Title :
Bayesian network model with dynamic structure identification for real time diagnosis
Author :
Dang Trinh Nguyen ; Quoc Bao Duong ; Zamai, Eric ; Shahzad, Muhammad Kashif
Author_Institution :
G-SCOP Lab., Grenoble-INP, Grenoble, France
Abstract :
This paper proposes a method for real time diagnosis against product quality drifts in an automated manufacturing system. We use Logical Diagnosis model to reduce the search space of suspected equipment in the production flow, which is then formulated as a Bayesian network to compute risk priority for each equipment, using joint and conditional probabilities. The objective is to quickly and accurately localize the possible fault origins and support effective decisions on corrective maintenance. The key advantages offered by this method are (i) reduced unscheduled equipment breakdowns, and (ii) increased and stable production capacities, required for success in highly competitive and automated manufacturing systems. Moreover, this is a generic method and can be deployed on fully or semi automated manufacturing systems.
Keywords :
Bayes methods; fault diagnosis; flexible manufacturing systems; product quality; production engineering computing; production equipment; Bayesian network model; conditional probabilities; dynamic structure identification; fully automated manufacturing systems; joint probabilities; logical diagnosis model; product quality drifts; production flow; real time diagnosis; reduced unscheduled equipment breakdowns; risk priority; search space; semiautomated manufacturing systems; stable production capacities; Computational modeling; Control systems; Maintenance engineering; Manufacturing systems; Real-time systems; Automated Manufacturing Systems; Bayesian network; Fault diagnosis; Logical diagnosis;
Conference_Titel :
Emerging Technology and Factory Automation (ETFA), 2014 IEEE
Conference_Location :
Barcelona
DOI :
10.1109/ETFA.2014.7005171