EPSO在智能电网天气导数合约模型设计中的应用

H. Mori, H. Fujita
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引用次数: 3

摘要

本文提出了一种设计智能电网中各电力公司间天气导数合约模型的有效方法。众所周知,天气状况带来利润下降或费用增加,对健全的管理造成损害。天气衍生品对解决这类问题很有用。其中一个想法是利用电力公司和天然气公司之间的互补关系,即电力公司在炎热的夏季容易盈利,而天然气公司倾向于减少收入。本文主要研究如何建立一个合理的天气导数合约模型。本文将元启发式的进化粒子群算法应用于天气导数的契约模型设计。该方法旨在平衡电力公司和天然气公司之间的平均和方差。为了提高模型的精度,采用全局聚类的DA聚类方法对历史数据进行聚类。通过日本东京的实际数据验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of EPSO to designing a contract model of weather derivatives in Smart Grid
This paper proposes an efficient method for designing a contract model of the weather derivatives between energy utilities in Smart Grid. It is well-known that the weather conditions bring a profit decline or the increase of expenses to do damage to sound management. Weather derivatives are useful for solving such a problem. One of the ideas is to use the complementary relationship between electric power and gas companies in a sense that electric power companies are apt to make profits in hot summer while gas companies are inclined to reduce revenue. This paper focuses on how to create a reasonable contract model of the weather derivative. In this paper, EPSO (Evolutionary Particle Swarm Optimization) of meta-heuristics is applied to designing a contract model of the weather derivative. The proposed method aims at equalizing the mean and the variance of the payoffs between the power and gas companies. To enhance the model accuracy, DA clustering of global clustering is used to classify the historical data into clusters. The effectiveness of the proposed method is demonstrated for the real data in Tokyo, Japan.
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