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基于贝叶斯网络的危险货物作业港囗基础设施风险评估。

Seaport infrastructure risk assessment for hazardous cargo operations using Bayesian networks.

机构信息

State Key Laboratory of Ocean Engineering, Department of Transportation Engineering, School of Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.

State Key Laboratory of Ocean Engineering, Department of Transportation Engineering, School of Ocean and Civil Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.

出版信息

Mar Pollut Bull. 2024 Nov;208:116966. doi: 10.1016/j.marpolbul.2024.116966. Epub 2024 Sep 13.

Abstract

Seaport infrastructure requires considerable resources and time for a full recovery from accidents caused by hazardous cargo. Despite their severity, the risk to seaport infrastructure from hazardous cargo operations has been insufficiently explored. This study aims to fill that gap by examining the risks to seaport infrastructure from the complex effects of hazardous cargo operations. It draws on literature, incident reports, and expert consultations to identify comprehensive risk factors and their interconnections. The study employs expert judgments alongside logistic regression to develop Conditional Probability Tables (CPTs) and conducts a risk analysis using Bayesian networks (BN). Our findings indicate that, under typical operating conditions, fire and explosion, corrosion, and improper handling are the most significant contributors to seaport infrastructure risk with probabilities of 8.73 %, 5.88 %, and 5.61 % respectively. Inverse propagation indicates that the contribution of improper handling and corrosion is enhanced by 153 % and 96 % respectively towards the increased risk. A sensitivity analysis was carried out to pinpoint critical risk factors. Based on these insights, the study suggests practical measures like the use of tracking and monitoring systems along with third-party audits for effective handling, augmented and virtual reality for advanced training, and automation technology for reduced human roles to subside risks to seaport infrastructure and promote uninterrupted operations.

摘要

港口基础设施从危险货物事故中完全恢复需要大量的资源和时间。尽管其严重性很高,但危险货物作业对港口基础设施的风险尚未得到充分探讨。本研究旨在通过检查危险货物作业的复杂影响对港口基础设施的风险来填补这一空白。它借鉴了文献、事故报告和专家咨询,以确定全面的风险因素及其相互关系。该研究采用专家判断和逻辑回归来开发条件概率表 (CPT),并使用贝叶斯网络 (BN) 进行风险分析。我们的研究结果表明,在典型的操作条件下,火灾和爆炸、腐蚀和不当处理是对港口基础设施风险的最大贡献,其概率分别为 8.73%、5.88%和 5.61%。反向传播表明,不当处理和腐蚀的贡献分别增加了 153%和 96%,从而增加了风险。进行了敏感性分析以确定关键风险因素。基于这些见解,本研究提出了一些实用措施,例如使用跟踪和监测系统以及第三方审计来进行有效处理,使用增强和虚拟现实进行高级培训,以及使用自动化技术减少人为角色,以减轻港口基础设施的风险并促进其持续运行。

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