A novel learning cloud Bayesian network for risk measurement

Bayesian network (BN) is a popularly used approach for risk analysis. Because it is a graphic model being able to deal with randomness yet unable to model ambiguity, the fuzzy set theory is often combined with it to create a so-called fuzzy BN. Instead of using the classical fuzzy set theory, this p...

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Main Authors: Chen, Chen, Zhang, Limao, Tiong, Robert Lee Kong
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2021
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Online Access:https://hdl.handle.net/10356/154426
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1544262021-12-22T07:09:11Z A novel learning cloud Bayesian network for risk measurement Chen, Chen Zhang, Limao Tiong, Robert Lee Kong School of Civil and Environmental Engineering Engineering::Civil engineering Bayesian Network Uncertainty Modeling Bayesian network (BN) is a popularly used approach for risk analysis. Because it is a graphic model being able to deal with randomness yet unable to model ambiguity, the fuzzy set theory is often combined with it to create a so-called fuzzy BN. Instead of using the classical fuzzy set theory, this paper intends to combine a normal Cloud model with the BN. In the normal Cloud model, an element belonging to a certain qualitative concept is not certain and precise as well. The Cloud BN is a generalization of the fuzzy BN. It is more adaptive for the uncertainty description of linguistic concepts, for example, the risks. Using the normal Cloud model, the following numerical characteristics of the variables can be estimated: the expectation, the dispersion degree compared with the expectation, and the dispersion degree of entropy. Consequently, the risk assessment contains a richer set of analytical information. Cloud BNs attract growing research interests. Compared to its precedents, the Cloud BN in this paper has a learning capability. Since the risk factors may have a combined effect, the causal relationships among the variables can be very complex, and hidden variables may exist. The learning mechanism allows for automatic structure discovery from data, giving rise to a dynamically evolving network. The proposed learning Cloud BN is able to represent the real risk situation better than its precedents. Its effectiveness and applicability are demonstrated by an illustrative case for risk prediction of the face instability in an underground tunnel construction project. Ministry of Education (MOE) Nanyang Technological University The Start-Up Grant at Nanyang Technological University, Singapore (No. M4082160.030) and the Ministry of Education Grant, Singapore (No. M4011971.030) are acknowledged for their financial support of this research. 2021-12-22T07:09:11Z 2021-12-22T07:09:11Z 2020 Journal Article Chen, C., Zhang, L. & Tiong, R. L. K. (2020). A novel learning cloud Bayesian network for risk measurement. Applied Soft Computing Journal, 87, 105947-. https://dx.doi.org/10.1016/j.asoc.2019.105947 1568-4946 https://hdl.handle.net/10356/154426 10.1016/j.asoc.2019.105947 2-s2.0-85076009216 87 105947 en M4082160.030 M4011971.030 Applied Soft Computing Journal © 2019 Elsevier B.V. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Bayesian Network
Uncertainty Modeling
spellingShingle Engineering::Civil engineering
Bayesian Network
Uncertainty Modeling
Chen, Chen
Zhang, Limao
Tiong, Robert Lee Kong
A novel learning cloud Bayesian network for risk measurement
description Bayesian network (BN) is a popularly used approach for risk analysis. Because it is a graphic model being able to deal with randomness yet unable to model ambiguity, the fuzzy set theory is often combined with it to create a so-called fuzzy BN. Instead of using the classical fuzzy set theory, this paper intends to combine a normal Cloud model with the BN. In the normal Cloud model, an element belonging to a certain qualitative concept is not certain and precise as well. The Cloud BN is a generalization of the fuzzy BN. It is more adaptive for the uncertainty description of linguistic concepts, for example, the risks. Using the normal Cloud model, the following numerical characteristics of the variables can be estimated: the expectation, the dispersion degree compared with the expectation, and the dispersion degree of entropy. Consequently, the risk assessment contains a richer set of analytical information. Cloud BNs attract growing research interests. Compared to its precedents, the Cloud BN in this paper has a learning capability. Since the risk factors may have a combined effect, the causal relationships among the variables can be very complex, and hidden variables may exist. The learning mechanism allows for automatic structure discovery from data, giving rise to a dynamically evolving network. The proposed learning Cloud BN is able to represent the real risk situation better than its precedents. Its effectiveness and applicability are demonstrated by an illustrative case for risk prediction of the face instability in an underground tunnel construction project.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Chen, Chen
Zhang, Limao
Tiong, Robert Lee Kong
format Article
author Chen, Chen
Zhang, Limao
Tiong, Robert Lee Kong
author_sort Chen, Chen
title A novel learning cloud Bayesian network for risk measurement
title_short A novel learning cloud Bayesian network for risk measurement
title_full A novel learning cloud Bayesian network for risk measurement
title_fullStr A novel learning cloud Bayesian network for risk measurement
title_full_unstemmed A novel learning cloud Bayesian network for risk measurement
title_sort novel learning cloud bayesian network for risk measurement
publishDate 2021
url https://hdl.handle.net/10356/154426
_version_ 1720447184682352640