4.5 Article

Bayesian networks based laboratory retrofitting towards inherent safety: A risk-based implementation framework

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Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jlp.2023.105036

Keywords

Inherent safety; Risk -based safety management; Laboratory safety; Bayesian networks; Laboratory accident prevention

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Over the years, there have been numerous serious laboratory accidents, leading to injuries, deaths, and economic losses, which has prompted increased attention to laboratory safety. However, current safety measures rely too heavily on additional safeguards and pay insufficient attention to reducing hazardous factors at their origins. This study introduces the concept of inherent safety and develops a tool called the Generic Laboratory Safety Metric (GLSM) to minimize laboratory hazards. Through a case study of a university laboratory, it is demonstrated that the GLSM can effectively increase safety levels after risk-based inherently safer retrofitting, providing relatively satisfactory laboratory conditions. This work presents a set of generic solutions and the GLSM as an implementation tool for achieving inherently safer laboratories, contributing to risk quantification and identification of key risk factors for targeted and fundamental safety measures.
Over the years, a number of high-profile laboratory accidents involving severe injuries, fatalities, and economic losses have been reported, prompting a significant increase in efforts towards laboratory safety. However, the dominant safety measures rely excessively on add-on safeguards such as sprinklers and respirators and pay little attention to reducing the hazardous factors at their sources. This study introduced the inherent safety concept to minimize laboratory hazards and developed a dedicated implementation tool called Generic Laboratory Safety Metric (GLSM). The Traditional Laboratory Safety Checklist (TLSC) was first used to represent the safety in-dicators, and then the Precedence Chart (PC) and Bayesian Networks (BN) methods were used to reconcile the safety indicators to develop the GLSM. The developed GLSM was subsequently demonstrated through a case study of a university laboratory. The results revealed that the safety level increased from 2.44 to 3.52 after the risk-based inherently safer retrofitting, thus creating laboratory conditions with a relatively satisfactory safety level. This work presented a set of generic solutions to laboratory retrofitting towards inherent safety with a novel GLSM as the implementation tool. The proposed GLSM would contribute to risk quantification and identification of key risk factors for assigning targeted and fundamental safety measures to achieve inherently safer laboratories.

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