A DIAGNOSTICS AND PROGNOSTICS FRAMEWORK FOR MULTI-COMPONENT SYSTEMS WITH WEAR INTERACTIONS: APPLICATION TO A GEARBOX-PLATFORM

Autor: Roy Assaf, Phuc Do, Phil Scarf
Rok vydání: 2022
Předmět:
Zdroj: Pesquisa Operacional, Volume: 42, Issue: spe1, Article number: e264770, Published: 12 DEC 2022
ISSN: 1678-5142
0101-7438
DOI: 10.1590/0101-7438.2022.042nspe1.00264770
Popis: We present a novel framework for diagnostics and prognostics for multi-component systems with wear interaction between components. The principal elements of this framework are: health-state indicator extraction using signal-processing; clustering of wear phases using a Gaussian mixture model; a stochastic multivariate wear model; and prediction of the remaining-useful-life of components using particle-filtering. These elements of the framework are illustrated and verified using an experimental platform that generates real data. Our diagnostics study shows that different clusters not only indicate the wear-state, but also the wear-rate of the components. Furthermore, our prognostics study shows that the wear-interaction between components has an significant impact in predicting the remaining-useful-life for components. Thus, we demonstrate, for prognostics and health management, the importance of modeling wear interactions in the prognostic process of multi-component systems.
Databáze: OpenAIRE