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Multi extreme learning machine approach for fault location in multi-terminal high-voltage direct current systems

机译:多端高压直流系统中的故障位置多极限学习机方法

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摘要

A method based on extreme learning machine (ELM) is suggested to locate faults in multi-terminal high-voltage direct current systems. S-transform and wavelet transform are used for extraction of the features used for the learning. The accuracy of the technique for various types of input signals and different lengths of the analyzed window is investigated. Two different approaches are considered for employing the ELM in this application. In the first approach, an ELM is used for total length of the line. In the second one, a multi-ELM technique is applied to different sections of the transmission line. In this approach, one ELM is considered for each of the divided sections. It is proved that the performance of the method is improved by the multi-ELM approach in comparison with the single ELM one. The performance of the ELM approach is compared with the artificial neural network and support vector regression techniques. (C) 2019 Elsevier Ltd. All rights reserved.
机译:建议基于极端学习机(ELM)的方法来定位多终端高压直流系统中的故障。 S转换和小波变换用于提取用于学习的特征。 研究了各种类型输入信号的技术的准确性和分析窗口的不同长度。 考虑在本申请中使用ELM的两种不同的方法。 在第一种方法中,ELM用于线的总长度。 在第二个中,将多ELM技术应用于传输线的不同部分。 在这种方法中,考虑每个划分部分考虑一个ELM。 事实证明,通过与单个ELM彼此相比,通过多ELM方法改善了该方法的性能。 将ELM方法的性能与人工神经网络进行比较并支持向量回归技术。 (c)2019年elestvier有限公司保留所有权利。

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