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Dissolved Gases Forecasting Based on Wavelet Least Squares Support Vector Regression and Imperialist Competition Algorithm for Assessing Incipient Faults of Transformer Polymer Insulation

机译:基于小波最小二乘支持向量回归和帝国竞争算法的变压器聚合物绝缘初发故障溶解气体预测。

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摘要

A solution for forecasting the dissolved gases in oil-immersed transformers has been proposed based on the wavelet technique and least squares support vector machine. In order to optimize the hyper-parameters of the constructed wavelet LS-SVM regression, the imperialist competition algorithm was then applied. In this study, the assessment of prediction performance is based on the squared correlation coefficient and mean absolute percentage error methods. According to the proposed method, this novel procedure was applied to a simulated case and the experimental results show that the dissolved gas contents could be accurately predicted using this method. Besides, the proposed approach was compared to other prediction methods such as the back propagation neural network, the radial basis function neural network, and generalized regression neural network. By comparison, it was inferred that this method is more effective than previous forecasting methods.
机译:基于小波技术和最小二乘支持向量机,提出了一种油浸变压器中溶解气体预测的解决方案。为了优化构造的小波LS-SVM回归的超参数,然后应用帝国主义竞争算法。在这项研究中,对预测性能的评估是基于平方相关系数和平均绝对百分比误差方法。根据提出的方法,将该新方法应用于模拟案例,实验结果表明,使用该方法可以准确预测溶解气体含量。此外,将该方法与反向传播神经网络,径向基函数神经网络和广义回归神经网络等其他预测方法进行了比较。通过比较,可以推断该方法比以前的预测方法更有效。

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