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Electric Signature Detection and Analysis for Power Equipment Failure Monitoring in Smart Grid

机译:智能电网电力设备故障监控电力签名检测与分析

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摘要

Power equipment is one kind of basic element in smart grid, and how to design an efficient detection and analysis scheme of electric signature (ES) for power equipment failure (PEF) monitoring is a key and challenging issue. This article proposes an ES detection and analysis method which can monitor multiple kinds of PEF in smart substation. The bottleneck of ES analysis is explored in the view of Heisenberg uncertainty, and an optimal time-frequency analysis method is designed to solve the problems. The proposed method (PM) is based on union of time and frequency bases whose decomposition is realized by Bayesian compressive sensing using Laplace prior. Simulated and field ESs are employed to test PM with comparisons of existing methods. Also, PM is applied in a smart substation of China. Several typical PEFs and measurement soft failures caused by electromagnetic interference are discussed. The results indicate that the PM can accurately monitor PEFs whose mechanism can be revealed by time-frequency features of ESs, if the required sampling rate and sampling time are satisfied because of its immunity of the uncertainty principle restriction. The robustness in noise environment and optimal time-frequency representation of ESs make the PM an efficient general-purpose PEF monitoring in smart grid by time-frequency analysis.
机译:电力设备是智能电网中的一种基本元素,以及如何为电力设备故障(PEF)监测设计有效检测和分析方案,是一个关键和具有挑战性的问题。本文提出了ES检测和分析方法,可以监控智能变电站中多种PEF。在Heisenberg不确定性的角度来看,勘探ES分析的瓶颈,并且旨在解决问题来解决问题。所提出的方法(PM)基于时间和频率底座的结合,其分解由贝叶斯抗压感测使用LAPPAlt先前实现。模拟和现场ESS用于测试PM与现有方法的比较。此外,PM应用于中国的智能变电站。讨论了由电磁干扰引起的几种典型PEF和测量软件。结果表明PM可以准确地监测PEF,如果所需的采样率和采样时间由于其不确定性原理限制而满足所需的采样率和采样时间,则可以通过ESS的时频特征来揭示其机制。 ESS噪声环境的鲁棒性和ESS的最佳时频表示通过时频分析使PM在智能电网中进行高效的通用PEF监测。

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