基于小波神经网络的DG综合混合电力系统故障分类

A. Bhuyan, B. Panigrahi, Subhendu Pati
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引用次数: 3

摘要

提出了一种基于小波神经网络(WNN)的故障分类方法。利用MATLAB仿真程序对30kv、100km的分布式发电机(DG)综合混合电网进行故障分类,得到故障分类数据。在拟议的测试系统中连接的两个DG是风能DG和光伏DG。本工作的目标是对所提出的测试系统中的故障进行正确的分类。从共耦合点(PCC)采集的数据集具有不同的故障条件,具有不同的电阻水平。结果表明,本文提出的基于小波神经网络的故障分类方法能够在混合网络仿真模型中正确识别故障,并具有很高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Classification for DG integrated Hybrid Power System using Wavelet Neural Network Approach
This paper presents a novel fault classification technique which uses Wavelet Neural Network (WNN) based approach. The data for the fault classification is obtained using MATLAB Simulation program for 30kv, 100km, Distributed generators (DG) integrated hybrid network. The two DGs connected in the proposed test system are Wind DG and Photovoltaic (PV) DG. The target of this work is to classify the fault correctly in the proposed test system. The data set collected from the point of common coupling (PCC) is with various conditions of fault with a distinct resistant level. It is clear from the results that the proposed method of classification of faults using WNN is able to correctly recognize the faults with very high accuracy in the simulated model of hybrid network.
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