Quan Rui, Guo Haifeng, Li Xuerong, Zhang Jian, Chang Yufang
Hubei Key Laboratory for High-efficiency Utilization of Solar Energy and Operation Control of Energy Storage System, Hubei University of Technology, Wuhan 430068, China.
Hubei Engineering Research Center for Safety Monitoring of New Energy and Power Grid Equipment, Hubei University of Technology, Wuhan 430068, China.
iScience. 2024 Mar 12;27(4):109473. doi: 10.1016/j.isci.2024.109473. eCollection 2024 Apr 19.
This paper proposes a Pontryagin's minimum principle (PMP) energy management strategy (EMS) based on driving cycle recognition for fuel cell vehicle powertrains, aiming to minimize hydrogen consumption and fuel cell degradation. Firstly, the neural network-based driving cycle recognizer is optimized using the tuna swarm optimization (TSO) algorithm and trained under four typical driving cycles. Then, the optimal co-state variables for the four driving cycles are obtained by iteration. Finally, the co-state variables are dynamically updated based on real-time driving cycle recognition results. Comparative analysis demonstrates that the PMP-DCR effectively improves fuel cell lifetime and vehicle economy under short-distance driving cycles. Based on the combined driving cycle, the proposed PMP-DCR EMS exhibits similar economy performance to optimal dynamic programming (DP) EMS, reducing equivalent hydrogen consumption by 13.8% and 9.2%, and decreasing fuel cell degradation rates by 93% and 8.7% in comparison to the conventional power-following and PMP EMS, respectively.
本文提出了一种基于驾驶循环识别的用于燃料电池汽车动力总成的庞特里亚金最小值原理(PMP)能量管理策略(EMS),旨在使氢气消耗和燃料电池退化最小化。首先,基于神经网络的驾驶循环识别器采用金枪鱼群优化(TSO)算法进行优化,并在四个典型驾驶循环下进行训练。然后,通过迭代获得四个驾驶循环的最优协态变量。最后,根据实时驾驶循环识别结果动态更新协态变量。对比分析表明,PMP-DCR在短距离驾驶循环下有效提高了燃料电池寿命和车辆经济性。基于组合驾驶循环,所提出的PMP-DCR EMS表现出与最优动态规划(DP)EMS相似的经济性能,与传统功率跟随和PMP EMS相比,分别降低了13.8%和9.2%的等效氢气消耗,并将燃料电池退化率降低了93%和8.7%。