A Novel Fault Detection Method Based on Reconstruction Error and Clustering of Latent Variables

Jian Wang, Jing Xu, Yakun Li
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引用次数: 1

Abstract

Traditional fault detection methods based on AutoEncoder (AE) usually complete fault detection by comparing reconstruction errors, and ignore a lot of useful information about the distribution of latent variables. In this paper, we propose a novel unsupervised fault detection method named One Dimension Convolutional Adversarial AutoEncoder (1DAAE), which introduce two new ideas: 1D convolution layers for autoencoder to get better features and the adversarial thought to impose the latent variables z to cluster into a prior distribution. Then two anomaly scores are proposed to detect fault samples, one is based on reconstruction errors, the other is based on latent variables distribution. Finally, it is shown by experiments that the proposed method outperforms traditional AE-based, Adversarial AutoEncoder (AAE)-based, One Dimension Convolutional AutoEncoder (1DAE)-based, and 1DAAE-based algorithms on Tennessee Eastman Process.
基于潜在变量重构误差和聚类的故障检测新方法
传统的基于AutoEncoder (AE)的故障检测方法通常是通过比较重构误差来完成故障检测,而忽略了很多潜在变量分布的有用信息。本文提出了一种新的无监督故障检测方法——一维卷积对抗自编码器(1DAAE),该方法引入了两种新思想:用于自编码器的一维卷积层以获得更好的特征,以及用于将潜在变量z聚类到先验分布中的对抗思想。然后提出了基于重构误差和基于潜变量分布的两种异常评分方法来检测故障样本。最后,通过实验表明,该方法优于传统的基于ae的、基于对抗自编码器(AAE)的、基于一维卷积自编码器(1DAE)的和基于1daae的Tennessee Eastman Process算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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