通过模式识别人工神经网络检测电力变压器的故障和正常运行状况

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
André Gifalli, Alfredo Bonini Neto, André Nunes de Souza, Renan Pinal de Mello, M. A. Ikeshoji, Enio Garbelini, Floriano Torres Neto
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引用次数: 0

摘要

内部绝缘材料的老化、退化或损坏往往会导致变压器故障。此外,当这些绝缘材料受到热应力或电应力时,会产生可燃气体。本文介绍了一种用于模式识别(PRN)的人工神经网络,可根据电力变压器中存在的可燃气体对其运行状况(正常、热故障和电气故障)进行分类。提出了两种网络配置,一种在隐层中有五个神经元,另一种有十个神经元。通过人工神经网络应用该模型的主要优点是能够捕捉所研究样本的非线性特征,从而避免了迭代程序。我们在 815 个真实数据样本上评估了所提方法的有效性和适用性。结果表明,PRN 在训练和验证(对于不在训练范围内的样本)中都表现出色,平均平方误差(MSE)接近预期(0.001)。在 815 个样本中,该网络对样本分类的准确率为 98%,在验证中的准确率为 100%,这表明所开发的方法能够作为诊断电力变压器可操作性的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fault Detection and Normal Operating Condition in Power Transformers via Pattern Recognition Artificial Neural Network
Aging, degradation, or damage to internal insulation materials often contribute to transformer failures. Furthermore, combustible gases can be produced when these insulation materials experience thermal or electrical stresses. This paper presents an artificial neural network for pattern recognition (PRN) to classify the operating conditions of power transformers (normal, thermal faults, and electrical faults) depending on the combustible gases present in them. Two network configurations were presented, one with five and the other with ten neurons in the hidden layer. The main advantage of applying this model through artificial neural networks is its ability to capture the nonlinear characteristics of the samples under study, thus avoiding the need for iterative procedures. The effectiveness and applicability of the proposed methodology were evaluated on 815 real data samples. Based on the results, the PRN performed well in both training and validation (for samples that were not part of the training), with a mean squared error (MSE) close to expected (0.001). The network was able to classify the samples with a 98% accuracy rate of the 815 samples presented and with 100% accuracy in validation, showing that the methodology developed is capable of acting as a tool for diagnosing the operability of power transformers.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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