EVALUATION OF FUZZY LOGIC AND PROPORTIONALINTEGRAL CONTROLLERS FOR HYBRID ELECTRIC VEHICLE

Authors:

Geetha Reddy Evuri,Srinivas Rao Gorantla,K. Srinivasa Reddy,

DOI NO:

https://doi.org/10.26782/jmcms.2019.12.00069

Keywords:

Controllers,Hybrid Electric Vehicle,Speed,Terrains,Performance,

Abstract

This paper discusses the control action of various classic controllers such as fuzzy logic controllers and proportional-integral controllers. Consider the typical features of various terrains such as smooth, rough, uphill and downhill. For each type of terrain, i.e. when the local shape changes, the input parameters taken into account also change accordingly because it is adaptive, this includes all possible parameters of the vehicle. During running, the controller can perform smooth, rough, uphill and downhill driving at different speeds and terrain. The results were performed during the simulation.

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