Multiple Fault Diagnosis in Electrical Power Systems with Probabilistic Neural Networks

Juan Pablo Nieto González, L. Castañón, R. M. Menéndez
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引用次数: 3

Abstract

Power systems monitoring is particularly challenging due to the presence of dynamic load changes in normal operation mode of network nodes, as well as the presence of both continuous and discrete variables, noisy information and lack or excess of data. This paper proposes a fault diagnosis framework that is able to locate the set of nodes involved in multiple fault events and detects the type of fault in those nodes. The framework is composed of two phases: In the first phase a probabilistic neural network is trained with the eigenvalues of voltage data collected during symmetrical and unsymmetrical fault disturbances. The eigenvalues are computed from the correlation matrix built from historical data, and are used as neural network inputs. The neural network is able to carry out a first classification/discrimination process of nodes states, obtaining in this way a reduction on data analysis. In the second phase a sample magnitude comparison is used to detect and locate the presence of a fault. A set of simulations are carried out over an electrical power system to show the performance of the proposed framework and a comparison is made against a diagnostic system based on probabilistic logic.
基于概率神经网络的电力系统多故障诊断
由于网络节点的正常运行模式中存在动态负荷变化,同时存在连续变量和离散变量、噪声信息和数据的缺乏或过剩,电力系统的监测尤其具有挑战性。本文提出了一种故障诊断框架,该框架能够定位多个故障事件所涉及的节点集,并检测这些节点中的故障类型。该框架由两阶段组成:第一阶段利用对称和非对称故障干扰时采集的电压数据特征值训练概率神经网络;从历史数据建立的相关矩阵中计算特征值,并将其用作神经网络输入。神经网络能够对节点状态进行第一次分类/判别过程,从而减少数据分析的工作量。在第二阶段,使用样本幅度比较来检测和定位故障的存在。在电力系统上进行了一组仿真,以显示所提出的框架的性能,并与基于概率逻辑的诊断系统进行了比较。
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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