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Intelligent energy management strategy based on hierarchical approximate global optimization for plug-in fuel cell hybrid electric vehicles

机译:基于分层近似全局优化的插电式燃料电池混合动力汽车智能能源管理策略

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The energy management strategy (EMS) is a key to reduce the equivalent hydrogen consumption and slow down fuel cell performance degradation of the plug-in fuel cell hybrid electric vehicles. Global optimal EMS based on the whole trip information can achieve the minimum hydrogen consumption, but it is difficult to apply in real driving. This paper tries to solve this problem with a novel hierarchical EMS proposed to realize the real-time application and approximate global optimization. The long-term average speed in each future trip segment is predicted by KNN, and the short-term speed series is predicted by a new model averaging method. The approximate global optimization is realized by introducing hierarchical reinforcement learning (HRL), and the strategy within the speed forecast window is optimized by introducing upper confidence tree search (UCTS). The vehicle speed prediction and the proposed EMS have been verified using the collected real driving cycles. The results show that the proposed strategy can adapt to driving style changes through self-learning. Compared with the widely used rule-based strategy, it can evidently reduce hydrogen consumption by 6.14% and fuel cell start-stop times by 21.7% on average to suppress the aging of fuel cell. Moreover, its computation time is less than 0.447 sat each step, and combined with rolling optimization, it can be used for real-time application. (C) 2018 Hydrogen Energy Publications LLC. Published by Elsevier Ltd. All rights reserved.
机译:能源管理策略(EMS)是减少等效氢消耗并减缓插入式燃料电池混合动力电动汽车燃料电池性能下降的关键。基于全程信息的全局最优EMS可以实现最小的氢消耗,但是在实际驾驶中很难应用。本文试图通过提出一种新颖的分层EMS解决此问题,以实现实时应用和近似全局优化。通过KNN预测每个未来行程段的长期平均速度,并通过新的模型平均方法预测短期速度序列。通过引入分层强化学习(HRL)来实现近似全局优化,并且通过引入上置信度树搜索(UCTS)来优化速度预测窗口内的策略。车速预测和建议的EMS已使用收集的实际驾驶周期进行了验证。结果表明,所提出的策略可以通过自我学习来适应驾驶风格的变化。与广泛使用的基于规则的策略相比,它可以显着减少氢气消耗6.14%,并使燃料电池的起停时间平均减少21.7%,从而抑制了燃料电池的老化。此外,它的计算时间少于每步0.447 sat,并结合滚动优化,可用于实时应用。 (C)2018氢能出版物有限公司。由Elsevier Ltd.出版。保留所有权利。

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