现实世界大规模电动汽车充电的一种高效贪心算法

Marius Hegele, Philipp Metzler, Sebastian Beichter, Friedrich Wiegel, V. Hagenmeyer
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引用次数: 0

摘要

越来越多的电动汽车的使用扩大了对可负担的充电基础设施的需求。通过智能充电的应用,大型交流充电器设施的运营商可以节省安装成本,并通过避免高峰和不平衡负载来减轻配电网的负荷。在本文中,我们考虑了非理想充电特性背景下的相平衡问题:一些电动汽车对电网表示不平衡负载,而一些电动汽车以意想不到的非线性方式对输入作出反应。此外,用户期望有限的充电功率得到公平分配。鉴于此,我们正式描述了公平性,选择实时控制负载,并将智能充电建模为时间离散背包问题。为了保证相位对称和提高充电效率,我们开发了一个真实的电流测量滤波器,并利用它用分支定界算法求解问题,用贪心算法逼近解。在基于实际充电数据的代表性仿真中,对这些方案进行了比较。此外,我们在多达100个充电点的真实充电基础设施上评估了贪婪算法。结果表明,贪心算法使用充电行为度量保证了容量约束和对称性约束,并表现出相对足够的公平充电效率和对资源受限硬件计算的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Efficient Greedy Algorithm for Real-World Large-Scale Electric Vehicle Charging
The increasing use of electric vehicles amplifies the demand for affordable charging infrastructure. By smart charging applications, operators of large-scale facilities of AC chargers can save costs on installation and lighten the load on distribution grids by avoiding high peaks and unbalanced loads. In the present paper, we consider the problem of phase-balancing in the context of non-ideal charging characteristics: some electric vehicles represent unbalanced loads to the grid, and some react to inputs in an unexpected nonlinear fashion. Furthermore, users expect a fair distribution of the limited charging power. In this light, we formally characterize fairness, choose to control load in real time and model smart charging as a time-discrete knapsack problem. In order to guarantee phase symmetry and increase charging efficiency, we develop a real current measurement filter and use it to solve the problem using a branch-and-bound algorithm and to approximate solutions with a greedy algorithm. We compare these solutions in representative simulations based on real charging data. Additionally, we evaluate the greedy algorithm on real charging infrastructure with up to 100 charging points. We conclude from the results that the greedy algorithm using measurements of charging behavior guarantees capacity and symmetry constraints and demonstrates comparatively adequate fair charging efficiency and applicability to computation on resource-constrained hardware.
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