Efficient Dependency Computation for Dynamic Hybrid Bayesian Network in On-line System Health Management Applications

Chonlagarn Iamsumang, Ali Mosleh, and Mohammad Modarres
Submission Type: 
Full Paper
AttachmentSizeTimestamp
phmc_14_035.pdf6.51 MBSeptember 9, 2014 - 7:17am

This paper presents a new dependency computational algorithm for reliability inference with dynamic hybrid Bayesian network. It features a component-based algorithm and structure to represent complex engineering systems characterized by discrete functional states (including degraded states), and models of underlying physics of failure, with continuous variables. The methodology is designed to be flexible and intuitive, and scalable from small localized functionality to large complex dynamic systems. Markov Chain Monte Carlo (MCMC) inference is optimized using pre-computation and dynamic programming for real-time monitoring of system health. The scope of this research includes new modeling approach, computation algorithm, and an example application for on-line System Health Management.

Publication Year: 
2014
Publication Volume: 
5
Publication Control Number: 
035
Submission Topic Areas: 
Health management system design and engineering
Submitted by: 
  
 
 
 

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