Partial Discharge Pattern Recognition with Data Augmentation based on Generative Adversarial Networks

Xuhong Wang, Hongyi Huang, Yue Hu, Yupu Yang
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引用次数: 13

Abstract

Pattern recognition of partial discharge (PD) has various beneficial applications in academia and industry. However, it is hard and expensive to obtain extensively annotated PD data to build a high-performance classification model. Given there is potential to use PD data more effectively, this paper presents a novel data generative model based on generative adversarial networks (GAN). GAN are able to learn deep feature representations of existing PD signals and synthesizes more extensive UHF PD signals. An original PD data set of UHF PD signals is established by the partial discharge experiment. With the result of the original PD signals dataset as baseline, we evaluated the performance of some classifiers on the augmented dataset. The results show that UHF PD classification model benefits from GAN-based data augmentation techniques. Clearly, the GAN-based model has good potential in industry diagnosis of PD, especially when the data are sparse.
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基于生成对抗网络的数据增强局部放电模式识别
局部放电(PD)的模式识别在学术界和工业界都有各种有益的应用。然而,获得广泛注释的PD数据以构建高性能分类模型是困难且昂贵的。鉴于有可能更有效地使用PD数据,本文提出了一种基于生成对抗网络(GAN)的新型数据生成模型。GAN能够学习现有PD信号的深度特征表示,并合成更广泛的UHF PD信号。通过局部放电实验,建立了UHF放电信号的原始放电数据集。以原始PD信号数据集的结果为基准,我们评估了一些分类器在增强数据集上的性能。结果表明,基于gan的数据增强技术有利于UHF PD分类模型。显然,基于gan的模型在PD的工业诊断中具有良好的潜力,特别是在数据稀疏的情况下。
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