Optimal Hybrid Electric Vehicle Powertrain Control Based on Route and Speed optimization

2019 IEEE 15th International Conference on Control and Automation (ICCA)(2019)

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摘要
An optimal powertrain controller combining feed-forward and feedback modules is developed based on route and speed optimization for improved fuel economy of hybrid electric vehicle. The economic route and speed is optimized for the given origin-destination with expected trip time by a genetic algorithm based co-optimization method using the traffic data and vehicle characteristics. The feedforward module is based on a global power distribution strategy and the feedback module is a receding horizon linear quadratic tracking control. A co-simulation model, combining traffic model based on SUMO and Simulink hybrid powertrain model, is developed and used for validating the proposed optimal control strategy. The co-simulation results indicate that the proposed control strategy is able to decrease the fuel consumption by up to 30% comparing with the power follower adopting the fastest route. Note that even with the same powertrain controller, the economic route and speed can also improve the fuel economy by 14.21% comparing with the fastest route without optimization.
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关键词
economic route,optimal hybrid electric vehicle powertrain control,speed optimization,fuel economy,genetic algorithm,vehicle characteristics,feedforward module,global power distribution strategy,feedback module,receding horizon linear quadratic tracking control,traffic model,route optimization,SUMO,Simulink hybrid powertrain model,distribution strategy,fuel consumption,power follower
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