Developing a Logistic Regression Method for Valuation of Grid-Level Energy Storage Systems

Jacquelynne Hernández, A. Etemadi, Samuel Roberts-Baca, Venkat Koushik Muthyapu
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引用次数: 1

Abstract

Logistic regression models can serve as important tools in developing a framework to establish the value of electrical energy storage systems (ESSs). This study provides models that aggregate use-case scenarios of five battery types, as well as pumped hydro-electric storage systems. The grid applications include: bulk energy at generation, auxiliary services at transmission and distribution, and end-use customer services at distributed generation. The data is derived from 1,261 real world systems. Five different models were developed for short, medium, and long-duration grid services. The models are designed to be technology agnostic and are not sensitive to either performance characteristics or operating conditions of the ESS. The results indicate the probability that an energy storage project will provide an individual service use case given that it may also yield another service, and how technology types and multiple selected applications influence those probabilities.
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并网级储能系统评估的逻辑回归方法研究
逻辑回归模型可以作为开发框架的重要工具,以建立电力储能系统(ess)的价值。该研究提供了五种电池类型和抽水蓄能水力发电系统的综合用例模型。电网应用包括:大宗能源发电、输配电辅助服务和分布式发电终端用户服务。数据来源于1261个真实世界的系统。针对短期、中期和长期网格服务开发了五种不同的模型。这些模型被设计为技术不可知论,对ESS的性能特征或操作条件不敏感。结果表明,储能项目将提供单个服务用例的可能性,因为它也可能产生另一种服务,以及技术类型和多种选择的应用如何影响这些可能性。
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