首页> 外文期刊>Arabian Journal for Science and Engineering. Section A, Sciences >An ANFIS Based Comprehensive Correlation Between Diagnostic and Destructive Parameters of Transformer’s Paper Insulation
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An ANFIS Based Comprehensive Correlation Between Diagnostic and Destructive Parameters of Transformer’s Paper Insulation

机译:变压器纸质绝缘诊断与破坏参数的基于ANFIS

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In this work, a fine correlation among destructive and diagnostic parameters of transformer’s paper insulation is presented.The degree of polymerization (DP) directly assesses the condition of the paper insulation strength and is measured throughdestructive procedure. Generally, 2-FAL, CO_2and CO are the aging products of paper decomposition and referred as diagnosticparameters. An Adaptive Neuro Fuzzy Inference System (ANFIS) is proposed and developed to estimate the value of DPas the function of amount of diagnostic parameters. The proposed system has an advantage of diagnosing the health of solidinsulation without performing destructive tests. The diagnostic parameters are taken as inputs to the system to determine thevalue of DP. The system uses 630 data points for training the ANFIS model and follows a ten-fold cross-validation approach.The average validation error has been determined to be. 0.0029. Further, the model’s performance has been assessed usingexperimental data. The optimal ANFIS model has been achieved by suitably selecting the number and type of membershipfunction. The estimated value of DP has been found to conform to the experimental measurements for every case under test.The performance of this model has also been compared with a fuzzy inference system (FIS) model in the reported literature.The comparison shows that the ANFIS model determines the DP values with a greater degree of accuracy than the FIS model.
机译:在这项工作中,提出了变压器纸质绝缘的破坏性和诊断参数的微观关系。聚合度(DP)直接评估纸质绝缘强度的条件,并通过破坏性程序。通常,2-FAL,CO_2CO是纸张分解的老化产品,并称为诊断参数。提出并开发了一种自适应神经模糊推理系统(ANFIS)以估计DP的值作为诊断参数量的功能。所提出的系统具有诊断固体健康的优势绝缘而不进行破坏性测试。诊断参数被视为系统的输入以确定DP的价值。该系统使用630个数据点来训练ANFIS模型,并遵循十倍的交叉验证方法。已经确定了平均验证错误。 0.0029。此外,模型的性能已经使用实验数据。 The optimal ANFIS model has been achieved by suitably selecting the number and type of membership功能。已经发现DP的估计值符合每种案例的实验测量。该模型的性能也与报告文献中的模糊推理系统(FIS)模型进行了比较。比较表明,ANFI模型以比FIS模型更高的精度确定DP值。

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