Human error probability prediction for cargo sampling process on chemical tanker ship under extended SLIM Evidential Reasoning approach

Sukru Ilke Sezer, E. Akyuz, O. Arslan
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Abstract

Cargo sampling, which indicates the condition of the cargo on the ship, is one of the importantchemical tanker shipboard operations where human performance is prominent. Any negligence during thecargo sampling process can result in loss of human life, environmental disasters and financial losses.Therefore, evaluating human performance in the cargo sampling process on chemical tanker ships is vitalto avoid these. This paper aims to evaluate the contribution of human errors to the cargo sampling process.Hence, the Success Probability Index Method (SLIM) is conducted, incorporating Evidential Reasoning(ER) approach. While SLIM systematically predicts human error probabilities (HEP) consideringperformance shaping factors (PSFs), ER deals with the uncertain and subjective judgments of experts inthe step of rating and weighting PSFs. Based on the presented ER-SLIM model, HEP can be estimated byaggregating the belief degree of the experts and human performance for the cargo sampling process can beevaluated. The outputs of the paper provide a practical contribution to chemical tanker ship owners, healthsafety environment and quality (HSEQ) managers, maritime safety professionals and, chemical tankerofficers in order to minimize the probability of human error in the cargo sampling process, as well as thetheoretical background.
基于扩展SLIM证据推理方法的化工船货物取样过程人为误差概率预测
货物取样是化学品船船上作业的重要环节之一,它反映了船上货物的状况。货物取样过程中的任何疏忽都可能导致人员伤亡、环境灾难和经济损失。因此,评估人员在化学品船货物取样过程中的表现对于避免这些问题至关重要。本文旨在评估人为错误对货物取样过程的影响。在此基础上,结合证据推理方法,提出了成功概率指数法(SLIM)。SLIM系统地预测了考虑性能塑造因素(psf)的人为错误概率(HEP),而ER在对psf进行评级和加权的步骤中处理了专家的不确定性和主观判断。基于所提出的ER-SLIM模型,可以通过汇总专家的置信程度来估计HEP,并可以评估人员在货物取样过程中的表现。本文的成果为化学油轮船东、健康安全环境和质量(HSEQ)管理者、海事安全专业人员和化学油轮官员提供了实践贡献,以尽量减少货物取样过程中人为错误的可能性,以及理论背景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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