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Optimization based AIMD saturated algorithms for public charging of electric vehicles

机译:基于优化的AIMD饱和算法的电动汽车公共充电

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摘要

The Additive Increase Multiplicative Decrease (AIMD) algorithm is an interesting approach in congestion control of communication networks, as it maintains the good features of a distributed strategy, without sacrificing the network stability and robustness. Recent applications of these algorithms also concern other industrial fields such as Electric Vehicles (EVs) based transportation systems, for which the introduction of an optimal charging policy is an important challenge for power systems operation. Moreover, saturation constraints on the resource allocated to each vehicle need to be taken into account in order to avoid peak power requirements and grid overloads. Optimization based AIMD algorithms with saturation constraints are proposed in this paper for public charging of EVs. Specifically, a new AIMD approach is presented in order to capture the main advantages of optimal algorithms which minimize either the sum of charging times or the operation time of each vehicle, giving rise to a mixed AIMD strategy. Simulation results illustrate the performance of the proposal, even in comparison to the corresponding centralized optimal solutions. (C) 2018 European Control Association. Published by Elsevier Ltd. All rights reserved.
机译:可加增乘减(AIMD)算法在通信网络的拥塞控制中是一种有趣的方法,因为它在不牺牲网络稳定性和鲁棒性的前提下保持了分布式策略的良好功能。这些算法的最新应用还涉及其他工业领域,例如基于电动汽车(EV)的运输系统,为此引入最佳充电策略是电力系统运行的重要挑战。而且,为了避免峰值功率需求和电网过载,需要考虑分配给每个车辆的资源的饱和约束。提出了基于饱和约束的AIMD优化算法,用于电动汽车的公共充电。具体而言,提出了一种新的AIMD方法,以捕捉优化算法的主要优点,该算法可将每辆车的充电时间之和或运行时间之和最小化,从而产生混合AIMD策略。仿真结果说明了该建议的性能,即使与相应的集中式最佳解决方案相比也是如此。 (C)2018欧洲控制协会。由Elsevier Ltd.出版。保留所有权利。

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