论文标题
自适应充电网络:智能电动汽车充电框架
Adaptive Charging Networks: A Framework for Smart Electric Vehicle Charging
论文作者
论文摘要
我们描述了自适应充电网络(ACN)的架构和算法,该网络于2016年初首次部署在加州理工学院校园,目前在美国其他100多个地点运行。该体系结构可实时监视和控制并支持电动汽车(EV)充电。 ACN基于凸优化和模型预测控制,采用灵活的自适应调度算法,并允许对电气基础架构的显着过多订阅。我们描述了实际充电系统中的一些实际挑战,包括不平衡的三相基础架构,非理想的电池充电行为和量化的控制信号。我们演示了自适应调度算法如何处理这些挑战,并使用Caltech ACN和准确的系统模型中记录的实际工作负载将其性能与基线算法进行比较。我们发现,在这些现实的环境中,我们的调度算法可以在不受控制的充电中提高运营商的利润3.4倍,并且在交付高度拥挤的系统中提供能源时始终优于基线算法。
We describe the architecture and algorithms of the Adaptive Charging Network (ACN), which was first deployed on the Caltech campus in early 2016 and is currently operating at over 100 other sites in the United States. The architecture enables real-time monitoring and control and supports electric vehicle (EV) charging at scale. The ACN adopts a flexible Adaptive Scheduling Algorithm based on convex optimization and model predictive control and allows for significant over-subscription of electrical infrastructure. We describe some of the practical challenges in real-world charging systems, including unbalanced three-phase infrastructure, non-ideal battery charging behavior, and quantized control signals. We demonstrate how the Adaptive Scheduling Algorithm handles these challenges, and compare its performance against baseline algorithms from the deadline scheduling literature using real workloads recorded from the Caltech ACN and accurate system models. We find that in these realistic settings, our scheduling algorithm can improve operator profit by 3.4 times over uncontrolled charging and consistently outperforms baseline algorithms when delivering energy in highly congested systems.