Detection Of Voltage Sag And Voltage Swell In Power Quality Using Wavelet Transforms

N. Ramlee
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引用次数: 1

Abstract

Voltage sag, voltage swell, high-frequency noise and voltage transients are kinds of disturbances in power quality. They are also known as power quality events. Equipment used in the industry nowadays has become more sensitive to these events with the increasing complexity of equipment. This leads to the importance of distributing clean power quality to the consumer. To provide better service, the best analysis on power quality is very vital. Thus, this paper presents the events detection focusing on voltage sag and swell. The method is developed by applying time domain signal analysis using wavelet transform approach in MATLAB. Four types of mother wavelet namely Haar, Dmey, Daubechies, and Symlet are used to detect the events. This project analyzed real interrupted signal obtained from 22 kV transmission line in Skudai, Johor Bahru, Malaysia. The signals will be decomposed through the wavelet mothers. The best mother is the one that is capable to detect the time location of the event accurately.
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用小波变换检测电能质量中的电压起伏
电压跌落、电压膨胀、高频噪声和电压瞬变是电能质量中的几种干扰。它们也被称为电能质量事件。随着设备的日益复杂,当今工业中使用的设备对这些事件变得更加敏感。这导致了向消费者分配清洁电力质量的重要性。为了提供更好的服务,电能质量的最佳分析是至关重要的。因此,本文提出了以电压跌落和电压膨胀为重点的事件检测方法。该方法是在MATLAB中应用小波变换的时域信号分析方法开发的。使用Haar、Dmey、Daubechies和Symlet四种母小波来检测事件。本项目分析了马来西亚新山斯古代22千伏输电线路的真实中断信号。通过小波母对信号进行分解。最好的母亲是能够准确地探测到事件发生的时间位置的母亲。
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