Austigard Åse Dalseth, Smedbold Hans Thore, von Hirsch Svendsen Kristin
Department of Industrial Economics and Technology Management, NTNU - Norwegian University of Science and Technology, PO Box 8900, Torgarden, N-7491 Trondheim, Norway.
Trondheim Municipality, Working Environment Office, PO Box 2300, Torgarden, N-7004 Trondheim, Norway.
Ann Work Expo Health. 2024 Aug 8;68(7):725-736. doi: 10.1093/annweh/wxae043.
This study evaluates the effectiveness of self-assessed exposure (SAE) data collection for characterization of hydrogen sulfide (H2S) risks in water and wastewater management, challenging the adequacy of traditional random or campaign sampling strategies. We compared 3 datasets derived from distinct strategies: expert data with activity metadata (A), SAE without metadata (B), and SAE with logbook metadata (C). The findings reveal that standard practices of random sampling (dataset A) fail to capture the sporadic nature of H2S exposure. Instead, SAE methods enhanced by logbook metadata and supported by reliable detection and calibration infrastructure (datasets B and C) are more effective. When assessing risk, particularly peak exposure risks, it is crucial to adopt measures that capture exposure variability, such as the range and standard deviations. This finer assessment is vital where high H2S peaks occur in confined spaces. Risk assessment should incorporate indices that account for peak exposure, utilizing variability measures like range and standard or geometric standard deviation to reflect the actual risk more accurately. For large datasets, a histogram is just as useful as statistical measures. This approach has revealed that not only wastewater workers but also water distribution network workers, can face unexpectedly high H2S levels when accessing confined underground spaces. Our research underscores the need for continuous monitoring with personal electrochemical gas detector alarm systems, particularly in environments with variable and potentially hazardous exposure levels.
本研究评估了自我评估暴露(SAE)数据收集在表征水和废水管理中硫化氢(H₂S)风险方面的有效性,对传统随机或抽样监测策略的充分性提出了挑战。我们比较了来自不同策略的3个数据集:带有活动元数据的专家数据(A)、无元数据的SAE(B)和带有日志元数据的SAE(C)。研究结果表明,随机抽样的标准做法(数据集A)无法捕捉H₂S暴露的偶发性。相反,通过日志元数据增强并由可靠的检测和校准基础设施支持的SAE方法(数据集B和C)更有效。在评估风险,特别是峰值暴露风险时,采用能够捕捉暴露变异性的措施至关重要,例如范围和标准差。在密闭空间中出现高H₂S峰值的情况下,这种更精细的评估至关重要。风险评估应纳入考虑峰值暴露的指标,利用范围和标准或几何标准差等变异性度量来更准确地反映实际风险。对于大型数据集,直方图与统计量一样有用。这种方法表明,不仅废水处理工人,而且供水网络工人在进入密闭地下空间时也可能面临意外的高H₂S水平。我们的研究强调了使用个人电化学气体探测器报警系统进行连续监测的必要性,特别是在暴露水平可变且潜在危险的环境中。