基于混合小波变换的信号处理在电力系统故障检测与识别中的应用

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS Information (Switzerland) Pub Date : 2023-10-03 DOI:10.3390/info14100540
Yasmin Nasser Mohamed, Serhat Seker, Tahir Cetin Akinci
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引用次数: 0

摘要

电力系统是最容易发生故障的系统之一,其中最常见的故障是由输电线路故障引起的。输电线路故障占所有电力系统故障的85%。然而,在过去的十年中,为了保证电力系统的可靠性和稳定性,已经开发了许多故障检测方法。提出了一种基于冗余性思想的混合检测方法。由于连续小波变换本身不能有效提取小缺陷的故障特征,因此采用平稳小波变换方法辅助小缺陷的检测。由于它能够将信号分解为高频和低频分量,因此使用代数求和运算(ASO)进行非消差重建。这种方法产生了冗余,有利于小缺陷的特征提取,使故障部件更加明显。冗余比对原始信号的贡献数值约为36%。在此冗余信号重构方法的基础上,采用连续小波变换在时间(频率)域更容易提取故障特征。最后,该方法已被证明是一种有效的故障检测和识别工具,可用于电力系统。事实上,使用这种先进的信号处理技术将有助于早期故障检测,这主要是关于预测性维护。该应用提供了更可靠的运行条件。
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Signal Processing Application Based on a Hybrid Wavelet Transform to Fault Detection and Identification in Power System
The power system is one of the most susceptible systems to failures, which are most frequently caused by transmission line faults. Transmission line failures account for 85% of all power system malfunctions. However, over the last decade, numerous fault detection methods have been developed to ensure the reliability and stability of power systems. A hybrid detection method based on the idea of redundancy property is presented in this paper. Because the continuous wavelet transform itself does not extract fault features for small defects effectively, the stationary wavelet transform approach is employed to assist in their detection. As a result of its ability to decompose the signal into high- and low-frequency components, undecimated reconstruction by using the algebraic summation operation (ASO) is used. This approach creates redundancy, which is useful for the feature extraction of small defects and makes faulty parts more evident. The numerical value of the redundancy ratio’s contribution to the original signal is approximately equal to 36%. Following this method for redundant signal reconstruction, a continuous wavelet transform is used to extract the fault characteristic significantly easier in the time-scale (frequency) domain. Finally, the suggested technique has been demonstrated to be an efficient fault detection and identification tool for use in power systems. In fact, using this advanced signal processing technique will help with early fault detection, which is mainly about predictive maintenance. This application provides more reliable operation conditions.
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来源期刊
Information (Switzerland)
Information (Switzerland) Computer Science-Information Systems
CiteScore
6.90
自引率
0.00%
发文量
515
审稿时长
11 weeks
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