实时电价环境下的最优定价策略:一个意大利案例研究

G. Pecoraro, S. Favuzza, M. Ippolito, G. Galioto, E. R. Sanseverino, E. Telaretti, G. Zizzo
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引用次数: 11

摘要

能源市场在过去十年中发生了根本性的变化,主要是由于可再生能源的渗透增加。现在终端用户可以直接进入能源市场,可以积极参与电力市场。电力客户确实可以通过需求响应(DR)来改变他们的行为,即通过支持最终用户习惯改变的定价策略。这可以通过“负载聚合器”来完成,负载聚合器是一个第三方,它收集来自市场和不同电力系统参与者的基于主动需求的服务的请求和信号。本文提出了一种新的框架,能够对电力用户的实时电价曲线进行最优选择。该算法以聚合器的经济效益最大化为目标函数,利用约束优化问题生成输出曲线。一个案例研究被执行,以显示所提出的方法的优点/缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal pricing strategies in real-time electricity pricing environments: An Italian case study
The energy market has changed radically over the last decade, mainly due to an increased penetration of renewable energies. Now the end users have directly access to the energy market and can actively take part to the electricity market. Electricity customers can indeed modify their behavior through Demand Response (DR), namely by means of pricing strategies that support a change in the end-users habits. This can be accomplished through a "loads aggregator", a third party that collects the requests and signals for Active Demand-based services coming from the markets and the different power system participants. This paper describes a new framework able to optimally select the real-time pricing curves for the electricity customers. The algorithm uses a constrained optimization problem to generates the output curves, by using as objective function the aggregator's economic benefit maximization. A case study is performed to show the advantages/disadvantages of the proposed approach.
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