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An Energy Management Strategy for a Super-Mild Hybrid Electric Vehicle Based on a Known Model of Reinforcement Learning

机译:基于已知增强学习模型的超温和混合电动汽车能源管理策略

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摘要

For global optimal control strategy, it is not only necessary to know the driving cycle in advance but also difficult to implement online because of its large calculation volume. As an artificial intelligent-based control strategy, reinforcement learning (RL) is applied to an energy management strategy of a super-mild hybrid electric vehicle. According to time-speed datasets of sample driving cycles, a stochastic model of the driver’s power demand is developed. Based on the Markov decision process theory, a mathematical model of an RL-based energy management strategy is established, which assumes the minimum cumulative return expectation as its optimization objective. A policy iteration algorithm is adopted to obtain the optimum control policy that takes the vehicle speed, driver’s power demand, and state of charge (SOC) as the input and the engine power as the output. Using a MATLAB/Simulink platform, CYC_WVUCITY simulation model is established. The results show that, compared with dynamic programming, this method can not only adapt to random driving cycles and reduce fuel consumption of 2.4%, but also be implemented online because of its small calculation volume.
机译:对于全球最佳控制策略,不仅需要提前了解驾驶周期,而且由于其计算量大,因此难以在线实施。作为基于人工智能的控制策略,加强学习(RL)应用于超温和混合动力电动汽车的能量管理策略。根据采样驱动周期的时速数据集,开发了驾驶员电价的随机模型。基于马尔可夫决策过程理论,建立了基于RL的能源管理策略的数学模型,这假设最小累计回报期作为其优化目标。采用策略迭代算法来获得采用车速,驾驶员电力需求和充电状态(SoC)作为输入和发动机功率作为输出的最佳控制策略。使用MATLAB / SIMULINK平台,建立了CYC_WUCUCITY仿真模型。结果表明,与动态编程相比,该方法不仅适应随机驱动周期,并降低了2.4%的燃料消耗,而且由于其计算量小,因此在线实施。

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