart of the proposed system is the energy management system, which is responsible for maintaining power balance within the microgrid. The EMS continuously monitors variations in renewable energy generation and load demand and adjusts the operation of the energy conversion systems and battery storage to ensure optimal performance and reliability. The primary objective of the energy management system is to maintain power balance within the microgrid, even in the face of fluctuations in renewable energy generation and load demand. This involves dynamically adjusting the operation of the renewable energy sources and battery storage system to match the instantaneous power requirements of the microgrid. Overall, the paper presents a comprehensive approach to designing and implementing the Monte Carlo technique to extract maximum energy profit using the hybrid microgrid. By integrating renewable energy sources with energy storage and advanced control algorithms, the proposed system aims to enhance the reliability, stability, and sustainability of the microgrid's power supply.

Keywords:

Battery Storage,Energy Management System,Microgrids,Monte Carlo Optimization,Optimization,Photovoltaic (PV),Uncertainties,Wind Energy,

Refference:

I. Alonso, O., Sanchis, P., Gubia, E., & Marroyo, L. (2003). Cascaded H-bridge multilevel converter for grid-connected photovoltaic generators with independent maximum power point tracking of each solar array. Proceedings of the 34th IEEE Power Electronics Specialists Conference, Acapulco, Mexico, 15–19 June 2003, 2, 731–735. New York: IEEE.
II. Alvarez, G., Moradi, H., Smith, M., & Zilouchian, A. (2017). Modeling a grid-connected PV/Battery microgrid system with MPPT controller. 2017 IEEE 44th Photovoltaic Specialist Conference (PVSC), 2941–2946.
III. Almada, J., Leão, R., Sampaio, R., & Barroso, G. (2016). A centralized and heuristic approach for energy management of an AC microgrid. Renewable and Sustainable Energy Reviews, 60, 1396–1404.
IV. AlKassem, A., Draou, A., Alamri, A., & Alharbi, H. (2022). Design analysis of an optimal microgrid system for the integration of renewable energy sources at a university campus. Sustainability, 14(7), 4175. https://doi.org/10.3390/su14074175.
V. Arcos-Aviles, D., Pascual, J., Guinjoan, F., Marroyo, L., Sanchis, P., & Marietta, M. P. (2017). Low complexity energy management strategy for grid profile smoothing of a residential grid-connected microgrid using generation and demand forecasting. Applied Energy, 205, 69–84.
VI. Cabrera-Tobar, A., Massi Pavan, A., Petrone, G., & Spagnuolo, G. (2022). A review of the optimization and control techniques in the presence of uncertainties for the energy management of microgrids. Energies, 15(23), 9114. https://doi.org/10.3390/en15239114.
VII. Cecati, C., Dell’Aquila, A., Liserre, M., & Monopoli, V. G. (2003). A passivity-based multilevel active rectifier with adaptive compensation for traction applications. IEEE Transactions on Industry Applications, 39(5), 1404–1413.
VIII. Franquelo, L. G., Rodriguez, J., Leon, J. I., Kouko, S., & Portillo, R. (2008). The age of multilevel converters arrives. IEEE Industrial Electronics Magazine, 2(2), 28–39.
IX. Genikomsakis, K. N., Lopez, S., Dallas, P. I., & Ioakimidis, C. S. (2017). Simulation of wind-battery microgrid based on short-term wind power forecasting. Applied Sciences, 7(11), 1142. https://doi.org/10.3390/app7111142.
X. Gonzalez, R., Gubia, E., Lopez, J., & Marroyo, L. (2008). Transformerless single-phase multilevel-based photovoltaic inverter. IEEE Transactions on Industrial Electronics, 55(7), 2694–2702.
XI. Jigar, S. S., Lee, K., Patel, H., Patel, N., & Patel, D. (2022). Energy management system of microgrid using optimization approach. IFAC-Papers On Line, 55(9), 280–284. https://doi.org/10.1016/j.ifacol.2022.07.049.
XII. Kjaer, S. B., Pedersen, J. K., & Blaabjerg, F. (2005). A review of single-phase grid-connected inverters for photovoltaic modules. IEEE Transactions on Industry Applications, 41(5), 1292–1306.
XIII. Lai, J.-S., & Peng, F. Z. (1996). Multilevel converters—A new breed of power converters. IEEE Transactions on Industry Applications, 32(3), 509–517.
XIV. Ozdemir, E., Ozdemir, S., & Tolbert, L. M. (2009). Fundamental-frequency-modulated six-level diode-clamped multilevel inverter for three-phase stand-alone photovoltaic system. IEEE Transactions on Industrial Electronics, 56(11), 4407–4415.
