Identification of Three Phase Transformer Abnormal Conditions Using Wavelet Entropy

A. Al-Zaben, W. Abu-Elhaija, M. Alomoush
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Abstract

Traditionally, power system signals have been analyzed by techniques based on Fourier transform and fast Fourier transform for the purposes of identifying abnormal conditions and power quality issues. Distinguishing the inrush currents and fault currents in power transformers is an essential task for protection purposes. Detecting, discriminating and severity ranking of different unbalanced conditions of power transformers may prevent damage of transformers and supplied loads. The paper presents a wavelet-based approach to analyze the inrush currents of a three-phase power transformer in order to detect and rank severity of anticipated unbalanced conditions. As will be shown by the simulated results, the paper reveals that wavelet entropy, which has been adopted in this paper, is a reliable and an efficient tool that facilitates the accurate discrimination of abnormalities in transformer currents and to investigate the unbalanced conditions.
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基于小波熵的三相变压器异常状态识别
传统的电力系统信号分析方法是基于傅立叶变换和快速傅立叶变换的技术,目的是识别异常情况和电能质量问题。区分电力变压器的涌流和故障电流是电力变压器保护的一项重要任务。对电力变压器的各种不平衡状态进行检测、判别和分级,可以防止变压器和供电负荷的损坏。本文提出了一种基于小波的方法来分析三相电力变压器的涌流,以检测和排序预期不平衡状态的严重程度。仿真结果表明,本文所采用的小波熵是一种可靠、有效的工具,可以准确识别变压器电流异常,研究不平衡状况。
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