Identification and classification protocol for complex systems

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N-H. Tran M-F. Bouaziz E. Zamaï

Abstract

This paper proposes a test protocol for drift identification and classification in a complex production system. The key objective here is to develop a classifier for failure causes where variables depend on a set of measured parameters. In the context of our work, we assume that the drift problem of a production system is generally observed in control products phase. The model proposed in this paper for failure causes classification is structured in the form of a causeseffects graph based on Hierarchical Naïve Bayes formalism (HNB). Our key contribution in this is the methodology that
allows developing failure causes classification test model in the complex and uncertain manufacturing context.

How to Cite

Tran, N.-H., Bouaziz, M.-F., & Zamaï, E. (2014). Identification and classification protocol for complex systems. PHM Society European Conference, 2(1). https://doi.org/10.36001/phme.2014.v2i1.1518
Abstract 61 | PDF Downloads 19

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Keywords

classification, maintenance, decision support, Equipment health factor, Hierarchical Naïve Bayes networks, Complex systems

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Section
Technical Papers

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