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Day ahead and intraday stochastic decision model for EV charging points

机译:电动汽车充电点的前一天和盘中随机决策模型

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The paper details a stochastic programming model to optimize decisions on battery charging and Grid ancillary services at Electric Vehicle (EV) Charging Points. First and second decision stages deal with stochasticity on EV staying pattern. Day-ahead and Intraday electric markets are included respectively as first and second stages for energy and reserves prices. Day-Ahead decisions — first stage — are hourly energy purchases and sales and, also upward-downward reserve sales. Intraday decisions — second stage — deals with different scenarios of vehicle staying and supplying reserves. The global objective function prioritizes supplying energy to EV batteries and at the same time minimizes the net expected energy cost at the EV Charging Point taking into account energy and reserve markets. A 50 plug-in vehicle parking is analyzed with household, commercial and mixed staying patterns and several stochastic arrival-departure scenarios. Output comparison is shown between Day-Ahead and Intraday decisions and resulting average cost per kWh.
机译:本文详细介绍了一种随机编程模型,用于优化电动汽车(EV)充电点的电池充电和电网辅助服务的决策。第一和第二决策阶段处理电动汽车停留模式的随机性。日前和日内电力市场分别作为能源和储备价格的第一阶段和第二阶段。日前决策(第一阶段)是每小时的能源购买和销售,以及向上和向下的储备销售。盘中决策(第二阶段)处理车辆停留和供应储备的不同情况。全球目标函数优先考虑向EV电池供电,同时考虑到能源和储备市场,将EV充电点的净预期能源成本降至最低。分析了50种插入式停车位,其中包括家庭,商业和混合停留模式以及几种随机到达/离开场景。显示提前日和日内决策之间的输出比较以及由此产生的平均每千瓦时成本。

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