Publication | Closed Access
Design of a hybrid energy management system using designed<scp>rule‐based</scp>control strategy and genetic algorithm for the series‐parallel plug‐in hybrid electric vehicle
70
Citations
42
References
2020
Year
Search OptimizationHybrid Energy SystemsElectrical EngineeringPure Electric VehicleEngineeringEnergy ManagementElectric VehiclesGenetic AlgorithmSystems EngineeringHybrid Optimization TechniqueHybrid Energy SystemHybrid Electric VehicleHybrid VehiclePowertrain SimulationOptimal System Design
Electric vehicle (EV) is considered as a critical requirement to the future development of transportation. However, the battery performance in terms of power density and energy density limits the use of EVs. An energy management system (EMS) of plug-in hybrid electric vehicle (PHEV) is very critical to achieve successful transition from the conventional vehicle to the pure electric vehicle (PEV). This paper proposes a hybrid EMS for the series-parallel PHEV utilising a rule-based control strategy and genetic algorithm (GA)-based optimisation technique to overcome the battery limitations. A mathematical model was developed and verified by conducting simulation studies using the vehicle model from ADVISOR database and the GA Optimization Toolbox (GAOT) in the Matlab Simulink environment. The simulation results show that the GA optimization successfully achieved the sub-targets set in the fitness function. To show the effectiveness of the proposed technique, the results were compared with the simulation results of a single function of the designed rule-based control strategy—the proposed EMS achieved a significant improvement in the hydrocarbon (HC) emission and NOx emission.
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