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Transient signal identification of HVDC transmission lines based on wavelet entropy and SVM

机译:基于小波熵和SVM的HVDC传输线瞬态信号识别

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摘要

High-voltage DC (HVDC) transmission plays an important role in power transmission projects due to its advantages of large transmission power and good control performance. As the main protection of the DC transmission line, transient protection uses the high-frequency signal generated by fault transient to detect faults, having the characteristics of fast response and high accuracy. However, the HVDC transmission line has complex conditions along the route and is vulnerable to lightning strikes and other accidents, resulting in the occurrence of a variety of transients in the line, which increases the difficulty of fault identification. Being able to reveal signal time-frequency characteristic, wavelet entropy is an effective tool of signal recognition. This study proposes a method of transient signal identification based on the wavelet entropy and support vector machine (SVM). Firstly, the transient processes of three kinds of signals, including unipolar faults, lightning strike faults, and lightning disturbances, are briefly introduced. Then the time−frequency features of three kinds of transient signals under different scenes are analysed by wavelet entropy. Finally, the training set was used to train the SVM classification model with the signal wavelet entropy being taken as the eigenvector, and the test results validate the effectiveness of the proposed method.
机译:由于传输功率大的优点和良好的控制性能,高压DC(HVDC)传输在电力传输项目中起着重要作用。作为直流传输线的主要保护,瞬态保护使用故障瞬态产生的高频信号来检测故障,具有快速响应和高精度的特性。然而,HVDC传输线沿着该路线具有复杂的条件,并且容易受到雷击和其他事故的影响,导致线路中各种瞬态发生,这增加了故障识别的难度。能够揭示信号时频特性,小波熵是信号识别的有效工具。本研究提出了一种基于小波熵和支持向量机(SVM)的瞬态信号识别方法。首先,简要介绍了三种信号的瞬态过程,包括单极断层,雷击故障和雷击。然后通过小波熵分析不同场景下三种瞬态信号的时频特征。最后,使用训练集用于训练SVM分类模型与被视为特征向量的信号小波熵,并且测试结果验证了所提出的方法的有效性。

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