首页> 外文期刊>Journal of electrical and computer engineering >Effectiveness of Partition and Graph Theoretic Clustering Algorithms for Multiple Source Partial Discharge Pattern Classification Using Probabilistic Neural Network and Its Adaptive Version: A Critique Based on Experimental Studies
【24h】

Effectiveness of Partition and Graph Theoretic Clustering Algorithms for Multiple Source Partial Discharge Pattern Classification Using Probabilistic Neural Network and Its Adaptive Version: A Critique Based on Experimental Studies

机译:基于概率神经网络的分区和图论聚类算法在多源局部放电模式分类中的有效性及其自适应版本:一种基于实验研究的评论

获取原文
获取原文并翻译 | 示例
           

摘要

Partial discharge (PD) is a major cause of failure of power apparatus and hence its measurement and analysis have emerged as a vital field in assessing the condition of the insulation system. Several efforts have been undertaken by researchers to classify PD pulses utilizing artificial intelligence techniques. Recently, the focus has shifted to the identification of multiple sources of PD since it is often encountered in real-time measurements. Studies have indicated that classification of multi-source PD becomes difficult with the degree of overlap and that several techniques such as mixed Weibull functions, neural networks, and wavelet transformation have been attempted with limited success. Since digital PD acquisition systems record data for a substantial period, the database becomes large, posing considerable difficulties during classification. This research work aims firstly at analyzing aspects concerning classification capability during the discrimination of multisource PD patterns. Secondly, it attempts at extending the previous work of the authors in utilizing the novel approach of probabilistic neural network versions for classifying moderate sets of PD sources to that of large sets. The third focus is on comparing the ability of partition-based algorithms, namely, the labelled (learning vector quantization) and unlabelled (K-means) versions, with that of a novel hypergraph-based clustering method in providing parsimonious sets of centers during classification.
机译:局部放电(PD)是电力设备故障的主要原因,因此,其测量和分析已成为评估绝缘系统状况的重要领域。研究人员已进行了几项努力,以利用人工智能技术对PD脉冲进行分类。最近,焦点已转移到PD的多种来源的识别上,因为它经常在实时测量中遇到。研究表明,随着重叠程度的增加,对多源PD进行分类变得困难,并且尝试了多种技术,例如混合Weibull函数,神经网络和小波变换,但均获得了有限的成功。由于数字PD采集系统会在相当长的一段时间内记录数据,因此数据库会变得很大,在分类时会遇到很大的困难。这项研究工作首先旨在分析多源PD模式识别过程中与分类能力有关的方面。其次,它试图扩展作者先前的工作,利用概率神经网络版本的新颖方法将中度PD源分类为大型PD源。第三个重点是比较基于分区的算法(即标记的(学习矢量量化)版本和未标记的(K均值)版本)与基于超图的新型聚类方法在分类过程中提供简约中心集的能力。

著录项

  • 来源
    《Journal of electrical and computer engineering》 |2012年第3期|479696.1-479696.19|共19页
  • 作者单位

    Department of Electrical and Electronics Engineering, School of Electrical and Electronics Engineering, SASTRA University, Tirumalaisamudram, Tamil Nadu, Thanjavur 613 401, India;

    W.S. Test Systems Limited, 27th km Bellary Road, Doddajalla Post, Karnataka, Bangalore 562 157, India;

    School of Humanities and Sciences, SASTRA University, Tirumalaisamudram, Tamil Nadu, Thanjavur 613 401, India;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号