使用简单特征从PMU数据中检测多种类型事件的机器学习

T. Dokic, Rashid Baembitov, A. Hai, Zheyuan Cheng, Y. Hu, M. Kezunovic, Z. Obradovic
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引用次数: 3

摘要

本文描述了一种简单而高效的机器学习方法,用于有效检测几乎不放置在大型电网中的pmu捕获的多种类型的电力系统事件。它使用来自每个PMU的单个特征,这些特征基于将给定数据窗口中的事件包围起来的矩形区域。这一特性足以使常用的ML模型快速准确地检测不同类型的事件。该特性被五个ML模型用于四种不同的数据窗口大小。结果表明,在各种数据窗口大小选择中,执行速度和检测精度之间存在权衡。所提出的方法对来自现场pmu的数据的大多数典型数据质量问题不敏感,因此在特征提取之前不需要进行大量的数据清理工作。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Using a Simple Feature for Detecting Multiple Types of Events From PMU Data
This paper describes simple and efficient machine learning (ML) methods for efficiently detecting multiple types of power system events captured by PMUs scarcely placed in a large power grid. It uses a single feature from each PMU based on a rectangle area enclosing the event in a given data window. This single feature is sufficient to enable commonly used ML models to detect different types of events quickly and accurately. The feature is used by five ML models on four different data-window sizes. The results indicated a tradeoff between the execution speed and detection accuracy in variety of data-window size choices. The proposed method is insensitive to most data quality issues typical for data from field PMUs, and thus it does not require major data cleansing efforts prior to feature extraction.
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