A multi-hypothesis sequential probability test for partial discharges localization in power transformers

Wasim M. F. Al-Masri, M. Abdel-Hafez, A. El-Hag
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引用次数: 2

Abstract

We present a new method to accurately locate partial discharge by using a sequential fault detection and identification (FDI) algorithm for detecting a bias fault in the measurements of partial discharge in transformer insulation system using acoustic signals. In this paper, a novel technique is proposed to identify the possibility of measurement errors generated from acoustic emission sensors during partial discharge localization inside a transformer tank. The technique probabilistically detects and identifies possible bias on the sensors' measurement. This bias is possibly caused by sensor's fault, sensor's aging, or proximity of the PD to a certain sensor in comparison to other sensors. Correct detection of sensors' measurement bias enables high accuracy PD localization as will be demonstrated in this paper. The accuracy and convergence characteristics of the proposed algorithm are verified in a simulation environment. This study is tremendously important for scheduling and starting maintenance/repair actions cost and time efficiently or to perform a risk analysis.
电力变压器局部放电局部化的多假设序列概率检验
本文提出了一种利用声信号检测变压器绝缘系统局部放电中偏置故障的时序故障检测与识别(FDI)算法来精确定位局部放电的新方法。本文提出了一种新的方法来识别声发射传感器在局部放电定位过程中产生的测量误差。该技术可以概率地检测和识别传感器测量中可能存在的偏差。这种偏差可能是由传感器故障、传感器老化或PD与其他传感器相比靠近某个传感器引起的。正确检测传感器的测量偏差可以实现高精度PD定位,本文将对此进行说明。仿真环境验证了该算法的精度和收敛性。这项研究对于有效地安排和启动维护/维修行动的成本和时间或执行风险分析非常重要。
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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