Applying object-oriented bayesian networks for smart diagnosis and health monitoring at both component and factory level

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Abstract

To support health monitoring and life-long capability management for self-sustaining manufacturing systems, next generation machine components are expected to embed sensory capabilities combined with advanced ICT. The combination of sensory capabilities and the use of Object-Oriented Bayesian Networks (OOBNs) supports self-diagnosis at the component level enabling them to become self-aware and support self-healing production systems. This paper describes the use of a modular component-based modelling approach enabled by the use of OOBNs for health monitoring and root-cause analysis of manufacturing systems using a welding controller produced by Harms & Wende (HWH) as an example. The model is integrated into the control software of the welding controller and deployed as a SelComp using the SelSus Architecture for diagnosis and predictive maintenance. The Sel-Comp provides diagnosis and condition monitoring capabilities at the component level while the SelSus Architecture provides these capabilities at a wider system level. The results show significant potential of the solution developed.

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Madsen, A. L., Søndberg-Jeppesen, N., Sayed, M. S., Peschl, M., & Lohse, N. (2017). Applying object-oriented bayesian networks for smart diagnosis and health monitoring at both component and factory level. In Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics) (Vol. 10351 LNCS, pp. 132–141). Springer Verlag. https://doi.org/10.1007/978-3-319-60045-1_16

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