Interpretability of Causal Discovery in Tracking Deterioration in a Highly Dynamic Process

被引:1
作者
Choudhary, Asha [1 ]
Vukovic, Matej [1 ]
Mutlu, Belgin [1 ]
Haslgruebler, Michael [2 ]
Kern, Roman [3 ]
机构
[1] Pro2Future GmbH, Inffeldgasse 25F, A-8010 Graz, Austria
[2] Pro2Future GmbH, Altenberger Str 69, A-4040 Linz, Austria
[3] Graz Univ Technol, Inst Interact Syst & Data Sci ISDS, Rechbauerstr 12, A-8010 Graz, Austria
关键词
degradation monitoring; health monitoring; causal discovery; jaccard distance; interpretability; causal interpretability; ANOMALY DETECTION; NOVELTY DETECTION; NETWORKS;
D O I
10.3390/s24123728
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
In a dynamic production processes, mechanical degradation poses a significant challenge, impacting product quality and process efficiency. This paper explores a novel approach for monitoring degradation in the context of viscose fiber production, a highly dynamic manufacturing process. Using causal discovery techniques, our method allows domain experts to incorporate background knowledge into the creation of causal graphs. Further, it enhances the interpretability and increases the ability to identify potential problems via changes in causal relations over time. The case study employs a comprehensive analysis of the viscose fiber production process within a prominent textile industry, emphasizing the advantages of causal discovery for monitoring degradation. The results are compared with state-of-the-art methods, which are not considered to be interpretable, specifically LSTM-based autoencoder, UnSupervised Anomaly Detection on Multivariate Time Series (USAD), and Deep Transformer Networks for Anomaly Detection in Multivariate Time Series Data (TranAD), showcasing the alignment and validation of our approach. This paper provides valuable information on degradation monitoring strategies, demonstrating the efficacy of causal discovery in dynamic manufacturing environments. The findings contribute to the evolving landscape of process optimization and quality control.
引用
收藏
页数:35
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