Detection for Cyber-Physical Production Systems based on Graph Neural Networks

被引:1
作者
Goetz, Christian [1 ,2 ]
Humm, Bernhard G. [1 ,3 ]
机构
[1] Darmstadt Univ Appl Sci, Dept Comp Sci, Schofferstr 3, D-64295 Darmstadt, Germany
[2] Yaskawa Europe GmbH, Philipp Reis Str 6, D-65795 Hattersheim, Germany
[3] Hessian Ctr Artificial Intelligence Hessian AI, Karolinenpl 5, D-64289 Darmstadt, Germany
来源
5TH INTERNATIONAL CONFERENCE ON INDUSTRY 4.0 AND SMART MANUFACTURING, ISM 2023 | 2024年 / 232卷
关键词
Anomaly detection; cyber-physical systems; cyber-physical production systems; deep learning; unsupervised learning; graph neural networks;
D O I
10.1016/j.procs.2024.02.028
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Anomaly detection is essential for realising state-of-the-art and safe cyber-physical production systems. With the early detection of possible anomalies, the rise and the carryover of a failure throughout the entire manufacture can be prevented. Current anomaly detection approaches use sensor data from the live system only. Therefore, many important characteristics, interactions, and correlations within the system are neglected. Graphs open a particular way of modelling cyber-physical production systems, while at the same time, they allow the inclusion of a wider variation and variety of data about the system. In this study, we introduce an unsupervised correlation- and interaction-aware anomaly detection concept for cyber-physical production systems based on graph neural networks. We define a concept that allows modelling the entire system as a graph, including external knowledge. We introduce a reconstruction-based graph neural network to detect and analyse the anomalies in these graph structures. The concept is evaluated in a real industrial cyber-physical production system. The test results confirm that the presented concept can be applied to detect anomalies while concurrently considering the correlations and interactions of the system.
引用
收藏
页码:2057 / 2071
页数:15
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