Wavelet Transform Technique for Denoising of UHF PD Signals in GIS

S. Sagar, J. Amarnath, S. Narasimham
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引用次数: 4

Abstract

Reliable operation of HV equipment in gas insulated substations (GIS) is undermined by insulation defects and particle presence. Partial discharge (PD) monitoring is one of the most effective techniques for insulation condition assessment of HV power apparatus. However, on-line PD measurements are affected by high levels of electromagnetic interference (EMI) that makes sensitive PD detection very difficult. Partial discharge monitoring system by UHF method is suitable for internal condition diagnosis of GIS due to its high sensitivity. However, interferences from noise sources such as corona and radio-frequency noise can affect the signal captured. Recovery of the PD signal by de-noising without degradation can be carried out through the application of wavelet transform by choosing the correct member of the wavelet family. Use of wavelet transform technique offers many advantages over conventional signal processing techniques such as filters and is ideally suited to process transients in high voltage testing and measurements. In this paper PD pulse extraction from noise by wavelet transform analysis through the choice of optimum wavelet transform is investigated. PD pulses and the noisy on-site testing environment were simulated through Gaussian white noise for applying the technique.
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GIS中超高频PD信号去噪的小波变换技术
气体绝缘变电站高压设备的可靠运行受到绝缘缺陷和颗粒存在的影响。局部放电监测是高压电力设备绝缘状态评估的有效手段之一。然而,在线PD测量受到高水平电磁干扰(EMI)的影响,使得敏感的PD检测非常困难。超高频局部放电监测系统灵敏度高,适用于GIS的内部状态诊断。然而,来自诸如电晕和射频噪声等噪声源的干扰会影响捕获的信号。通过选择正确的小波族成员,应用小波变换对PD信号进行去噪而不退化的恢复。使用小波变换技术比传统的信号处理技术(如滤波器)有许多优点,非常适合处理高压测试和测量中的瞬态。本文通过小波变换分析,研究了PD脉冲噪声提取的最佳小波变换选择。为了应用该技术,利用高斯白噪声对PD脉冲和有噪声的现场测试环境进行仿真。
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