Keywords :
anomaly detection; causal graphs; diagnosis; fault detection; intelligent decision support systems in manufacturing; root cause analysis; sensor networks; Anomaly detection; Causal graph; Faults detection; Intelligent decision support system in manufacturing; Intelligent decision-support systems; Network-based; Production line; Root cause; Root cause analysis; Sensors network; Control and Systems Engineering; fault detection and diagnosis
Abstract :
[en] Small deviations in the production cycle can cause expensive downtime or quality deviations in high-volume, high-precision production lines. If no precise root cause can be identified, only the symptoms are eliminated, resulting in a pattern of repetitive failures and temporary remedial measures. This paper presents a knowledge-based framework and algorithm that combines network science and graph theory to detect anomalies and identify root causes. The approach converts multivariate time series data into temporal multiplex recurrence networks and uses eigenvalue-based anomaly detection in addition to causal process graphs (CPGs). The framework is evaluated on a simulated pick-and-place production line with four failure scenarios. This contributes to a causal and transparent identification of root causes, which will be benchmarked against other methods in future work using real manufacturing data.
Funders :
et al.
International Federation of Automatic Control (IFAC) - Management and Control in Manufacturing and Logistics, TC 5.2.
International Federation of Automatic Control (IFAC) - TC 1.3. Discrete Event and Hybrid Systems
International Federation of Automatic Control (IFAC) - TC 3.2. Computational Intelligence in Control
International Federation of Automatic Control (IFAC) - TC 5.1. Manufacturing Plant Control
International Federation of Automatic Control (IFAC) - TC 7.4. Transportation Systems
Scopus citations®
without self-citations
0