Role of National Conditions in Occupational Fatal Accidents in the Construction Industry Using Interpretable Machine Learning Approach

被引:11
作者
Koc, Kerim [1 ]
机构
[1] Yildiz Tech Univ, Dept Civil Engn, TR-34220 Esenler, Istanbul, Turkiye
关键词
Occupational health and safety (OHS); Fatal occupational accidents; National conditions; Macrolevel accident analysis; Artificial intelligence; RANDOM FOREST; SAFETY OUTCOMES; DECISION TREE; MODEL; CLASSIFICATION; WORK; PREVENTION; INJURIES; PATTERNS; CULTURE;
D O I
10.1061/JMENEA.MEENG-5516
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Current national occupational safety and health (OSH) initiatives follow reactive approaches, i.e., if it breaks, fix it. Existing accounts, however, failed to improve national OSH performances substantially, which imposes the need for an in-depth and proactive (fix it so it will not break) investigation of national occupational fatality risks. Despite many studies examining the fatality risk of workers based on project-, company-, and/or behavior-related factors, the role of national conditions on the countrywide fatality risk of workers has not been explored. The present research leverages the national statistics of Turkey to examine their influence on construction workers' fatality risk through a machine learning-based prediction model. Several widely used machine learning methods were adopted for determining whether the upcoming month poses a significant fatality risk for construction workers or not based on national statistics of the previous month. According to analysis results, the gradient boosting decision tree algorithm yielded the highest prediction performance in terms of f1-score. The recently developed game theory-based Shapley Additive Explanations (SHAP) algorithm was used to identify whether and how national conditions affect countrywide fatality risk of construction workers. Findings illustrate that the share of the construction sector in employment, market demand, and labor shortage are the most significant national factors in determining the fatality risk. SHAP summary and SHAP dependence plots are further presented to provide decision makers with a clearer understanding of hidden relationships between fatality risk and national conditions. In addition, a framework that can be practically used by policy makers and governmental authorities is developed to help minimize national occupational fatality risk. Overall, predicting national fatality risk in the industry and identifying the national precursors of occupational fatalities contribute to the development of macrolevel safety improvements based on country-specific conditions.
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页数:22
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