Dimensionality Reduction and Anomaly Detection for CPPS Data using Autoencoder

Benedikt Eiteneuer, Nemanja Hranisavljevic, O. Niggemann
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引用次数: 20

Abstract

Unsupervised anomaly detection (AD) is a major topic in the field of Cyber-Physical Production Systems (CPPSs). A closely related concern is dimensionality reduction (DR) which is: 1) often used as a preprocessing step in an AD solution, 2) a sort of AD, if a measure of observation conformity to the learned data manifold is provided.We argue that the two aspects can be complementary in a CPPS anomaly detection solution. In this work, we focus on the nonlinear autoencoder (AE) as a DR/AD approach. The contribution of this work is: 1) we examine the suitability of AE reconstruction error as an AD decision criterion in CPPS data. 2) we analyze its relation to a potential second-phase AD approach in the AE latent space 3) we evaluate the performance of the approach on three real-world datasets. Moreover, the approach outperforms state-of-the-art techniques, alongside a relatively simple and straightforward application.
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基于自编码器的CPPS数据降维与异常检测
无监督异常检测(AD)是信息物理生产系统(CPPSs)领域的一个重要课题。一个密切相关的问题是降维(DR),它是:1)通常用作AD解决方案中的预处理步骤,2)如果提供了与学习数据流形的观察一致性的度量,则是一种AD。我们认为这两个方面可以在CPPS异常检测解决方案中互补。在这项工作中,我们专注于非线性自编码器(AE)作为DR/AD方法。本工作的贡献在于:1)我们检验了声发射重建误差在CPPS数据中作为AD决策标准的适用性。2)分析了其与AE潜在空间中潜在的第二阶段AD方法的关系;3)评估了该方法在三个真实数据集上的性能。此外,该方法优于最先进的技术,而且应用程序相对简单直接。
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