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Analyzing Arizona OSHA Injury Reports Using Unsupervised Machine Learning

机译:使用无监督机器学习分析亚利桑那州OSHA损伤报告

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As the construction continue to be a leading industry in the number of injuries and fatalities annually, several organizations and agencies are working avidly to ensure the number of injuries and fatalities is minimized. The Occupational Safety and Health Administration (OSHA) is one such effort to assure safe and healthful working conditions for working men and women by setting and enforcing standards and by providing training, outreach, education and assistance. Given the large databases of OSHA historical events and reports, a manual analysis of the fatality and catastrophe investigations content is a time consuming and expensive process. This paper aims to evaluate the strength of unsupervised machine learning and Natural Language Processing (NLP) in supporting safety inspections and reorganizing accidents database on a state level. After collecting construction accident reports from the OSHA Arizona office, the methodology consists of preprocessing the accident reports and weighting terms in order to apply a data-driven unsupervised K-Means-based clustering approach. The proposed method classifies the collected reports in four clusters, each reporting a type of accident. The results show the construction accidents in the state of Arizona to be caused by falls (42.9%), struck by objects (34.3%), electrocutions (12.5%), and trenches collapse (10.3%). The findings of this research empower state and local agencies with a customized presentation of the accidents fitting their regulations and weather conditions. What is applicable to one climate might not be suitable for another; therefore, such rearrangement of the accidents database on a state based level is a necessary prerequisite to enhance the local safety applications and standards.
机译:由于建筑继续成为一家伤害和死亡人数的领先行业,若干组织和机构刚刚努力确保伤害和死亡人数最大化。职业安全和健康管理局(OSHA)是通过制定和执行标准以及提供培训,外展,教育和援助来确保工作男女的安全和健康工作条件的努力。鉴于OSHA历史事件和报告的大型数据库,对死亡和灾难性调查的手动分析是耗时和昂贵的过程。本文旨在评估无监督机器学习和自然语言处理(NLP)的强度,支持在国家级的安全检查和重组事故数据库中。在从OSHA亚利桑那州办事处收集施工事故报告后,该方法包括预处理事故报告和加权术语,以应用数据驱动的无监督的基于K-Meancy的聚类方法。该方法将收集的报告分类为四个集群,每种事故都有一种事故。结果表明,亚利桑那州的建设事故是由跌倒(42.9%)引起的(42.9%),击中物体(34.3%),触矿(12.5%)和沟槽崩溃(10.3%)。该研究的调查结果赋予了国家和地方机构,具有定制介绍其法规和天气条件的事故。适用于一个气候可能不适合另一个气候;因此,在州基于级别的情况下的事故数据库的重新排列是增强本地安全应用和标准的必要先决条件。

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