基于反向拍卖的需求响应方案:一种诚实互利的机制

A. R. Khamesi, S. Silvestri
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引用次数: 4

摘要

高峰负荷时段的电力需求匹配是电力系统中一个众所周知的问题。事实上,由于需要启动备用发电机和加强输电系统,当需求高时,发电成本会迅速增加。基于激励的需求响应(DR)计划是一种新的方法,它是由智能电网技术的最新进展所实现的,旨在解决这类问题。DR认为,公用事业公司可以向用户提供经济激励,以便在高峰时段暂时减少他们的能源消耗。然而,确定分配这种奖励的程序以及确保用户充分参与和满意以使DR计划有效是具有挑战性的。在本文中,我们提出了一种反向拍卖机制来实现基于激励的DR计划。我们将DR反向拍卖制定为一个整数线性规划(ILP)问题,该问题集成了感知价值效用,以模拟用户对电器的感知以及公用事业公司的财务目标。我们采用了一种基于Vickrey-Clarke-Groves (VCG)的反向拍卖机制来保证真实性和个体合理性。由于VCG拍卖需要最优解决NP-Hard ILP问题,我们提出了一种启发式算法——反向拍卖需求响应(RADAR),并证明了RADAR保持真实性。使用几个家庭的真实功耗数据进行的广泛模拟表明,RADAR在减少需求高峰方面有效,同时在用户感知效用方面优于以前的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reverse Auction-based Demand Response Program: A Truthful Mutually Beneficial Mechanism
Matching power demand during peak load hours is a well-known problem in power systems. In fact, the cost of producing electricity increases very rapidly when the demand is high, due to the need for starting backup generators and enhancing transmission system. Incentive-based Demand Response (DR) program is a new approach, enabled by recent advances in smart grid technologies, designed to deal with such problem. According to DR, the utility company can provide economical incentives to users in order to temporarily reduce their energy consumption during peak hours. It is, however, challenging to determine the procedure to distribute such incentives, as well as to ensure that users will be sufficiently engaged and satisfied to make the DR program effective. In this paper, we propose a reverse auction mechanism to enable an incentive-based DR program. We formulate the DR reverse auction as an integer linear programming (ILP) problem, which integrates a perceived-value utility, to model the user perception of electrical appliances, as well as the financial objectives of the utility company. We adopt a Vickrey-Clarke-Groves (VCG) based reverse auction mechanism to guarantee the truthfulness and individual rationality properties. Since the VCG auction requires to optimally solve the NP-Hard ILP problem, we propose a heuristic algorithm named Reverse Auction DemAnd Response (RADAR), and prove that RADAR preserves truthfulness. Extensive simulations using real power consumption data of several homes show that RADAR is effective in reducing demand peaks while outperforming previous solutions in terms of users’ perceived utility.
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