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Optimal scheduling of electrical vehicle charging under two types of steering signals

机译:两种转向信号下电动车辆充电的最佳调度

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The increasing penetration of electrical vehicles and plug-in hybrid electrical vehicles is causing an increasing load upon our residential distribution network. However, the charging of these vehicles is often shiftable in time to off-peak hours due to long parking times at a fixed location during the night. This implies that these vehicles offer great potential for use in demand side management. For scalability reasons, demand side management methodologies often apply steering signals to control appliances. These steering signals are used locally to generate a schedule for these appliances. In this paper we consider the problem of generating an optimal schedule for electrical vehicles based upon two types of steering signals; time-varying prices and a target profile. The local objective, to be minimized at the appliance side, is a weighted sum of the consumption cost implied by the prices and the squared deviation from the target profile. We show that, using the structure of the problem, an efficient algorithm of time complexity O(n log n) can be derived to solve the minimization problem to optimality. We implemented the algorithm in Matlab and tested it against a traditional convex optimization solver to verify its validity and efficiency. The resulting algorithm outperformed the convex solver by roughly four orders of magnitude. Furthermore, the very low computational time of the algorithm implies that it is suitable for being implemented on a low-cost local controller within a household or EV charging station.
机译:电气车辆和插入式混合动力电动车的普及率越来越高,导致我们的住宅配送网络上的负荷增加。然而,由于在夜间的固定位置的长停车时间,这些车辆的充电通常会随着时间的推移而在截止值。这意味着这些车辆在需求方管理中提供了很大的使用潜力。出于可扩展性原因,需求侧管理方法往往将转向信号应用于控制设备。本地使用这些转向信号以为这些设备产生时间表。在本文中,我们考虑了基于两种类型的转向信号产生电动车辆的最佳时间表的问题;时代的价格和目标个人资料。在电器侧最小化的本地目标是价格暗示的消费成本的加权之和,以及与目标配置文件的平方偏差。我们表明,使用问题的结构,可以导出有效的时间复杂度O(n log n)以解决最小化对最优性的问题。我们在MATLAB中实现了算法,并测试了传统的凸优化求解器,以验证其有效性和效率。由此产生的算法通过大约四个数量级的凸起求解器优于凸求。此外,算法的非常低的计算时间意味着它适用于在家庭或EV充电站内的低成本本地控制器上实现。

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