基于机器学习的危险事件安全屏障概念文献综述

IF 3.6 3区 工程技术 Q2 ENGINEERING, CHEMICAL
Elena Stefana , Marilia Ramos , Nicola Paltrinieri
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引用次数: 0

摘要

确定和实施有效的安全屏障是任何安全管理过程的核心目标。安全屏障,无论是有形的还是非有形的,都能起到预防或减轻危险事件的作用。对这一主题的兴趣激发了广泛的研究活动,仅靠人类分析人员很难对其进行调查和总结。在这种情况下,数据驱动方法可以帮助筛选和审查有关安全屏障的大量资料。然而,据我们所知,这一点尚未得到解决。为此,我们建议采用基于机器学习的无监督自动聚类技术,对安全屏障概念进行系统的文献综述。为确保自动聚类的有效性,我们还进行了人工清理。结果,我们从 Scopus 数据库中检索到了截至 2023 年发表的 769 篇文章,并将其归入 21 个相关群组。这些聚类体现了安全屏障的主要研究流派,包括风险评估方法、估算事件概率的定量方法、设计和管理原则,以及安全屏障在关键领域和工业领域的应用。因此,本文主张利用安全科学中的科学计量分析和绘图所提供的潜力,采用不同的视角来研究安全屏障知识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning-based literature review on the concept of safety barriers against hazardous events
The identification and implementation of effective safety barriers represent the core aim of any safety management process. Safety barriers, whether physical and/or non-physical, serve to prevent or mitigate hazardous events. The interest towards this topic has stimulated a wide spectrum of research activities that is difficult to investigate and summarise by only human analysts. In such a context, data-driven methods could assist the screening and review of the extensive number of contributions on safety barriers. However, to the best of our knowledge, this has not been addressed yet. For this reason, we propose a systematic literature review of the concept of safety barriers by employing an automated unsupervised Machine Learning-based clustering technique. To ensure the effectiveness of the automated clustering, we also performed a manual cleansing. As a result, 769 articles published until 2023 were retrieved from the Scopus database, and were grouped into 21 relevant cluster. Such clusters characterise the main research streams on the safety barriers, including risk assessment approaches, quantitative methods estimating event probabilities, design and management principles, and applications of the barriers in critical and industrial domains. This paper thus advocates for adopting a different perspective to investigate the safety barrier knowledge, by leveraging on the potentialities offered by the scientometric analysis and mapping in the safety science.
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来源期刊
CiteScore
7.20
自引率
14.30%
发文量
226
审稿时长
52 days
期刊介绍: The broad scope of the journal is process safety. Process safety is defined as the prevention and mitigation of process-related injuries and damage arising from process incidents involving fire, explosion and toxic release. Such undesired events occur in the process industries during the use, storage, manufacture, handling, and transportation of highly hazardous chemicals.
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