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Energy-Saving of Battery Electric Vehicle Powertrain and Efficiency Improvement during Different Standard Driving Cycles

Khairy Sayed, Ahmed M. Kassem, Hedra Saleeb, Ali S. Alghamdi, Ahmed G. Abo‐Khalil

2020Sustainability46 citationsDOIOpen Access PDF

Abstract

This article focuses on the energy-saving of each driving distance for battery electric vehicle (BEV) applications, by developing a more effective energy management strategy (EMS), under different driving cycles. Fuzzy logic control (FLC) is suggested to control the power management unit (PMU) for the battery management system (BMS) for BEV applications. The adaptive neural fuzzy inference system (ANFIS) is a modeling technique that is mainly based on data. Membership functions and FLC rules can be improved by simply training the ANFIS with real driving cycle data gathered from the MATLAB/SIMULINK program. Then, FLC console blocks are rewritten by enhanced membership functions by ANFIS traineeship. Two different driving cycles are chosen to check the improvement in the efficiency of this proposed system. The suggested control system is validated by simulation and comparison with the traditional proportional-integral (PI) control. The optimized FLC shows better energy-saving.

Topics & Concepts

Adaptive neuro fuzzy inference systemPowertrainEnergy managementMATLABBattery (electricity)Energy management systemAutomotive engineeringComputer scienceFuzzy logicDriving cycleControl engineeringControl (management)Power (physics)Energy (signal processing)Electric vehicleFuzzy control systemEngineeringArtificial intelligenceTorqueStatisticsMathematicsQuantum mechanicsPhysicsThermodynamicsOperating systemElectric and Hybrid Vehicle TechnologiesAdvanced Battery Technologies ResearchElectric Vehicles and Infrastructure
Energy-Saving of Battery Electric Vehicle Powertrain and Efficiency Improvement during Different Standard Driving Cycles | Litcius