论文标题
在动态变压器等级下的电动车队充电的分布式控制
Distributed Control of Charging for Electric Vehicle Fleets under Dynamic Transformer Ratings
论文作者
论文摘要
由于它们的大量功率和采用率的提高,电动汽车(EV)将成为电网电网的重大挑战。但是,通过适当的充电控制策略,可以减轻挑战,而无需昂贵的电网增援。该手稿介绍并分析了新的分布式充电控制方法,以协调非线性变压器温度评级下的EV充电。具体而言,我们根据基于基础非线性变压器温度动力学的凸放松,评估所需的数据通信,计算效率和最佳保证之间的权衡。将经典的分布式控制方法(例如基于双重分解和乘数的交替方向方法(ADMM))与新的增强的Lagrangian基于拉格朗日的交替方向不推迟牛顿(Aladin)方法和新型低信息,外观的分组能量管理(PEM)进行比较。这些算法对住宅和商业电动汽车舰队进行了两项案例研究进行了实施和分析。仿真结果验证了新方法,并提供了对关键权衡的见解。
Due to their large power draws and increasing adoption rates, electric vehicles (EVs) will become a significant challenge for electric distribution grids. However, with proper charging control strategies, the challenge can be mitigated without the need for expensive grid reinforcements. This manuscript presents and analyzes new distributed charging control methods to coordinate EV charging under nonlinear transformer temperature ratings. Specifically, we assess the trade-offs between required data communications, computational efficiency, and optimality guarantees for different control strategies based on a convex relaxation of the underlying nonlinear transformer temperature dynamics. Classical distributed control methods such as those based on dual decomposition and alternating direction method of multipliers (ADMM) are compared against the new Augmented Lagrangian-based Alternating Direction Inexact Newton (ALADIN) method and a novel low-information, look-ahead version of packetized energy management (PEM). These algorithms are implemented and analyzed for two case studies on residential and commercial EV fleets. Simulation results validate the new methods and provide insights into key trade-offs.