A Novel Zone Division Approach for Power System Fault Detection Using ANN-Based Pattern Recognition Technique

IF 1.7 Q2 Engineering
Subhra Jana, A. De
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引用次数: 18

Abstract

This paper presents a waveform analysis-based approach for detection and classification of short-circuit faults in large power networks. To reduce the computational burden in dealing with a large volume of waveform data, a novel zone detection method has been used where a large power network is divided into optimal number of zones with manageable number of buses and lines. A first module of the artificial neural network-based classifier has been developed to perform an “exploratory global search” to find the faulty zone, which is then refined to a “local search” within a zone, by a second module of classifier for determination of exact fault location and fault type. The elementary waveform data are being captured by disturbance recorders placed at strategic buses, termed as “monitoring locations.” Feature extraction, which is typically the underlying principle of any waveform analysis-based fault detection approach, is implemented by the extended Kalman filter. The proposed method has been successfully tested on the IEEE 57 bus network with encouraging results.
基于人工神经网络模式识别技术的电力系统故障分区检测方法
提出了一种基于波形分析的大型电网短路故障检测与分类方法。为了减少处理大量波形数据的计算量,提出了一种新的区域检测方法,将大型电网划分为具有可管理母线数量的最优区域。基于人工神经网络的分类器的第一个模块被开发用于执行“探索性全局搜索”以找到故障区域,然后由分类器的第二个模块细化为区域内的“局部搜索”,以确定准确的故障位置和故障类型。基本的波形数据是由放置在战略大巴上的干扰记录仪捕获的,这些大巴被称为“监控地点”。特征提取是任何基于波形分析的故障检测方法的基本原理,它由扩展卡尔曼滤波器实现。该方法已在ieee57总线网络上成功地进行了测试,取得了令人鼓舞的结果。
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来源期刊
自引率
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发文量
27
期刊介绍: The Canadian Journal of Electrical and Computer Engineering (ISSN-0840-8688), issued quarterly, has been publishing high-quality refereed scientific papers in all areas of electrical and computer engineering since 1976
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