An Evolutionary ANN Based on Rough Set and Its Application in Power Grid Fault Diagnosis

Sheng Lin, Zhengyou He, Yangfan Zhang, Q. Qian
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引用次数: 1

Abstract

In order to overcome the inherent flaws of artificial neural networks (ANN), such as long training time, slow convergence and low diagnosis accuracy, a novel evolutionary ANN combining with rough set (RS), named as RSANN, is suggested, and it's proposed to apply in power grid fault diagnosis. The ANN used is a three-layer back-propagation (BP) neural network. RS can reduce the dimensionality of attributes and find out the core attributes through its reduct. The attribute in this research is the information of circuit breakers (CBs) tripping and protection relays action, which is used to diagnose power grid fault. In RSANN, the RS is applied to serve for pretreatment unit which can deal with uncertain or incomplete information, and the core attributes are applied to optimize both topology and connection weights of ANN so as to simplify network structure and improve learning quality. Therefore, the disadvantages such as the incompleteness or error of ANN input data are resolved well through RSANN, and it has rapid reasoning, powerful error tolerance ability. In the end, the simulation experiment in power grid fault diagnosis shows the availability and accuracy of this method.
基于粗糙集的进化神经网络及其在电网故障诊断中的应用
为了克服人工神经网络(ANN)固有的训练时间长、收敛速度慢、诊断准确率低等缺陷,提出了一种结合粗糙集(RS)的进化神经网络(RSANN),并将其应用于电网故障诊断。使用的人工神经网络是一个三层反向传播(BP)神经网络。RS可以将属性降维,通过降维找到核心属性。本研究的属性是断路器跳闸和保护继电器动作的信息,用于电网故障诊断。在RSANN中,利用RS作为处理不确定或不完全信息的预处理单元,利用核心属性对神经网络的拓扑和连接权进行优化,从而简化网络结构,提高学习质量。因此,通过RSANN很好地解决了人工神经网络输入数据的不完整或错误等缺点,并且具有推理速度快、容错能力强等特点。最后,通过对电网故障诊断的仿真实验,验证了该方法的有效性和准确性。
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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