TY - JOUR
T1 - A data-driven Bayesian network model integrating physical knowledge for prioritization of risk influencing factors
AU - Meng, Huixing
AU - An, Xu
AU - Xing, Jinduo
N1 - Publisher Copyright:
© 2022 The Institution of Chemical Engineers
PY - 2022/4
Y1 - 2022/4
N2 - The coupling of multiple factors stemming from propagation effects and interdependency relationships among risks is prone to generate major accidents. It is of necessity to develop a feasible model with limited cases, which can generate reliable causal relationship evolution. To prioritize risk-influencing factors (RIFs) and investigate their relationships, we proposed a data-driven Bayesian Network (BN) model integrating physical information for risk analysis. Based on collected data, we combined prior knowledge with structure learning and parameter learning to obtain a BN model. In structure learning, we compared three structure learning algorithms including Bayesian search (BS), greedy thick thinning (GTT), and PC algorithm to obtain a robust directed acyclic graph (DAG). In parameter learning, we selected the expectation maximization (EM) algorithm to quantify the dependence and determine the probability distribution of node variables. This study provides a method to capture crucial factors and their interdependent relationships. To illustrate the applicability of the model, we developed a data-driven BN by taking the blowout accident as the case study. Eventually, we introduced vulnerability and resilience metrics for prioritizing risks through network propagation to conduct emergency plans and mitigation strategies.
AB - The coupling of multiple factors stemming from propagation effects and interdependency relationships among risks is prone to generate major accidents. It is of necessity to develop a feasible model with limited cases, which can generate reliable causal relationship evolution. To prioritize risk-influencing factors (RIFs) and investigate their relationships, we proposed a data-driven Bayesian Network (BN) model integrating physical information for risk analysis. Based on collected data, we combined prior knowledge with structure learning and parameter learning to obtain a BN model. In structure learning, we compared three structure learning algorithms including Bayesian search (BS), greedy thick thinning (GTT), and PC algorithm to obtain a robust directed acyclic graph (DAG). In parameter learning, we selected the expectation maximization (EM) algorithm to quantify the dependence and determine the probability distribution of node variables. This study provides a method to capture crucial factors and their interdependent relationships. To illustrate the applicability of the model, we developed a data-driven BN by taking the blowout accident as the case study. Eventually, we introduced vulnerability and resilience metrics for prioritizing risks through network propagation to conduct emergency plans and mitigation strategies.
KW - Bayesian network
KW - Data-driven
KW - Prioritizing risks
KW - Risk-influencing factor
UR - http://www.scopus.com/inward/record.url?scp=85125112716&partnerID=8YFLogxK
U2 - 10.1016/j.psep.2022.02.010
DO - 10.1016/j.psep.2022.02.010
M3 - Article
AN - SCOPUS:85125112716
SN - 0957-5820
VL - 160
SP - 434
EP - 449
JO - Process Safety and Environmental Protection
JF - Process Safety and Environmental Protection
ER -