ABSTRACT: Bayesian networks (BNs) provide an excellent framework for modeling system
performance, particularly in near-real time applications when it is necessary to update models in
light of observations. However, BNs can be very demanding of computer memory and inference
can become intractable if care is not taken to optimize their topology. In this paper, efficient
BN formulations for modeling system performance are presented. First, formulations are developed
for series and parallel systems. Then, results are extended to general systems for which the
minimal link and/or cut sets are known. Finally, an optimization algorithm is developed to automate
the generation of efficient BN formulations for modeling system performance.
«
ABSTRACT: Bayesian networks (BNs) provide an excellent framework for modeling system
performance, particularly in near-real time applications when it is necessary to update models in
light of observations. However, BNs can be very demanding of computer memory and inference
can become intractable if care is not taken to optimize their topology. In this paper, efficient
BN formulations for modeling system performance are presented. First, formulations are developed
for series and parallel sys...
»