Improved Bayesian Network-Based Risk Model and Its Application in Disaster Risk Assessment

Abstract The application of Bayesian network (BN) theory in risk assessment is an emerging trend. But in cases where data are incomplete and variables are mutually related, its application is restricted. To overcome these problems, an improved BN assessment model with parameter retrieval and decorre...

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Bibliographic Details
Published in:International Journal of Disaster Risk Science
Main Authors: Ming Li, Mei Hong, Ren Zhang
Format: Article in Journal/Newspaper
Language:English
Published: SpringerOpen 2018
Subjects:
Online Access:https://doi.org/10.1007/s13753-018-0171-z
https://doaj.org/article/8445e0ad818646e8a1b093686827b9a4
Description
Summary:Abstract The application of Bayesian network (BN) theory in risk assessment is an emerging trend. But in cases where data are incomplete and variables are mutually related, its application is restricted. To overcome these problems, an improved BN assessment model with parameter retrieval and decorrelation ability is proposed. First, multivariate nonlinear planning is applied to the feedback error learning of parameters. A genetic algorithm is used to learn the probability distribution of nodes that lack quantitative data. Then, based on an improved grey relational analysis that considers the correlation of variation rate, the optimal weight that characterizes the correlation is calculated and the weighted BN is improved for decorrelation. An improved risk assessment model based on the weighted BN then is built. An assessment of sea ice disaster shows that the model can be applied for risk assessment with incomplete data and variable correlation.