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使用模糊集、贝叶斯网络和 CREAM 的混合技术预测烃类公路罐车装货作业中的人为错误概率。

Prediction of human error probability during the hydrocarbon road tanker loading operation using a hybrid technique of fuzzy sets, Bayesian network and CREAM.

机构信息

Department of Ergonomics and Occupational Health and Safety Research Center, School of Public Health, Hamadan University of Medical Sciences, Iran.

Health, Safety, and Environment (HSE) and Process Safety consultant, Iran.

出版信息

Int J Occup Saf Ergon. 2022 Sep;28(3):1342-1352. doi: 10.1080/10803548.2021.1889877. Epub 2021 Mar 19.

Abstract

The hydrocarbon road tanker loading operation is vulnerable to human error. The present study aimed to develop a methodology for predicting human error probabilities (HEPs) in various subtasks of this operation. First, task analysis was performed using hierarchal task analysis. Then, HEP was calculated using a hybrid technique of fuzzy set theory (FST), Bayesian network (BN) and cognitive reliability and error analysis method (CREAM). FST was used for handling uncertainties regarding common performance conditions (CPCs) and the BN was employed for modeling the interrelationships among CPCs and HEPs. The weighted sum algorithm was used for quantifying conditional probability tables in the network. . Twenty-six subtasks were required for completing the road tanker loading operation. Investigating the internal parts of the tanker before the loading operation and attaching the ground rode clamp were the subtasks with highest HEPs. Working conditions and crew collaboration were the CPCs with the highest contribution to these errors. HEP was most sensitive to crew collaboration. . Improving collaboration among the driver, site operators and control room operators, as well as increasing the knowledge of the road tanker driver regarding the hazards of incompatible chemicals, are the best practices for reducing HEPs in this operation.

摘要

烃类道路油罐车装货作业容易出现人为失误。本研究旨在开发一种方法,用于预测该作业中各种子任务的人为失误概率(HEP)。首先,使用层次任务分析进行任务分析。然后,使用模糊集理论(FST)、贝叶斯网络(BN)和认知可靠性和失误分析方法(CREAM)的混合技术计算 HEP。FST 用于处理常见性能条件(CPC)的不确定性,而 BN 用于建模 CPC 和 HEP 之间的相互关系。加权和算法用于量化网络中的条件概率表。完成道路油罐车装货作业需要 26 个子任务。在装货作业前检查油罐车内部部件和连接地面导电线夹是 HEP 最高的子任务。工作条件和机组协作是导致这些失误的 CPCs 中贡献最高的。HEP 对机组协作最为敏感。提高驾驶员、现场操作人员和控制室操作人员之间的协作,以及提高道路油罐车驾驶员对不相容化学品危害的认识,是降低该作业中 HEP 的最佳实践。

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