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A Comparative study of different signal processing techniques for Fault Location on Transmission Lines using hybrid Generalized Regression Neural Network

机译:混合广义回归神经网络传输线上的故障位置不同信号处理技术的比较研究

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Travelling wave based fault location uses arrival times of the fault generated travelling waves at the terminals of the line. These arrival times are extracted by using different signal processing tools like Discrete wavelet transform (DWT), S-Transform (ST). The accuracy of fault location is highly influenced by the uncertainties in arrival time measurements. In this paper, an artificial neural network based fault locator is used to deal with such uncertainties. Based on the analysis of the arrival times estimated by different methods, a Generalized Regression Neural Network (GRNN) is trained for locating faults accurately. The performance of the compared technique is verified in MATLAB/Simulink environment by simulating different transmission line faults. Results obtained indicate the validity of Knowledge based solution using GRNN for fault location.
机译:基于波浪的浪潮的故障位置使用在线端子的故障的到达时间。通过使用离散小波变换(DWT),S转换(ST)等不同的信号处理工具来提取这些到达时间。故障位置的准确性受到到达时间测量中的不确定性的高度影响。在本文中,使用人工神经网络的故障定位器来处理这种不确定性。基于通过不同方法估计的到达时间的分析,培训广义回归神经网络(GRNN),用于准确地定位故障。通过模拟不同的传输线路故障,在Matlab / Simulink环境中验证了比较技术的性能。获得的结果表明了使用GRNN用于故障位置的知识基于解决方案的有效性。

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