Clark Renee M, Besterfield-Sacre Mary E
Department of Industrial Engineering, Swanson School of Engineering, University of Pittsburgh, 1040 Benedum Hall, Pittsburgh, PA 15261, USA.
Risk Anal. 2009 Mar;29(3):344-54. doi: 10.1111/j.1539-6924.2008.01163.x. Epub 2008 Dec 12.
We take a novel approach to analyzing hazardous materials transportation risk in this research. Previous studies analyzed this risk from an operations research (OR) or quantitative risk assessment (QRA) perspective by minimizing or calculating risk along a transport route. Further, even though the majority of incidents occur when containers are unloaded, the research has not focused on transportation-related activities, including container loading and unloading. In this work, we developed a decision model of a hazardous materials release during unloading using actual data and an exploratory data modeling approach. Previous studies have had a theoretical perspective in terms of identifying and advancing the key variables related to this risk, and there has not been a focus on probability and statistics-based approaches for doing this. Our decision model empirically identifies the critical variables using an exploratory methodology for a large, highly categorical database involving latent class analysis (LCA), loglinear modeling, and Bayesian networking. Our model identified the most influential variables and countermeasures for two consequences of a hazmat incident, dollar loss and release quantity, and is one of the first models to do this. The most influential variables were found to be related to the failure of the container. In addition to analyzing hazmat risk, our methodology can be used to develop data-driven models for strategic decision making in other domains involving risk.
在本研究中,我们采用了一种全新的方法来分析危险材料运输风险。以往的研究从运筹学(OR)或定量风险评估(QRA)的角度,通过最小化或计算运输路线上的风险来分析这种风险。此外,尽管大多数事故发生在集装箱卸载时,但研究并未关注与运输相关的活动,包括集装箱的装卸。在这项工作中,我们利用实际数据和探索性数据建模方法,开发了一个卸载过程中危险材料释放的决策模型。以往的研究在识别和推进与这种风险相关的关键变量方面具有理论视角,但尚未关注基于概率和统计的方法。我们的决策模型使用探索性方法,针对一个涉及潜在类别分析(LCA)、对数线性建模和贝叶斯网络的大型、高度分类的数据库,实证识别关键变量。我们的模型识别了危险材料事故的两个后果(美元损失和释放量)中最具影响力的变量和应对措施,并且是首批做到这一点的模型之一。发现最具影响力的变量与集装箱故障有关。除了分析危险材料风险外,我们的方法还可用于为其他涉及风险的领域中的战略决策开发数据驱动模型。