Comparison of ANFIS and ANN Techniques in Fault Classification and Location in Long Transmission Lines

S. Panda, D. Mishra, S. Dash
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引用次数: 2

Abstract

This paper presents application of ANFIS and ANN in fault classification and location in a long transmission line. Compared to other methods, Machine Learning techniques based on artificial intelligence perform the best in fault classification and finding its location. Most frequently used ML techniques for this purpose are ANFIS and ANN. Both the techniques were able not only to identify fault type but also to find the fault location in the transmission line very accurately using source end current and voltage data. Common training and testing data was used for ANFIS and ANN. This data was obtained from simulation of faults in a long transmission line model using MATLAB. Error analysis and comparison of both the techniques is also presented in this paper. A GUI was designed for comparison of both the methods.
ANFIS与ANN技术在长距离输电线路故障分类定位中的比较
本文介绍了人工神经网络和人工神经网络在长输电线路故障分类定位中的应用。与其他方法相比,基于人工智能的机器学习技术在故障分类和定位方面表现最好。为此目的最常用的ML技术是ANFIS和ANN。这两种方法不仅能够准确地识别故障类型,而且能够利用源端电流和电压数据准确地定位故障在输电线路中的位置。ANFIS和ANN使用通用的训练和测试数据。该数据是利用MATLAB对某长传输线模型的故障进行仿真得到的。本文还对两种技术进行了误差分析和比较。设计了GUI来比较两种方法。
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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