» Articles » PMID: 38771802

Dynamic Risk Assessment of a Coal Slurry Preparation System Based on the Structure-variable Dynamic Bayesian Network

Overview
Journal PLoS One
Date 2024 May 21
PMID 38771802
Authors
Affiliations
Soon will be listed here.
Abstract

In order to strengthen the safety management of coal slurry preparation systems, a dynamic risk assessment method was established by using the bow-tie (BT) model and the Structure-variable Dynamic Bayesian Network (SVDBN). First, the BT model was transformed into a static Bayesian network (BN) model of the failure of a coal slurry preparation system by using the bow-tie model and the structural similarity of the Bayesian cognitive science, based on the SVDBN recursive reasoning algorithm. The risk factors of the coal slurry preparation system were deduced using the Python language in two ways, and at the same time, preventive measures were put forward according to the weak links. In order to verify the accuracy and feasibility of this method, the simulation results were compared with those obtained using GeNIe software. The reasoning results of the two methods were very similar. Without considering maintenance factors, the failure rate of the coal slurry preparation system gradually increases with increasing time. When considering maintenance factors, the reliability of the coal slurry preparation system will gradually be maintained at a certain threshold, and the maintenance factors will increase the reliability of the system. The proposed method can provide a theoretical basis for the risk assessment and safety management of coal slurry preparation systems.

References
1.
Delvosalle C, Fievez C, Pipart A, Debray B . ARAMIS project: a comprehensive methodology for the identification of reference accident scenarios in process industries. J Hazard Mater. 2005; 130(3):200-19. DOI: 10.1016/j.jhazmat.2005.07.005. View

2.
Pouyakian M, Laal F, Jafari M, Nourai F, Kabir S . Fuzzy Bayesian estimation and consequence modeling of the domino effects of methanol storage tanks. Int J Occup Saf Ergon. 2021; 28(4):2509-2519. DOI: 10.1080/10803548.2021.2011656. View

3.
Laal F, Moradi Hanifi S, Madvari R, Khoshakhlagh A, Arefi M . Providing an approach to analyze the risk of central oxygen tanks in hospitals during the COVID-19 pandemic. Heliyon. 2023; 9(8):e18736. PMC: 10404783. DOI: 10.1016/j.heliyon.2023.e18736. View

4.
Mohammadi H, Laal F, Mohammadian F, Yari P, Kangavari M, Moradi Hanifi S . Dynamic risk assessment of storage tank using consequence modeling and fuzzy Bayesian network. Heliyon. 2023; 9(8):e18842. PMC: 10432177. DOI: 10.1016/j.heliyon.2023.e18842. View