零售市场环境下需求响应的需求弹性模型的建立

M. Babar, P. Nguyen, V. Ćuk, I. Kamphuis
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引用次数: 27

摘要

在能源市场自由化的背景下,分布式发电、存储和需求响应的增加扩大了需求的价格弹性,从而给电力系统的供需链增加了不确定性。为了应对非捆绑电力市场下需求不确定性的挑战,零售市场环境下市场控制机制(MCM)的概念应运而生。本文提出了将需求弹性视为零售市场环境下创造竞价机制的机会的概念。本文将需求弹性模型构建为一个马尔可夫决策问题,并将追求算法作为一种机器学习技术,通过预测价格来评估需求的价格弹性。将该算法的性能与给定仿真设置下需求价格弹性的数值计算结果进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The development of demand elasticity model for demand response in the retail market environment
In the context of liberalized energy market, increase in distributed generation, storage and demand response has expanded the price elasticity of demand, thus causing the addition of uncertainty to the supply-demand chain of power system. In order to cope with the challenges of demand uncertainty under the unbundled electricity market, the concept of Market-based Control Mechanism (MCM) in retail market environment has been emerging. This paper presents the concept considering demand elasticity as an opportunity in retail market environment for inventing a new bid mechanism. This work formulates demand elasticity model as a Markov decision problem and implements pursuit algorithm as a machine learning technique to evaluate the price elasticity of demand by predicting the price. The performance of the algorithm is compared with the numerical calculation of price elasticity of demand for the given simulation settings.
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