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Optimization of plug-in electric vehicle charging with forecasted price

机译:预测价格的插电式电动汽车充电优化

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This paper proposes a new method for scheduling the charging of plug-in electric vehicle's (PEV) battery. The method is employed in the demand side management of smart grids and has the goal of reducing the cost of charging over a long time horizon. The problem of scheduling the PEV battery charging is modeled as a Markov decision process with unknown transition probabilities. A fitted Qiteration batch reinforcement learning algorithm with kernel-based approximation of the value iteration is proposed for learning the transition dynamics and solving the charging problem. The solution is obtained based on the knowledge of the true day-ahead electricity prices and predicted prices for the second day ahead. Simulation results using true pricing data demonstrate cost savings of 8%-40% for the consumer.
机译:本文提出了一种用于安排插电式电动汽车(PEV)电池充电的新方法。该方法用于智能电网的需求侧管理中,其目的是在很长的时间内降低充电成本。计划PEV电池充电的问题被建模为具有未知过渡概率的马尔可夫决策过程。提出了一种基于核的近似值迭代的拟合Qitation批量补强学习算法,以学习过渡动力学和解决计费问题。该解决方案是基于对真实的日前电价和未来第二天的预测价格的了解而获得的。使用真实定价数据进行的仿真结果表明,为消费者节省了8%-40%的成本。

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