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Real-time optimal energy management strategy for a dual-mode power-split hybrid electric vehicle based on an explicit model predictive control algorithm

机译:基于显式模型预测控制算法的双模式动力分配混合动力电动汽车实时最优能量管理策略

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To improve fuel economy and reduce online computation time and microprocessor hardware resources, a real-time implementable energy management strategy for a dual-mode power-split hybrid electric vehicle (HEV) based on an explicit model predictive control (EMPC) method is proposed in this paper. The proposed strategy includes an accurate control-oriented model and a dynamic process coordination control algorithm. The energy management optimal control problem is formulated as a multiparameter quadratic programming optimization problem, and the EMPC control laws are obtained by solving the multiparameter quadratic programming problem offline. The laws are then used online to realize real-time control. A traditional model predictive control (MPC)-based control strategy, DP-based control strategy and rule-based control strategy are considered benchmark strategies for verification of the proposed EMPC-based energy management strategy. The simulation results indicate the EMPC controller has far lower microprocessor hardware costs than the MPC controller but equivalent control performance. As the prediction horizon increases, fuel consumption remains nearly the same between the MPC-based control strategy and EMPC-based control strategy. The consumption time of the MPC-based control strategy increases significantly, while the consumption time of the EMPC-based control strategy is nearly unchanged. Compared with the benchmark algorithms, the elapsed time of the EMPC controller maximum reduced by 97.46%, and the fuel economy improved by 23.37%. (C) 2019 Elsevier Ltd. All rights reserved.
机译:为了提高燃油经济性并减少在线计算时间和微处理器的硬件资源,提出了一种基于显式模型预测控制(EMPC)方法的双模式动力分流混合电动汽车(HEV)的实时可实施能源管理策略。这篇报告。所提出的策略包括精确的面向控制的模型和动态过程协调控制算法。将能量管理最优控制问题表述为多参数二次规划优化问题,并通过离线求解多参数二次规划问题获得EMPC控制律。然后将这些法律在线使用以实现实时控制。传统的基于模型预测控制(MPC)的控制策略,基于DP的控制策略和基于规则的控制策略被视为用于验证所提出的基于EMPC的能源管理策略的基准策略。仿真结果表明,EMPC控制器的微处理器硬件成本比MPC控制器低得多,但控制性能却相当。随着预测范围的增加,基于MPC的控制策略和基于EMPC的控制策略之间的燃油消耗几乎保持不变。基于MPC的控制策略的消耗时间显着增加,而基于EMPC的控制策略的消耗时间几乎不变。与基准算法相比,EMPC控制器的最大运行时间减少了97.46%,燃油经济性提高了23.37%。 (C)2019 Elsevier Ltd.保留所有权利。

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