A decentralized control strategy for optimal charging of electric vehicle fleets with congestion management

Raffaele Carli, M. Dotoli
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引用次数: 13

Abstract

This paper proposes a novel decentralized control strategy for the optimal charging of a large-scale fleet of Electric Vehicles (EVs). The scheduling problem aims at ensuring a cost-optimal profile of the aggregated energy demand and at satisfying the resource constraints depending both on power grid components capacity and EV locations in the distribution network. The resulting optimization problem is formulated as a quadratic programming problem with a coupling of decision variables both in the objective function and in the inequality constraints. The solution approach relies on a decentralized optimization algorithm that is based on a variant of ADMM (Alternating Direction Method of Multipliers), adapted to take into account the inequality constraints and the non-separated objective function. A simulated case study demonstrates that the approach allows achieving both the overall fleet and individual EV goals, while complying with the power grid congestion limits.
基于拥堵管理的电动汽车最优充电分散控制策略
针对大型电动汽车的最优充电问题,提出了一种新的分散控制策略。调度问题的目的是确保总能源需求的成本最优,并满足取决于电网组件容量和电动汽车在配电网中的位置的资源约束。所得到的优化问题被表述为一个具有目标函数和不等式约束的决策变量耦合的二次规划问题。求解方法依赖于一种基于ADMM(乘数交替方向法)变体的分散优化算法,该算法适应于考虑不等式约束和非分离目标函数。一个模拟案例研究表明,该方法可以在满足电网拥堵限制的情况下,同时实现整个车队和单个电动汽车的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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