...
首页> 外文期刊>Measurement Science & Technology >Fractal dimension and data mining for detection of short-circuited turns in transformers from vibration signals
【24h】

Fractal dimension and data mining for detection of short-circuited turns in transformers from vibration signals

机译:从振动信号检测变压器短路转弯的分形维数和数据挖掘

获取原文
获取原文并翻译 | 示例
           

摘要

Transformers are vital elements in electric systems. Although they are robust machines, they can suffer from different faults during their service life. In particular, special attention has been given to winding faults since they are the most important and vulnerable components. In this regard, the development and application of condition monitoring schemes for winding faults are required. It is well-known that vibration signals can provide information related to faults or changes in the mechanical properties of transformers; however, the extraction of fault information from these signals and the automatic diagnosis are not straightforward processes. Therefore, in this work, a new methodology to detect short-circuited turns (SCTs) in transformers using vibration signals is presented. As first step, a set of fractal dimension algorithms (FDAs), i.e. Katz, Higuchi, Box, and Sevcik, are investigated as potential fault indicators. In order to test if they are sensitive to the fault severity, a modified transformer to represent different levels of SCTs is used. Then, a data mining approach is applied to perform an automatic diagnosis, where the results provided by the decision tree-, nave Bayes-, and k-nearest neighbor-based classifiers are compared. Results demonstrate that these indices can detect SCTs and be sensitive to the fault severity.
机译:变压器是电动系统中的重要元素。虽然它们是强大的机器,但它们在他们的使用寿命期间可能会遭受不同的故障。特别是,特别注意绕组断层,因为它们是最重要和最脆弱的组成部分。在这方面,需要开发和应用用于绕组故障的条件监测方案。众所周知,振动信号可以提供与变压器机械性能的故障或变化有关的信息;然而,来自这些信号的故障信息和自动诊断的提取不是简单的过程。因此,在这项工作中,呈现了一种使用振动信号检测变压器的短路转弯(SCT)的新方法。作为第一步,调查了一组分形维数算法(FDA),即Katz,Higuchi,Box和Sevcik,被调查为潜在的故障指标。为了测试它们对故障严重性敏感,使用修改的变压器以表示不同级别的SCT。然后,应用数据挖掘方法来执行自动诊断,其中比较了决策树,Nave贝叶斯和基于k最近邻的分类器的结果。结果表明,这些指数可以检测到SCT,并对故障严重程度敏感。

著录项

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