• CN:11-2187/TH
  • ISSN:0577-6686

›› 2010, Vol. 46 ›› Issue (6): 33-38.

• 论文 • 上一篇    下一篇

基于道路工况自学习的混合动力城市客车控制策略动态优化

朱道伟;谢辉;严英;宋振垒   

  1. 天津大学内燃机燃烧学国家重点实验室;军事交通学院汽车工程系
  • 发布日期:2010-03-20

Control Strategy Dynamic Optimization of the Hybrid Electric Bus Based on Driving Cycle Self-learning

ZHU Daowei;XIE Hui;YAN Ying;SONG Zhenlei   

  1. State Key Laboratory of Engines, Tianjin University Automobile Engineering Department, Academy of Military Transportation
  • Published:2010-03-20

摘要: 在混合动力控制策略开发过程中通常采用国外开发的典型道路工况,而这些道路工况与国内的实际道路工况存在较大的差异,这种差异会导致开发的控制策略并不能使混合动力车辆在实际工况下达到最佳燃油经济性。针对这一问题,结合城市公交车线路固定、周期性强等特点,建立道路工况自学习系统。利用该系统可以生成针对固定线路的运行工况,试验结果表明该工况真实地反映车辆实际运行的线路特点。以生成的道路工况为基础,利用动态规划方法,对控制策略进行优化仿真研究。目标车辆在采集得到的道路工况上,按动态规划分配的功率值运行,仿真结果得到的百公里燃油消耗比采用功率跟随控制策略的混合动力公交车的实际燃油消耗降低10.2%。真正实现混合动力客车的“一线一策略”的要求,提高混合动力城市客车的适应性。

关键词: 道路工况, 动态优化, 混合动力, 自学习

Abstract: The development of hybrid electric control strategies typically use American or Japanese driving cycles. However, there is great difference between these driving cycles and the domestic actual ones, which causes the developed control strategy unable to make the hybrid electric bus attain the optimal fuel economy. In view of this problem, a driving cycle self-learning system is set up upon consideration of the traits of the bus, such as fixed commuting route and strong periodicity. Experimental results from the driving cycle self-learning show that the constructed driving cycle can adequately represent the route. Based on the constructed driving cycle, the control strategy is optimized by using dynamic programming. The target vehicle runs on the collected driving cycles according to the power distributed by dynamic programming. The simulation result shows that the fuel consumption is reduced by 10.2 percent in comparison to the actual vehicle running on the route with the power follower control strategy. Through this method, “one route one strategy” for each hybrid electric bus is realized and the adaptability thereof is improved.

Key words: Driving cycle, Dynamic optimization, Hybrid electric, Self-learning

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