XV. Rey, J., Segura, F., & Andújar, J. M. (2023). Profitability of hydrogen-based microgrids: A novel economic analysis in terms of electricity price and equipment costs. Electronics, 12, 4355. https://doi.org/10.3390/electronics12204355.
XVI. Rodriguez, J. R., Dixon, J. W., Espinoza, J. R., Pontt, J., & Lezana, P. (2005). PWM regenerative rectifiers: State of the art. IEEE Transactions on Industrial Electronics, 52(1), 5–22.
XVII. Rodriguez, J. R., Lai, J.-S., & Peng, F. Z. (2002). Multilevel inverters: A survey of topologies, control, and applications. IEEE Transactions on Industrial Electronics, 49(4), 724–738.
XVIII. Sirviö, K., Kauhaniemi, K., Memon, A. A., Laaksonen, H., & Kumpulainen, L. (2020). Functional analysis of the microgrid concept applied to case studies of the Sundom Smart Grid. Energies, 13(16), 4223. https://doi.org/10.3390/en13164223.
XIX. Tarek, M. S. I., Siam, A., Zia, M., & Rahman, M. M. (2018). A novel five-level inverter topology with reactive power control for grid-connected PV system. 2018 International Conference on Smart Grid and Clean Energy Technologies (ICSGCE 2018), 101–105. IEEE.
XX. Tolbert, L. M., Peng, F. Z., & Habetler, T. G. (1999). Multilevel converters for large electric drives. IEEE Transactions on Industry Applications, 35(1), 36–44.
XXI. Ganthia, B. P., & Upadhyaya, M. (2021). Bridgeless AC/DC Converter & DC-DC Based Power Factor Correction with Reduced Total Harmonic Distortion. Design Engineering, 2012-2018.
XXII. Ganthia, B. P., Pradhan, R., Das, S., & Ganthia, S. (2017). Analytical study of MPPT based PV system using fuzzy logic controller. 2017 International Conference on Energy, Communication, Data Analytics and Soft Computing
XXIII. Ganthia, B. P., Sahu, P. K., & Mohanty, A. Minimization Of Total Harmonic Distortion Using Pulse Width Modulation Technique. IOSR Journal of Electrical and Electronics Engineering (IOSR-JEEE) e-ISSN, 2278-1676.
XXIV. Ganthia, B.P., & Praveen, B.M. (2023). Review on Scenario of Wind Power Generations in India. Electrical Engineering, 13(2), 1-27p.
XXV. Ganthia, B.P., Barik, S., & Nayak, B. (2020). Application of hybrid facts devices in DFIG based wind energy system for LVRT capability enhancements. J. Mech. Cont. Math. Sci., 15(6), 245-256.
XXVI. Ganthia, B.P., Barik, S.K., & Nayak, B. (2020). Transient analysis of grid integrated stator voltage oriented controlled type-III DFIG driven wind turbine energy system. Journal of Mechanics of Continua and Mathematical Sciences, 15(6), 139-157.
XXVII. Ganthia, B.P., Monalisa Mohanty, Sushree Shataroopa Mohapatra, Rosalin Pradhan, Subhasmita Satapathy, Shilpa Patra, & Sunita Pahadasingh. (2023). Artificial Neural Network Optimized Load Forecasting of Smartgrid using MATLAB. Control Systems and Optimization Letters, 1(1), 46-51.
XXVIII. Ganthia, B.P., Mannam, P., & Manchireddy, S. (2021). Grid Tied PV with Reduced THD Using NN and PWM Techniques. Design Engineering, 2019-2027.
XXIX. Jena, S., Mishra, S., Ganthia, B. P., & Samal, S. K. (2022). Load Frequency Control of a Four-Area Interconnected Power System Using JAYA Tuned PID Controller and Derivative Filter. In Sustainable Energy and Technological Advancements: Proceedings of ISSETA 2021 (pp. 497-511). Singapore: Springer Singapore.
XXX. Kabat, S.R., Panigrahi, C.K., & Ganthia, B.P. (2022). Comparative analysis of fuzzy logic and synchronous reference frame controlled LVRT capability enhancement in wind energy system using DVR and STATCOM. In Sustainable Energy and Technological Advancements: Proceedings of ISSETA 2021 (pp. 423-433). Singapore: Springer Singapore.
XXXI. Mannam, P., Manchireddy, S., & Ganthia, B. P. (2021). Grid Tied PV with Reduced THD Using NN and PWM Techniques. Design Engineering, 2019-2027.
XXXII. Mohanty, R., Chatterjee, D., Mohanty, S., Dhanamjayulu, C., & Khan, B. (2023). THD Reduction of Improved Single Source MLI Using Upgraded Black Widow Optimization Algorithm. International Transactions on Electrical Energy Systems, Article ID 6724716, 16 pages. https://doi.org/10.1155/2023/6724716.
XXXIII. Refaai, M. R. A., Dhanesh, L., Ganthia, B. P., Mohanty, M., Subbiah, R., & Anbese, E. M. (2022). Design and Implementation of a Floating PV Model to Analyse the Power Generation. International Journal of Photoenergy, Article ID 8004425.

