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Reinforcement Learning-Based Plug-in Electric Vehicle Charging With Forecasted Price

机译:预测价格的基于强化学习的插电式电动汽车充电

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This paper proposes a novel demand response method that aims at reducing the long-term cost of charging the battery of an individual plug-in electric vehicle (PEV). The problem is cast as a daily decision-making problem for choosing the amount of energy to be charged in the PEV battery within a day. We model the problem as a Markov decision process (MDP) with unknown transition probabilities. A batch reinforcement-learning (RL) algorithm is proposed for learning an optimum cost-reducing charging policy from a batch of transition samples and making cost-reducing charging decisions in new situations. In order to capture the day-to-day differences of electricity charging costs, the method makes use of actual electricity prices for the current day and predicted electricity prices for the following day. A Bayesian neural network is employed for predicting the electricity prices. For constructing the RL training dataset, we use historical prices. A linear-programming-based method is developed for creating a dataset of optimal charging decisions. Different charging scenarios are simulated for each day of the historical time frame using the set of past electricity prices. Simulation results using real-world pricing data demonstrate cost savings of 10%–50% for the PEV owner when using the proposed charging method.
机译:本文提出了一种新颖的需求响应方法,旨在降低单个插电式电动汽车(PEV)电池的长期充电成本。该问题被视为每日决策问题,用于选择一天之内要在PEV电池中充电的电量。我们将问题建模为具有未知转移概率的马尔可夫决策过程(MDP)。提出了一种批量强化学习算法,用于从一批过渡样本中学习最优的降低成本的计费策略,并在新的情况下制定降低成本的计费决策。为了捕获电费成本的日常差异,该方法利用了当日的实际电价和次日的预测电价。贝叶斯神经网络用于预测电价。为了构建RL训练数据集,我们使用历史价格。开发了一种基于线性编程的方法来创建最佳充电决策的数据集。使用过去的电价集,针对历史时间段的每一天模拟不同的充电方案。使用实际定价数据进行的仿真结果表明,使用建议的收费方法,PEV所有者可以节省10%至5​​0%的成本。

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