Microscopic traffic models, accidents, and insurance losses

Sojung Kim, Marcel Kleiber, Stefan Weber
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Abstract

The paper develops a methodology to enable microscopic models of transportation systems to be accessible for a statistical study of traffic accidents. Our approach is intended to permit an understanding not only of historical losses but also of incidents that may occur in altered, potential future systems. Through such a counterfactual analysis, it is possible, from an insurance, but also from an engineering perspective, to assess the impact of changes in the design of vehicles and transport systems in terms of their impact on road safety and functionality.

Structurally, we characterize the total loss distribution approximatively as a mean-variance mixture. This also yields valuation procedures that can be used instead of Monte Carlo simulation. Specifically, we construct an implementation based on the open-source traffic simulator SUMO and illustrate the potential of the approach in counterfactual case studies.

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微观交通模型、事故和保险损失
本文提出了一种方法,使交通系统的微观模型能够用于交通事故的统计研究。我们的方法不仅可以了解历史损失,还可以了解在改变的、潜在的未来系统中可能发生的事故。通过这种反事实分析,不仅可以从保险角度,还可以从工程角度评估车辆和运输系统设计的变化对道路安全和功能的影响。从结构上讲,我们将总损失分布近似表征为均值-方差混合物,这也产生了可用于替代蒙特卡罗模拟的估值程序。具体来说,我们在开源交通模拟器 SUMO 的基础上构建了一个实施方案,并在反事实案例研究中说明了该方法的潜力。
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