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Energy Management of the Power-Split Hybrid Electric City Bus Based on the Stochastic Model Predictive Control

机译:基于随机模型预测控制的动力分流混合动力电力城市总线能源管理

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摘要

The energy management strategy of hybrid electric vehicles is of significant importance to improve the fuel economy. In this regard, two energy management strategies are designed for power-split hybrid electric city bus (HECB), which are based on the linear time-varying stochastic model predictive control (LTV-SMPC) and stochastic model predictive control based on Pontriagin’s minimum principle (PMP-SMPC). In the present study, the Markov chain and long short-term memory (LSTM) forecast demand torque and velocity respectively are applied to establish a combination forecast model. Then several processes, including linear approximation, processing simplified control model, the proposed nonlinear vehicle model is converted into a linear time-varying model. Meanwhile, the energy management problem in a linear quadratic programming problem is solved. Considering linearization error and limitations of the quadratic optimization, Pontriagin’s minimum principle (PMP) is applied to optimize the nonlinear model predictive control. Based on the reference theory, the range of coordinated variables is derived, and the optimal coordination variable is searched by dichotomy to realize the rolling optimization of the model predictive control (MPC). Finally, the effectiveness of the proposed energy management strategy is verified by simulating several case studies. Obtained results show that compared with the rule-based (RB) control strategy, the fuel economy of LTV-SMPC and PMP-SMPC increases by 8.79% and 14.42%, respectively. Meanwhile, it is concluded that the two strategies have real-time computing potential.
机译:混合动力汽车的能源管理策略对于改善燃油经济性具有重要意义。在这方面,两个能源管理策略专为电力分配混合电动城市总线(HECB)而设计,基于线性时变随机模型预测控制(LTV-SMPC)和基于Pontriggin的最小原理的随机模型预测控制(PMP-SMPC)。在本研究中,Markov链和长短期记忆(LSTM)预测需求扭矩和速度分别用于建立组合预测模型。然后几个过程,包括线性近似,处理简化控制模型,所提出的非线性车辆模型被转换为线性时变模型。同时,解决了线性二次编程问题中的能量管理问题。考虑线性化误差和二次优化的限制,Pontrigigin的最低原理(PMP)应用于优化非线性模型预测控制。基于参考理论,导出协调变量的范围,并通过二分法搜索最佳协调变量,以实现模型预测控制(MPC)的滚动优化。最后,通过模拟几个案例研究来验证所提出的能量管理策略的有效性。得到的结果表明,与基于规则的(RB)控制策略相比,LTV-SMPC和PMP-SMPC的燃料经济性分别增加了8.79%和14.42%。与此同时,总结,两种策略具有实时计算潜力。

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