智能电网中分布式截止日期和可再生能源感知的电动汽车需求响应

Fanxin Kong, Xue Liu
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引用次数: 26

摘要

需求响应是未来智能电网的重要特征和功能。电动汽车由于其高充电需求和需求管理的灵活性,被认为是一个特别有前途的需求响应资源。最近,研究人员开始将基于市场的解决方案应用于电动汽车需求响应。然而,一个清晰的愿景仍然难以捉摸,因为现有的工作忽视了三个关键问题。(i)电动汽车(ev)、充电站和电力公司(epc)之间的层级关系。以前的研究假设电动汽车和epc之间有直接的相互作用,因此局限于单一层次的市场设计。由于忽略了充电站在层次结构中的作用,设计的机制在这里不适用。(ii)收费负荷的时间方面。仅仅关注经济方面会显著减少需求,但电动汽车最终会因为忽视时间限制而分配很少的电力。(iii)可再生能源发电与充电站共用。忽视可再生能源的不确定性的市场机制将在经济和时间方面造成很大的效率低下。为了解决这些问题,我们研究了一种新的需求响应方案,即通过充电站对电动汽车进行分层需求响应。我们提出两级营销适用于这种分层方案,并设计一种既符合电动汽车需求响应的经济性和时效性的分布式市场机制。市场机制具有层次化的决策结构,充电站主导市场,电动汽车跟随并响应充电站的行为。该机制的一个吸引人的特点是可证明的收敛到唯一的平衡解。在均衡状态下,充电站和电动汽车都不能通过改变各自的策略来提高各自的经济和/或时间性能。此外,我们提出了一种基于随机优化的算法来优化充电站在平衡状态下的经济性能,并给出了可再生能源发电的预测。该算法在预测误差方差方面有鲁棒性保证。最后通过详细的仿真对所设计的机构进行了评估。结果表明了其有效性,并验证了理论分析的机理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributed Deadline and Renewable Aware Electric Vehicle Demand Response in the Smart Grid
Demand response is an important feature and functionality of the future smart grid. Electric vehicles are recognized as a particularly promising resource for demand response given their high charging demand and flexibility in demand management. Recently, researchers begun to apply market-based solutions to electric vehicle demand response. A clear vision, however, remains elusive because existing works overlook three key issues. (i) The hierarchy among electric vehicles (EVs), charging stations, and electric power companies (EPCs). Previous works assume direct interaction between EVs and EPCs and thus confine to single-level market designs. The designed mechanisms are inapplicable here due to ignoring the role of charging stations in the hierarchy. (ii) Temporal aspects of charging loads. Solely focusing on economic aspects makes significant demand reduction, but electric vehicles would end up with little allocated power due to overlooking their temporal constraints. (iii) Renewable generation co-located with charging stations. Market mechanisms that overlook the uncertainty of renewable would cause much inefficiency in terms of both the economic and temporal aspects. To address these issues, we study a new demand response scheme, i.e, hierarchical demand response for electric vehicles via charging stations. We propose that two-level marketing is suitable to this hierarchical scheme, and design a distributed market mechanism that is compatible with both the economic and temporal aspects of electric vehicle demand response. The market mechanism has a hierarchical decision-making structure by which the charging station leads the market and electric vehicles follow and respond to its actions. An appealing feature of the mechanism is the provable convergence to a unique equilibrium solution. At the equilibrium, neither the charging station or electric vehicles can improve their individual economic and/or temporal performance by changing their own strategies. Furthermore, we present a stochastic optimization based algorithm to optimize economic performance for the charging station at the equilibrium, given the predictions of the co-located renewable generation. The algorithm has provable robust performance guarantee in terms of the variance of the prediction errors. We finally evaluate the designed mechanism via detailed simulations. The results show the efficacy and validate the theoretical analysis for the mechanism.
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