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Real-time analytical solution to energy management for hybrid electric vehicles using intelligent driving cycle recognition

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  • Chen, Yifan
  • Yang, Liuquan
  • Yang, Chao
  • Wang, Weida
  • Zha, Mingjun
  • Gao, Pu
  • Liu, Hui

Abstract

For series hybrid electric vehicles, due to the limitation of engine operating characteristics, speed regulation is usually performed using discrete operating points. This leads to the problem of mixed integer programming when solving energy management problem. In this paper, an analytical method with strong real-time performance and small computational load is proposed. First, an intelligent cycle recognition system is designed. It can cluster driving cycles offline based on the probability distribution of the required power and efficiently recognize unknown driving cycles online. Then the analytical expression of power distribution is derived, and the selection scheme of engine operating point is given. Finally, the required power information obtained from the clustering is substituted into the analytical expression. The specific values of the corresponding analytical solutions for each type are computed offline. When facing unknown conditions, this method can match the power distribution scheme quickly once the driving cycle is recognized. The results of the simulation and hardware-in-loop experiments demonstrate that this method can effectively control the SOC trajectory and allocate power more optimally. Compared to the benchmark method, the proposed strategy improves the fuel economy by 5.52 % and 7.49 % in two cases, and the computational efficiency is significantly enhanced.

Suggested Citation

  • Chen, Yifan & Yang, Liuquan & Yang, Chao & Wang, Weida & Zha, Mingjun & Gao, Pu & Liu, Hui, 2024. "Real-time analytical solution to energy management for hybrid electric vehicles using intelligent driving cycle recognition," Energy, Elsevier, vol. 307(C).
  • Handle: RePEc:eee:energy:v:307:y:2024:i:c:s0360544224024174
    DOI: 10.1016/j.energy.2024.132643
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    References listed on IDEAS

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