A comparative study for Fault Location detection in bipolar HVDC Transmission Systems using Wavelet transform and Artificial Neural Networks

Ankit Sourashtriya, Minal Tomar
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引用次数: 1

Abstract

The present work proposes a WT-ANN-based model for fault location estimation of HVDC transmission line, for providing faster response time of estimation. HVDC has many advantages over its counterpart for long-distance transmission of power like it has fewer transmission losses and better power quality. But it lacks technological development in the field of fault location detection and clearance as compared to HVAC.The work is aimed to develop a model based on wavelet transform and self-learning technique i.e ANN algorithm to estimate the fault location of any HVDC transmission line. Wavelet transform is performed on the data obtained from the prepared model on PSCAD/EMTDC software for different fault locations at a difference of 1KM. Data from both rectifier and inverter end has been collected. Wavelet transform will help in extracting features from data for better learning of the ANN-based model. Both wavelet transform and ANN implementation are done using Matlab software.Four features obtained post wavelet transform (3 detailed coefficients and 1 approx. coefficient) will be used to train four different ANN models based on LM & BR model. The final prediction of fault location is done by adding the result obtained from the above 4 models. The results obtained are proved to be very reliable with an error of near 1- 1.5 KM for the WTANN combination.
小波变换与人工神经网络在双极直流输电系统故障定位检测中的比较研究
本文提出了一种基于wt - ann的高压直流输电线路故障定位估计模型,以提供更快的估计响应时间。高压直流输电在远距离输电中具有传输损耗小、电能质量好等优点。但与暖通空调相比,它在故障定位、检测和清除方面缺乏技术发展。本文旨在建立一种基于小波变换和自学习技术(即人工神经网络算法)的模型来估计任意直流输电线路的故障位置。在PSCAD/EMTDC软件上对模型得到的数据进行小波变换,对误差为1KM的不同故障位置进行小波变换。从整流端和逆变端采集数据。小波变换将有助于从数据中提取特征,从而更好地学习基于人工神经网络的模型。小波变换和人工神经网络的实现都是用Matlab软件完成的。小波变换后得到4个特征(3个详细系数和1个近似)。系数)将用于训练基于LM & BR模型的四种不同的人工神经网络模型。将以上4个模型的结果综合起来进行最终的故障定位预测。结果表明,在WTANN组合条件下,所得结果是可靠的,误差在1 ~ 1.5 KM之间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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