Bayesian network-based risk evaluation model for the operational requirements of the China Railway Express under the Belt and Road initiative

IF 2.7 4区 工程技术 Q2 TRANSPORTATION SCIENCE & TECHNOLOGY
Fenling Feng, Junjie Jia, Ailan Liang, Chengguang Liu
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引用次数: 0

Abstract

The operation of the China Railway Express features numerous links across several regions and countries. Effectively controlling the risks involved in the operation of the China Railway Express is crucial for ensuring safety and efficiency and promoting the sustainable development of the China Railway Express. The Bayesian network-based risk-management model was built corresponding to the actual operation of the China Railway Express; the model used an advanced risk-management theory. The sensitivity analysis of risk factors and Bayesian network inference were realized using the expectation-maximization and clique-tree propagation algorithms. Using the risk-checklist method, 17 risk-related factors were analysed on 17 nodes of the Bayesian network from three perspectives—safety, efficiency and effectiveness—based on expert opinions and the actual operating conditions of the China Railway Express. Data from a sensitivity analysis and evidence inference of the Bayesian network model indicated that the sensitivity coefficients of nodes N01, N04, N07, N08 and N17 of the network were high. Moreover, the risk-occurrence probabilities for nodes N01, N04, N06, N07 and N09 were higher in the case of reverse inference. Our results revealed the crucial factors influencing the risk. The identified risk factors included the stability of the political environment in countries along the route, conditions of station infrastructures and the complexity of the process of changing rails and reloading. Further, risk-management suggestions were provided. By establishing a sound risk-management framework, reliable assessment and management could be realized in accordance with changes in the operating conditions of the China Railway Express.
基于贝叶斯网络的“一带一路”下中国铁路快运运营需求风险评估模型
中国铁路快线的运营特点是跨越多个地区和国家的众多联系。有效控制中铁快运运营中的风险,是确保中铁快运安全高效、促进中铁快运可持续发展的关键。针对中铁快线实际运营情况,建立了基于贝叶斯网络的风险管理模型;该模型采用了先进的风险管理理论。利用期望最大化和派系树传播算法实现了风险因素的敏感性分析和贝叶斯网络推理。基于专家意见和中铁快线实际运营情况,采用风险清单法,从安全、效率和有效性三个角度对贝叶斯网络17个节点上的17个风险相关因素进行分析。贝叶斯网络模型的敏感性分析和证据推理数据表明,网络节点N01、N04、N07、N08和N17的敏感性系数较高。反向推理情况下,节点N01、N04、N06、N07和N09的风险发生概率更高。我们的研究结果揭示了影响风险的关键因素。确定的风险因素包括沿线国家政治环境的稳定性、车站基础设施的条件以及改变轨道和重新装载过程的复杂性。此外,还提出了风险管理建议。通过建立完善的风险管理框架,可以根据中铁快线运营情况的变化,实现可靠的评估和管理。
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来源期刊
Transportation Safety and Environment
Transportation Safety and Environment TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
3.90
自引率
13.60%
发文量
32
审稿时长
10 weeks
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