Reproducing of the Humidity Curve of Power Transformers Oil Using Adaptive Neuro-Fuzzy Systems

V. Vasilevskij, M. Poliakov
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引用次数: 1

Abstract

Introduction. One of the parameters that determine the state of the insulation of power transformers is the degree of moisture content of cellulose insulation and transformer oil. Modern systems of continuous monitoring of transformer equipment have the ability to accumulate data that can be used to reproduce the dynamics of moisture content in insulation. The purpose of the work is to reproduce the curve of the of humidity of transformer oil based on the results of measuring the temperature of the upper and lower layers of oil without the need for direct measurement of moisture content by special devices. Methodology. The construction of a fuzzy neural network is carried out using networks based on adaptive neuro-fuzzy system ANFIS. The network generated using the Grid Partition algorithm without clustering and Subtractive Clustering. Results. The paper presents a comparative analysis of fuzzy neural networks of various architectures in terms of increasing the accuracy of reproducing the moisture content of transformer oil. For training and testing fuzzy neural networks, the results of continuous monitoring of the temperature of the upper and lower layers of transformer oil during two months of operation used. Considered twenty four variants of the architecture of ANFIS models, which differ in the membership functions, the number of terms of each input quantity, and the number of training cycles. The results of using the constructed fuzzy neural networks for reproducing the dynamics of moisture content of transformer oil during a month of operation of the transformer are presented. The reproducing accuracy was assessed using the root mean square error and the coefficient of determination. The test results indicate the sufficient adequacy of the proposed models. Consequently, the RMSE value for the network constructed using Grid Partition method was 0.49, and for the network built using the Subtractive Clustering method – 0.40509.
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用自适应神经模糊系统再现电力变压器油的湿度曲线
介绍。决定电力变压器绝缘状态的参数之一是纤维素绝缘与变压器油的含水率。对变压器设备进行连续监测的现代系统具有积累数据的能力,这些数据可用于再现绝缘中水分含量的动态。该工作的目的是在不需要用专用装置直接测量含水率的情况下,根据测量上、下两层油温度的结果,再现变压器油的湿度曲线。方法。利用基于自适应神经模糊系统的网络进行模糊神经网络的构造。采用无聚类和减法聚类的网格划分算法生成网络。结果。本文对不同结构的模糊神经网络在提高变压器油含水率再现精度方面进行了比较分析。为了训练和测试模糊神经网络,连续监测了两个月运行期间变压器上下层油的温度。考虑了ANFIS模型体系结构的24种变体,它们在隶属函数、每个输入量的项数和训练周期数方面有所不同。给出了用所构建的模糊神经网络模拟变压器一个月运行过程中变压器油含水率动态变化的结果。采用均方根误差和决定系数评价再现精度。试验结果表明所提出的模型是足够完备的。因此,使用网格划分方法构建的网络的RMSE值为0.49,使用减法聚类方法构建的网络的RMSE值为0.40509。
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