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Machine learning and whale optimization algorithm based design of energy management strategy for plug‐in hybrid electric vehicle

Zhuoran Hou, Jianhua Guo, Jiaming Xing, Chong Guo, Yuanjian Zhang

2021IET Intelligent Transport Systems31 citationsDOIOpen Access PDF

Abstract

Abstract In this paper, a novel energy management strategy with the improved adaptability to various conditions for plug‐in hybrid electric vehicle (PHEV) is proposed. The control parameters, derived from the benchmark test, are optimized offline for different driving conditions. The optimized parameters are implemented according to different driving behaviours identified online. The offline and online cooperation improves performance of energy management strategy in different driving conditions. Three main efforts have been made: Firstly, the valuable features that describe different driving conditions are extracted by random forest (RF) and the features are used for determining driving condition categories, utilized for online driving condition identification by support vector machine (SVM). Secondly, the control thresholds in the developed control strategy are optimized by whale optimization algorithm (WOA) under different driving conditions. The optimal control thresholds for different driving conditions will be called online after certain traffic condition is categorized. At last, simulation‐based evaluation is performed, validating the enhanced performance of the proposed methods in energy‐saving in different driving conditions.

Topics & Concepts

AdaptabilityBenchmark (surveying)Support vector machinePlug-inControl (management)Energy managementEnergy (signal processing)Computer scienceElectric vehicleEngineeringIdentification (biology)Automotive engineeringArtificial intelligencePower (physics)PhysicsGeographyProgramming languageBotanyGeodesyQuantum mechanicsBiologyMathematicsStatisticsEcologyElectric and Hybrid Vehicle TechnologiesVehicle emissions and performanceElectric Vehicles and Infrastructure