View Download

COMPUTING THE INDEPENDENT DOMINATION METRIC DIMENSION PROBLEM OF SPECIFIC GRAPHS

Authors:

Basma Mohamed, Iqbal M. Batiha, Mohammad Odeh, Mohammed El-Meligy

DOI NO:

https://doi.org/10.26782/jmcms.2024.12.00015

Abstract:

We consider, in this paper, the NP-hard problem of finding the minimum independent domination metric dimension of graphs. A vertex set  of a connected graph  resolves  if every vertex of  is uniquely identified by its vector of distances to the vertices in . A resolving set  of  is independent if no two vertices in  are adjacent. A resolving set is dominating if every vertex of  that does not belong to  is a neighbor to some vertices in . The cardinality of the smallest resolving set of , the cardinality of the minimal independent resolving set, and the cardinality of the minimal independent domination resolving set are the metric dimension of , independent metric dimension of , and the independent domination metric dimension of , respectively.

Keywords:

Dominant Metric Dimension,Domination Number,Independent Number,Metric Dimension,Resolving Dominating Set,

Refference:

I. A. Khan, G. Haidar, N. Abbas, M. U. I. Khan, A. U. K. Niazi, A. U. I. Khan. : ‘Metric dimensions of bicyclic graphs’. Mathematics. Vol. 11(4), pp. 869, 2023. 10.3390/math11040869
II. A. Mofidi. : ‘On dominating graph of graphs, median graphs, partial cubes and complement of minimal dominating sets’. Graphs and Combinatorics. Vol. 39(5), pp. 104, 2023. 10.1007/s00373-023-02595-4
III. A. Samanta Adhya, S. Mondal, S. Charan Barman. : ‘Edge-vertex domination on interval graphs’. Discrete Mathematics, Algorithms and Applications. Vol. 16(02), pp. 2350015, 2024. 10.1142/S1793830923500150
IV. B. Mohamed. : ‘A comprehensive survey on the metric dimension problem of graphs and its types’. International Journal of Theoretical and Applied Mechanics. Vol. 9(1), pp. 1–5, 2023.
V. B. Mohamed, M. Amin. : ‘Domination number and secure resolving sets in cyclic networks’. Applied and Computational Mathematics. Vol. 12(2), pp. 42–45, 2023.
VI. C. Zhang, G. Haidar, M. U. I. Khan, F. Yousafzai, K. Hila, A. U. I. Khan. : ‘Constant time calculation of the metric dimension of the join of path graphs’. Symmetry. Vol. 15(3), pp. 708, 2023. 10.3390/sym15030708
VII. D. Garijo, A. González, A. Márquez. : ‘The difference between the metric dimension and the determining number of a graph’. Applied Mathematics and Computation. Vol. 249, pp. 487–501, 2014. 10.1016/j.amc.2014.10.004
VIII. H. Al-Zoubi, H. Alzaareer, A. Zraiqat, T. Hamadneh, W. Al-Mashaleh. : ‘On ruled surfaces of coordinate finite type’. WSEAS Transactions on Mathematics. Vol. 21, pp. 765–769, 2022. 10.37394/23206.2022.21.87
IX. I. M. Batiha, B. Mohamed. : ‘Binary rat swarm optimizer algorithm for computing independent domination metric dimension problem’. Mathematical Models in Engineering. Vol. 10(3), pp. 119–132, 2024. 10.21595/mme.2024.24037
X. I. M. Batiha, B. Mohamed, I. H. Jebril. : ‘Secure metric dimension of new classes of graphs’. Mathematical Models in Engineering. Vol. 10(3), pp. 161–167, 2024. 10.21595/mme.2024.24038
XI. I. M. Batiha, J. Oudetallah, A. Ouannas, A. A. Al-Nana, I. H. Jebril. : ‘Tuning the fractional-order PID-Controller for blood glucose level of diabetic patients’. International Journal of Advances in Soft Computing and its Applications. Vol. 13, pp. 1–10, 2021. https://www.i-csrs.org/Volumes/ijasca/2021.2.1.pdf

