Clustering-based negotiation profiles definition for local energy transactions

Angelo Pinto, T. Pinto, Isabel Praça, Z. Vale, P. Faria
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引用次数: 1

Abstract

Electricity markets are complex and dynamic environments, mostly due to the large scale integration of renewable energy sources in the system. Negotiation in these markets is a significant challenge, especially when considering negotiations at the local level (e.g., between buildings and distributed energy resources). It is essential for a negotiator to be able to identify the negotiation profile of the players with whom he is negotiating. If a negotiator knows these profiles, it is possible to adapt the negotiation strategy and get better results in a negotiation. In order to identify and define such negotiation profiles, a clustering process is proposed in this paper. The clustering process is performed using the kml-k-means algorithm, in which several negotiation approaches are evaluated in order to identify and define players’ negotiation profiles. A case study is presented, using as input data, information from proposals made during a set of negotiations. Results show that the proposed approach is able to identify players’ negotiation profiles used in bilateral negotiations in electricity markets.
本地能源事务的基于集群的协商概要定义
电力市场是一个复杂而动态的环境,主要是由于可再生能源在系统中的大规模整合。在这些市场中进行谈判是一项重大挑战,特别是在考虑地方一级的谈判时(例如,建筑物和分布式能源之间的谈判)。对于谈判人员来说,能够识别与他谈判的球员的谈判概况是至关重要的。如果谈判者了解这些特征,就有可能调整谈判策略,在谈判中获得更好的结果。为了识别和定义这些协商轮廓,本文提出了一个聚类过程。聚类过程使用kml-k-means算法执行,其中评估了几种谈判方法,以识别和定义玩家的谈判概况。本文介绍了一个案例研究,使用一系列谈判期间提出的建议的信息作为输入数据。结果表明,所提出的方法能够识别电力市场双边谈判中参与者的谈判概况。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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