Decision Support for Maintenance Management Using Bayesian Networks

The maintenance process has undergone several major developments that have led to proactive considerations and the transformation of the traditional "fail and fix" practice into the "predict and prevent" proactive maintenance methodology. The anticipation action, which characterizes this proactive maintenance strategy, is mainly based on monitoring, diagnosis, prognosis and decision-making modules. Oil monitoring is a key component of successful condition monitoring program. It can be used as a proactive tool to identify the wear modes of rubbing pars and diagnoses the faults in machinery. But diagnosis application relying on oil analysis technology must deal with uncertain knowledge and fuzzy input data. Besides other methods, Bayesian networks have been extensively applied to fault diagnosis with the advantages of uncertainty inference, however, in the area of oil monitoring, it is a new field. This paper develops an integrated Bayesian network based decision support system for maintenance of diesel.

[1]  Li Zhong Intelligent Diagnosis on Diesel Locomotive's Wear Fault Based on Framework based Expert System and Fuzzy Logic , 1999 .

[2]  Xinping Yan,et al.  Research on Multi-agent System Model of Diesel Engine Fault Diagnosis by Case-Based Reasoning , 2006, First International Conference on Innovative Computing, Information and Control - Volume I (ICICIC'06).

[3]  Zhiyong Lu,et al.  A study of information technology used in oil monitoring , 2005 .

[4]  Rubo Zhang,et al.  Fault Diagnosis of AUV Based on Bayesian Networks , 2006, First International Multi-Symposiums on Computer and Computational Sciences (IMSCCS'06).

[5]  Benoît Iung,et al.  Formalisation of a new prognosis model for supporting proactive maintenance implementation on industrial system , 2008, Reliab. Eng. Syst. Saf..

[6]  Sze-jung Wu,et al.  A Neural Network Integrated Decision Support System for Condition-Based Optimal Predictive Maintenance Policy , 2007, IEEE Transactions on Systems, Man, and Cybernetics - Part A: Systems and Humans.

[7]  David Heckerman,et al.  Bayesian Networks for Data Mining , 2004, Data Mining and Knowledge Discovery.

[8]  Liu,et al.  Study on Lubricating Oil Monitoring Technology , 2006 .