论文标题
在动态工业环境中建模和缓解职业安全风险
Modeling and mitigation of occupational safety risks in dynamic industrial environments
论文作者
论文摘要
在许多行业中,识别和缓解安全风险至关重要。除了准则和最佳实践外,许多行业还拥有安全管理系统(SMS),旨在监视和加强良好的安全行为。然而,分析通过此类系统获得的数据的分析能力仍然缺乏量化各种职业危害构成风险的能力。此外,最佳实践和现代短信无法说明许多工业环境中常见的动态发展环境/行为特征。本文提出了一种通过以数据驱动方式对安全风险进行持续和定量评估来解决这些问题的方法。我们方法的骨干是一个直观的层次概率模型,该模型解释了典型的SMS收集的稀疏和嘈杂的安全数据。开发了一种完全贝叶斯的方法来以在线方式从安全数据校准该模型。此后,校准模型具有必要的信息,这些信息表征了不同的安全危害带来的风险。此外,建议的模型可以用于自动决策,例如解决资源分配问题(针对降低风险的目标),这些问题通常在资源受限的工业环境中遇到。该方法在模拟的测试床上进行了严格验证,其可伸缩性在石化工厂的大型维护项目的真实数据上得到了证明。
Identifying and mitigating safety risks is paramount in a number of industries. In addition to guidelines and best practices, many industries already have safety management systems (SMSs) designed to monitor and reinforce good safety behaviors. The analytic capabilities to analyze the data acquired through such systems, however, are still lacking in terms of their ability to robustly quantify risks posed by various occupational hazards. Moreover, best practices and modern SMSs are unable to account for dynamically evolving environments/behavioral characteristics commonly found in many industrial settings. This article proposes a method to address these issues by enabling continuous and quantitative assessment of safety risks in a data-driven manner. The backbone of our method is an intuitive hierarchical probabilistic model that explains sparse and noisy safety data collected by a typical SMS. A fully Bayesian approach is developed to calibrate this model from safety data in an online fashion. Thereafter, the calibrated model holds necessary information that serves to characterize risk posed by different safety hazards. Additionally, the proposed model can be leveraged for automated decision making, for instance solving resource allocation problems -- targeted towards risk mitigation -- that are often encountered in resource-constrained industrial environments. The methodology is rigorously validated on a simulated test-bed and its scalability is demonstrated on real data from large maintenance projects at a petrochemical plant.