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Machinery Health Monitoring Based on Unsupervised Feature Learning via Generative Adversarial Networks

机译:基于无监督特征学习的机械健康监测通过生成对抗网络学习

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It confronts great difficulty to apply traditional artificial intelligence (AI) techniques to machinery prognostics and health management in manufacturing systems due to the lack of abnormal samples corresponding to different fault conditions. This article explores an unsupervised feature learning method for machinery health monitoring by proposing a generative adversarial networks (GAN) model that exploits the merits of the autoencoder and the traditional GAN. The major contribution is that the data distribution of the normal samples is accurately learned by the GAN model within both the signal spectrum and latent representation spaces. Specifically, the discriminative feature for machinery health monitoring is learned in an unsupervised manner by the proposed method in three steps. First, the proposed GAN model is trained by the normal samples of the inspected machine with the aim to correctly reconstruct the signal spectrum and its latent representation. Then, the trained model is applied to test the online samples of the same machine with unknown health conditions. Finally, the dissimilarity between the tested samples and their reconstructed ones in the latent representation space is taken as the discriminative feature. The feature value will increase significantly if a fault occurs in the inspected machine because the abnormal samples are never trained in the proposed GAN model. Experimental studies on three different machines are conducted to validate the proposed method and its superiority over the traditional methods in detecting abnormal points and characterizing fault propagation.
机译:由于缺乏对应于不同故障条件的异常样本,它面临着对制造系统中的机械预测和健康管理的传统人工智能(AI)技术难以实现。本文通过提出利用AutoEncoder和传统GaN的优点,探讨了机械健康监测的无监督特征学习方法。主要贡献是通过信号频谱和潜在表示空间内的GaN模型精确地学习了正常样本的数据分布。具体地,通过三个步骤,通过所提出的方法以无人监督的方式学习机械健康监测的鉴别特征。首先,所提出的GaN模型受到检查机器的正常样本训练,目的是正确地重建信号频谱及其潜在表示。然后,培训的模型用于测试同一台机器的在线样本,具有未知的健康状况。最后,被视为潜在表示空间中的测试样品与其重建的样品之间的异化性作为辨别特征。如果在检查的机器中发生故障,则特征值将显着增加,因为异常样本从未​​在提议的GaN模型中培训。进行三种不同机器的实验研究,以验证所提出的方法及其在检测异常点和表征故障传播中的传统方法的优越性。

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