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Parameter identification for fault detection of power transformer using artificial neural network

机译:人工神经网络用于电力变压器故障检测的参数辨识

摘要

Fault diagnosis is a challenging problem because there are numerous fault situations that can possibly occur to an electrical transformer. There are a lot of previous works done by researchers on fault diagnosis in power transformer but all of them used data from Dissolved Gas Analysis (DGA) as input for detection. This study will focus on parameter identification that is electrical measurement, which is voltage and current for fault detection due to several limitations of data from DGA that can lead to wrong diagnosis of fault in power transformer. The transformer that been used in this power system model is 132/20 kV with 250 MVA rating. The simulation of nine types of possible fault has been done by MATLAB R2013a Simulink software. To recognize the pattern of fault data, ANN was chosen because of it was easy to apply in power system network and it will work as pattern classifier with the ability to identify fault types accurately. The ANN programming has been done by ANN Pattern Recognition Tool that also in MATLAB R2013a software. It is found that the fault of power transformer can be detected by measuring electrical parameter such as voltage and current and with ANN, detection and classification of fault can be done to diagnose fault in power transformer. After the fault data had been trained for a few times, ANN will learn how to classify it accurately and then it is able to properly resolve new situations which are different from those fault data presented in the learning process
机译:故障诊断是一个具有挑战性的问题,因为电力变压器可能会发生许多故障情况。研究人员以前在电力变压器故障诊断方面做过很多工作,但他们都使用溶解气体分析(DGA)的数据作为检测的输入。这项研究的重点是电气测量的参数识别,由于来自DGA的数据存在一些局限性,可能会导致对变压器的故障进行错误诊断,因此电气检测即是电压和电流,以进行故障检测。此电源系统模型中使用的变压器为132/20 kV,额定值为250 MVA。 MATLAB R2013a Simulink软件已经完成了九种可能故障的仿真。为了识别故障数据的模式,之所以选择ANN,是因为它易于在电力系统网络中应用,并且可以用作模式分类器,并具有准确识别故障类型的能力。 ANN编程已经由MATLAB R2013a软件中的ANN模式识别工具完成。通过对电压,电流等电参数的测量可以发现电力变压器的故障,并通过人工神经网络对电力变压器的故障进行分类诊断。在对故障数据进行了几次培训之后,ANN将学习如何对其进行准确分类,然后能够正确解决与学习过程中出现的那些故障数据不同的新情况。

著录项

  • 作者

    Rosli Ruzaini;

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  • 年度 2015
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  • 原文格式 PDF
  • 正文语种 en
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