智能电网中聚合器最优定价策略设计

Xue Lin, Yanzhi Wang, Massoud Pedram
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引用次数: 6

摘要

实时电价政策可以激励电力用户动态改变或转移其用电量,从而提高电网的可靠性。在智能电网基础设施中,电力供应商和用户之间的聚合器通过动态设定电价来控制用户的用电量。本工作旨在通过设计实时定价策略,使聚合器在计费周期内的总利润最大化。聚合器预先宣布整个计费周期的定价策略,然后在计费周期的每个时间段内,用电用户(即住宅用户和电动汽车用户)基于当前时间段内的定价模型和对其他用户行为的感知,尝试最大化自己的效用函数。首先,在计费周期的每个时间间隔内,我们建立了聚合器和用户之间的嵌套两阶段博弈,其中可以找到子博弈的完美均衡。在此基础上,提出了一种基于逆向归纳法的动态规划算法,推导出使聚合器整体利润最大化的最优实时定价策略。与其他工程不同的是,电池储能系统(BESS)与聚合器集成,以缓冲供需不匹配,提高电网的可靠性。更重要的是,这项工作从全局的角度推导出了聚合器的最优定价策略,考虑了BESS在计费期内的能量状态变化。仿真结果表明,最优定价策略可使聚合器的整体利润提高24.3%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing the Optimal Pricing Policy for Aggregators in the Smart Grid
The real-time pricing policy can incentivize the electricity users to dynamically change or shift their electricity consumption, thereby improving reliability of the grid. In the smart grid infrastructure, aggregators between the electricity suppliers and users control the users' electricity consumption by dynamically setting electricity price. This work aims at maximizing the overall profit of an aggregator in a billing period by designing a real-time pricing policy. The aggregator pre-announces a pricing policy for an entire billing period, then in each time interval of the billing period, the electricity users (i.e., both residential and EV users) try to maximize their own utility functions based on the pricing model in the current time interval and the awareness of the other users' behaviors. We first formulate a nested two-stage game between the aggregator and the users for each time interval in a billing period, in which the sub game perfect equilibrium can be found. Then, based on backward induction, a dynamic programming algorithm is presented to derive the optimal real-time pricing policy for maximizing the aggregator's overall profit. Different from other works, a battery energy storage system (BESS) is integrated with the aggregator to buffer the mismatch between supply and demand and to improve reliability of the grid. More importantly, this work derives the optimal pricing policy for an aggregator from a global point of view, taking into account the BESS energy state variation in a billing period. Simulation results show that the optimal pricing policy can achieve up to 24.3% improvement on the aggregator's overall profit.
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