An extended quantitative risk analysis model by incorporating human and organizational factors
2011
In this paper, a quantitative risk analysis (QRA) model incorporating human and organizational factor is presented by integrating Fault Tree (FT) with Bayesian Network (BN). FT is used to model the factors how to contribute to the final failures. BN extends the causal chain of basic events to potential human and organizational roots and provides a more precise quantitative links between the event nodes. In order to define the conditional probability table of BN, fuzzy Analytical Hierarchy Process (AHP) is integrated with a decomposition method. The fuzzy AHP helps to reduce the subjective biases by avoiding the need to spell out explicit probability values for the variables' states. The decomposition method breaks the complexity by allowing conditioning on each of the parent nodes separately. The new QRA model is demonstrated on an offshore fire case study. By exploiting the advantages of both models, the method of combining FT and BN is normally a more detailed risk model with higher resolution, comparing with traditional QRA.
Keywords:
- Fault tree analysis
- Decomposition method (constraint satisfaction)
- Reliability engineering
- Analytic hierarchy process
- Fuzzy logic
- Fuzzy set
- Conditioning
- Machine learning
- Bayesian network
- Artificial intelligence
- Computer science
- Risk analysis (business)
- Conditional probability table
- Data mining
- Bayesian probability
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