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Application of Convolutional Neural Network Transfer Learning in Partial Discharge Pattern Recognition

机译:卷积神经网络转移学习在局部放电模式识别中的应用

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摘要

Due to the lack of expert experience and the shortcomings of high blindness, the traditional partial discharge feature extraction method of gas insulated switchgear (GIS) has an impact on the accuracy of pattern recognition; convolutional neural network emerged in recent years has the ability to adaptively extract features, but training a network with better performance needs to increase the network depth on the one hand, and more supportive data on the other. Therefore, this paper propose a GIS partial discharge pattern recognition method based on transfer learning of three pre-trained network models (VGG, InceptionV3, and Resnet50) under the small data set. And the feature extracted by the network are applied to SVM classifier which performs well on a small data set. Realizing the combination of deep learning and traditional machine learning. Experimental result shows that this method can effectively improve the accuracy of GIS partial discharge pattern recognition.
机译:由于缺乏专家经验和高盲的缺点,传统的局部局部排放功能提取方法的气体绝缘开关设备(GIS)对图案识别的准确性产生影响;近年来的卷积神经网络具有可自适应提取特征的能力,但培训具有更好性能的网络需要在一方面增加网络深度,另一方面更具支持性数据。因此,本文提出了一种基于在小型数据集下的三个预先训练的网络模型(VGG,Inceptionv3和Reset50)的转移学习的GIS部分放电模式识别方法。并且网络提取的特征被应用于在小数据集上执行良好的SVM分类器。实现深度学习与传统机器学习的结合。实验结果表明,该方法可以有效提高GIS偏放电模式识别的准确性。

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