为参与 PJM 市场的电池储能系统服务的新型频率调节情景发电方法

Energies Pub Date : 2024-07-15 DOI:10.3390/en17143479
Yichao Zhang, A. Anvari‐Moghaddam, S. Peyghami, F. Blaabjerg
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引用次数: 0

摘要

作为最大的频率调节市场之一,宾夕法尼亚州-新泽西州-马里兰州互联(PJM)市场允许电池储能系统(BESS)广泛接入。所设计的信号调节 D (RegD) 可与斜率较快但能量有限的 BESS 配合使用。在这一市场中,设计运行策略和优化 BESS 的大小在很大程度上受到调节信号的影响。为了体现 RegD 信号固有的随机性并减轻计算负担,通常会生成分辨率较低的典型频率调节方案。然而,由于 RegD 信号的快速变化和能量中性,生成准确且具有代表性的情景给基于形状相似性的方法带来了挑战。本文提出了一种基于概率的新方法来生成典型的调节情景。该方法依赖于从分辨率为 2 秒的 RegD 信号中提取的两个分辨率为 15 分钟的特征的联合概率分布。这两个特征可以有效地描述 RegD 信号的特征及其对 BESS 运行的影响。首先根据这些特征的联合概率分布生成多个调节方案,然后根据其概率分布与实际分布的相似度选择最终的典型方案。本文利用 2020 年 PJM 市场的调节数据,验证并分析了生成的典型情景与现有方法(特别是 K-means 聚类和前向情景还原法)的性能比较。
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Novel Frequency Regulation Scenarios Generation Method Serving for Battery Energy Storage System Participating in PJM Market
As one of the largest frequency regulation markets, the Pennsylvania-New Jersey-Maryland Interconnection (PJM) market allows extensive access of Battery Energy Storage Systems (BESSs). The designed signal regulation D (RegD) is friendly for use with BESSs with a fast ramp rate but limited energy. Designing operating strategies and optimizing the sizing of BESSs in this market are significantly influenced by the regulation signal. To represent the inherent randomness of the RegD signal and reduce the computational burden, typical frequency regulation scenarios with lower resolution are often generated. However, due to the rapid changes and energy neutrality of the RegD signal, generating accurate and representative scenarios presents challenges for the methods based on shape similarity. This paper proposes a novel probability-based method for generating typical regulation scenarios. The method relies on the joint probability distribution of two features with a 15-min resolution, extracted from the RegD signal with a 2 s resolution. The two features can effectively portray the characteristic of RegD signal and its influence on BESS operation. Multiple regulation scenarios are generated based on the joint probability distributions of these features at first, with the final typical scenarios chosen based on their probability distribution similarity to the actual distribution. Utilizing regulation data from the PJM market in 2020, this paper validates and analyzes the performance of the generated typical scenarios in comparison to existing methods, specifically K-means clustering and the forward scenarios reduction method.
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