Application of machine learning in fault diagnostics of mechanical systems


Autoria(s): Najafi, Massieh; Auslander, David M.; Bartlett, Peter L.; Haves, Philip
Data(s)

2008

Resumo

A diagnostic method based on Bayesian Networks (probabilistic graphical models) is presented. Unlike conventional diagnostic approaches, in this method instead of focusing on system residuals at one or a few operating points, diagnosis is done by analyzing system behavior patterns over a window of operation. It is shown how this approach can loosen the dependency of diagnostic methods on precise system modeling while maintaining the desired characteristics of fault detection and diagnosis (FDD) tools (fault isolation, robustness, adaptability, and scalability) at a satisfactory level. As an example, the method is applied to fault diagnosis in HVAC systems, an area with considerable modeling and sensor network constraints.

Identificador

http://eprints.qut.edu.au/45707/

Publicador

International Association of Engineers

Relação

http://www.iaeng.org/WCECS2008/index.html

Najafi, Massieh, Auslander, David M. , Bartlett, Peter L., & Haves, Philip (2008) Application of machine learning in fault diagnostics of mechanical systems. In Proceedings of the World Congress on Engineering and Computer Science 2008: International Conference on Modeling, Simulation and Control 2008, International Association of Engineers, San Fransisco, pp. 957-962.

Direitos

Copyright 2008 [please consult the author]

Fonte

Faculty of Science and Technology; Mathematical Sciences

Palavras-Chave #091300 MECHANICAL ENGINEERING #Fault detection #Bayesian networks #Machine learning #System diagnostics #HVAC systems
Tipo

Conference Paper