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Charging Policies for PHEVs used for Service Delivery: A Reinforcement Learning Approach

机译:用于服务交付的插电式混合电动汽车的充电政策:一种强化学习方法

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This work examines a cost optimization problem for plug-in hybrid electric vehicles (PHEVs) used for service delivery, in the presence of energy consumption uncertainty. For the cost optimization problem, an optimal policy is found that dynamically decides, as the vehicle moves, at which charging station the vehicle should be charged, in order to minimize the service fuel cost. The problem is formulated as a Partially Observable Markov Decision Process (POMDP) and is solved by applying reinforcement learning (RL). The RL charging policy (RLCP), found after solving the POMDP, is compared to two benchmark policies and it is shown that RLCP outperforms both. Most importantly, RLCP can be automatically adjusted to significant variations on the vehicle's energy consumption behavior by continuously training the RLCP model according to the most recent information obtained from the vehicle's environment.
机译:这项工作研究了在存在能耗不确定性的情况下用于服务交付的插电式混合动力汽车(PHEV)的成本优化问题。对于成本优化问题,找到了一种最佳策略,该策略可以在车辆移动时动态地决定应在哪个充电站充电,以使服务燃料成本降至最低。该问题被表述为部分可观察的马尔可夫决策过程(POMDP),并通过应用强化学习(RL)得以解决。将解决POMDP之后发现的RL收费策略(RLCP)与两个基准策略进行比较,结果表明RLCP优于两者。最重要的是,根据从车辆环境获得的最新信息,通过不断训练RLCP模型,可以自动将RLCP调整为车辆能耗行为的重大变化。

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