Applications of compressed sensing and sparse representations for state estimation in power systems

I. Rozenberg, Y. Levron
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引用次数: 5

Abstract

Compressed sensing is an emerging signal processing method that finds applications in diverse estimation problems. This paper shows that power systems events may be analyzed in terms of sparse structures, especially if the probability of their occurrence within a power network is low. The paper presents several examples for such events, and suggests methods for locating them within large power systems using few measurements. Several types of sparse events are analyzed: faults, lightning strikes, polluting loads, and electricity thefts.
压缩感知和稀疏表示在电力系统状态估计中的应用
压缩感知是一种新兴的信号处理方法,可应用于各种估计问题。本文表明,电力系统事件可以根据稀疏结构进行分析,特别是当它们在电网内发生的概率较低时。本文给出了这类事件的几个例子,并提出了在大型电力系统中使用少量测量来定位它们的方法。本文分析了几种稀疏事件:故障、雷击、污染负载和窃电。
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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