XII. I. M. Batiha, M. Amin, B. Mohamed, H. I. Jebril. : ‘Connected metric dimension of the class of ladder graphs’. Mathematical Models in Engineering. Vol. 10, pp. 65–74, 2024. 10.21595/mme.2024.23934
XIII. I. M. Batiha, N. Anakira, A. Hashim, B. Mohamed. : ‘A special graph for the connected metric dimension of graphs’. Mathematical Models in Engineering. Vol. 10, pp. 1–8, 2024. 10.21595/mme.2024.24176
XIV. I. M. Batiha, N. Anakira, B. Mohamed. : ‘Algorithm for finding domination resolving number of a graph’. Journal of Mechanics of Continua and Mathematical Sciences. Vol. 19, pp. 18–23, 2024. 10.26782/jmcms.2024.09.00003
XV. I. M. Batiha, S. A. Njadat, R. M. Batyha, A. Zraiqat, A. Dababneh, S. Momani. : ‘Design fractional-order PID controllers for single-joint robot ARM model’. International Journal of Advances in Soft Computing and its Applications. Vol. 14, pp. 97–114, 2022. 10.15849/IJASCA.220720.07
XVI. K. Nie, K. Xu. : ‘The doubly metric dimension of corona product graphs’. Filomat. Vol. 37(13), pp. 4375–4386, 2023. 10.2298/FIL2313375N
XVII. M. Salman, N. Rasheed, M. Ur Rehman, J. Cao. : ‘On the metric determination of linear dependence graph’. Optimal Control Applications and Methods. Vol. 44(3), pp. 1632–1647, 2023. 10.1002/oca.2923
XVIII. M. Vasuki, R. Shanmugapriya, M. Mahdal, R. Cep. : ‘A study on fuzzy resolving domination sets and their application in network theory’. Mathematics. Vol. 11(2), pp. 317, 2023. 10.3390/math11020317
XIX. R. Alfarisi, S. K. S. Husain, L. Susilowati, A. I. Kristiana. : ‘Dominant mixed metric dimension of graph’. Statistics, Optimization & Information Computing. Vol. 12(6), pp. 1826–1833, 2024. 10.19139/soic-2310-5070-1925
XX. S. Khuller, B. Raghavachari, A. Rosenfeld. : ‘Landmarks in graphs’. Discrete Applied Mathematics. Vol. 70(3), pp. 217–229, 1996. 10.1016/0166-218X(95)00106-2
XXI. T. Mazidah, I. H. Agustin, R. Nisviasari. : ‘Resolving independent domination number of some special graphs’. Journal of Physics: Conference Series. Vol. 1832(1), pp. 012022, 2021. 10.1088/1742-6596/1832/1/012022

View Download