A discrete-time Bayesian network reliability modeling and analysis framework

Dependability tools are becoming an indispensable tool for modeling and analyzing (critical) systems. However the growing complexity of such systems calls for increasing sophistication of these tools. Dependability tools need to not only capture the complex dynamic behavior of the system components,...

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Veröffentlicht in:Reliability engineering & system safety 2005-03, Vol.87 (3), p.337-349
Hauptverfasser: Boudali, H., Dugan, J.B.
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container_title Reliability engineering & system safety
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creator Boudali, H.
Dugan, J.B.
description Dependability tools are becoming an indispensable tool for modeling and analyzing (critical) systems. However the growing complexity of such systems calls for increasing sophistication of these tools. Dependability tools need to not only capture the complex dynamic behavior of the system components, but they must be also easy to use, intuitive, and computationally efficient. In general, current tools have a number of shortcomings including lack of modeling power, incapacity to efficiently handle general component failure distributions, and ineffectiveness in solving large models that exhibit complex dependencies between their components. We propose a novel reliability modeling and analysis framework based on the Bayesian network (BN) formalism. The overall approach is to investigate timed Bayesian networks and to find a suitable reliability framework for dynamic systems. We have applied our methodology to two example systems and preliminary results are promising. We have defined a discrete-time BN reliability formalism and demonstrated its capabilities from a modeling and analysis point of view. This research shows that a BN based reliability formalism is a powerful potential solution to modeling and analyzing various kinds of system components behaviors and interactions. Moreover, being based on the BN formalism, the framework is easy to use and intuitive for non-experts, and provides a basis for more advanced and useful analyses such as system diagnosis.
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1879-0836
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subjects Applied sciences
Computer science
control theory
systems
Computer systems performance. Reliability
Diagnosis
Dynamic systems
Exact sciences and technology
Operational research and scientific management
Operational research. Management science
Probabilistic risk assessment
Reliability analysis
Reliability modeling
Risk theory. Actuarial science
Software
Temporal Bayesian networks
title A discrete-time Bayesian network reliability modeling and analysis framework
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