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Imbalanced Fault Classification of Bearing via Wasserstein Generative Adversarial Networks with Gradient Penalty

机译:通过Wasserstein生成对冲网络具有梯度惩罚的轴承的不平衡故障分类

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摘要

Recently, generative adversarial networks (GANs) are widely applied to increase the amounts of imbalanced input samples in fault diagnosis. However, the existing GAN-based methods have convergence difficulties and training instability, which affect the fault diagnosis efficiency. This paper develops a novel framework for imbalanced fault classification based on Wasserstein generative adversarial networks with gradient penalty (WGAN-GP), which interpolates randomly between the true and generated samples to ensure that the transition region between the true and false samples satisfies the Lipschitz constraint. The process of feature learning is visualized to show the feature extraction process of WGAN-GP. To verify the availability of the generated samples, a stacked autoencoder (SAE) is set to classify the enhanced dataset composed of the generated samples and original samples. Furthermore, the exhibition of the loss curve indicates that WGAN-GP has better convergence and faster training speed due to the introduction of the gradient penalty. Three bearing datasets are employed to verify the effectiveness of the developed framework, and the results show that the proposed framework has an excellent performance in mechanical fault diagnosis under the imbalanced training dataset.
机译:最近,生成的对抗性网络(GANS)被广泛应用于增加故障诊断中的不平衡输入样本的量。然而,现有的基于GaN的方法具有收敛性困难和培训不稳定,这会影响故障诊断效率。本文为基于Wassersein生成的对冲网络具有具有梯度惩罚(Wgan-GP)的WASTERIND FIRERAL网络的新框架,其在真实和生成的样本之间随机插入,以确保真实和假样本之间的过渡区域满足LIPSCHITZ约束。特征学习过程可视化以显示Wgan-GP的特征提取过程。为了验证所生成的样本的可用性,将堆叠的AutoEncoder(SAE)设置为分类由所生成的样本和原始样本组成的增强数据集。此外,损失曲线的展览表明,由于引入梯度罚款,Wgan-GP具有更好的收敛性和更快的训练速度。采用三个轴承数据集来验证发达框架的有效性,结果表明,该框架在不平衡训练数据集下的机械故障诊断中具有出色的性能。

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