A Comparative Evaluation of Deep Learning Anomaly Detection Techniques on Semiconductor Multivariate Time Series Data

Autor: Philip Tchatchoua, Mustapha Ouladsine, Michel Juge, Guillaume Graton
Jazyk: angličtina
Předmět:
Zdroj: 2021 IEEE 17th International Conference on Automation Science and Engineering (CASE)
CASE
IEEE 17th International Conference on Automation Science and Engineering (CASE)
DOI: 10.1109/case49439.2021.9551541
Popis: In industrial processes, keeping equipment units in good operating conditions while reducing maintenance costs is one of the most important objectives to improve productivity. One of the ways to do so is to early detect equipment dysfunction. This can be done by analyzing the massive amounts of data collected via numerous sensors during production activities. Thanks to the advantages of distributed architecture and computation efficiency improvements, deep learning methods have gained much interest and have been investigated by researchers for thorough industrial data analysis, notably for anomaly detection. A comparative evaluation of data-driven deep learning methods used to detect anomalies occurring during equipment processing is proposed. This evaluation is done on a total of six methods, their ability to detect anomalies on raw sensor data, collected on semiconductor machines, with variable correlations and temporal dependencies is discussed. The evaluation gives an insight on the industrial performances on the methods and shows how the supervised learning methods outperform the other models with less training time but need labelled data meanwhile some self-supervised learning methods have good detection performances with training done on normal data only.
Databáze: OpenAIRE