基于马尔可夫链方法和概率风险矩阵的海事事故长期预期风险估计

IF 3.3 Q2 TRANSPORTATION Asian Journal of Shipping and Logistics Pub Date : 2023-09-01 DOI:10.1016/j.ajsl.2023.04.002
Dong Jin Kim, Ji Min Sur, Hyeon U. Cho
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引用次数: 0

摘要

在许多定性、半定量或定量的风险评估技术中,风险矩阵是通过将事故的频率和后果分配到预先划分的频率和结果类别之一来评估风险的常用工具。然而,由于没有标准化的方法来定义这些类别,风险矩阵具有易于使用和解释的优势,具有固有的不确定性,包括客观的分类确定以及不同用户之间关于频率和后果的决策的一致性,这通常会导致多种风险结果,导致对事故引发的风险决策的错误结论。本研究的目的是使用5×5概率风险矩阵预测海事事故的长期风险,其中每一类频率和后果都通过马尔可夫链模型进行概率估计。使用2016-2020年的海事事故数据说明了所提出的事故风险计算方法。研究结果表明,海上事故最可能发生的频率和后果范围分别在182至235人之间,概率为0.3878人,6.8至11.6人死亡,概率为0.3791人。预期风险值计算为4.6506,评分标准为2-10。为了验证所提出的方法,构建了90%、95%和99%的置信区间,这些置信区间被证明包含预测的风险值。马尔可夫链方法的概率风险矩阵可以应用于不同行业领域的风险预测。
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A long term expected risk estimation of maritime accidents through Markov chain approach and probabilistic risk matrix

Among many risk assessment techniques, qualitative, semi-quantitative or quantitative, risk matrix is a common tool to assess risk by allocating frequency and consequence of an accident to one of the pre divided frequency and consequence categories. However, since there is no standardized way to define these categories, risk matrix with its strength of being straightforward to use and easy to interpret has inherent uncertainties including objective categorization determination and consistency of decisions on frequency and consequence among different users, which usually results in multiple risk outcomes leading to incorrect conclusion about decision making on risk initiated from accidents.

The purpose of the study is to predict a long term risk of maritime accident using a 5 × 5 probabilistic risk matrix where each category of frequency and consequence is probabilistically estimated by a Markov chain model. The proposed method to calculate accident risk is illustrated using maritime accident data over 2016–2020 years. The findings are that the most probable frequency and consequence ranges of maritime accidents will be between 182 and 235 with probability of 0.3878 and between 6.8 and 11.6 fatalities with probability of 0.3791, respectively. The expected risk value was computed as 4.6506 on a scale of 2–10. For the validation of the proposed method 90 %, 95 %, and 99 % confidence intervals were constructed which were shown to contain the predicted risk value. The probabilistic risk matrix with Markov chain approach can be applied to predicting risks in different fields of industries.

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来源期刊
CiteScore
7.80
自引率
6.50%
发文量
23
审稿时长
92 days
期刊最新文献
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