Modelling animal-vehicle collision counts across large networks using a Bayesian hierarchical model with time-varying parameters

IF 12.5 1区 工程技术 Q1 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH
Krishna Murthy Gurumurthy , Prateek Bansal , Kara M. Kockelman , Zili Li
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引用次数: 0

Abstract

Animal-vehicle collisions (AVCs) are common around the world and result in considerable loss of animal and human life, as well as significant property damage and regular insurance claims. Understanding their occurrence in relation to various contributing factors and being able to identify high-risk locations are valuable to AVC prevention, yielding economic, social, and environmental cost savings. However, many challenges exist in the study of AVC datasets. These include seasonality of animal activity, unknown exposure (i.e., the number of animal crossings), very low AVC counts across most sections of extensive roadway networks, and computational burdens that come with discrete response analysis using large datasets. To overcome these challenges, a Bayesian hierarchical model is proposed where the exposure is modeled with nonparametric Dirichlet process, and the number of segment-level AVCs is assumed to follow a binomial distribution. A Pólya-Gamma augmented Gibbs sampler is derived to estimate the proposed model. By using the AVC data of multiple years across about 85,000 segments of state-controlled highways in Texas, U.S., it is demonstrated that the model is scalable to large datasets, with a preponderance of zeros and clear monthly seasonality in counts, while identifying high-risk locations and key explanatory factors based on segment-specific factors (such as changes in speed limit). This can be done within the modelling framework, which provides useful information for policy-making purposes.

使用具有时变参数的贝叶斯分层模型对大型网络中的动物-车辆碰撞计数进行建模
动物与车辆碰撞(avc)在世界各地都很常见,造成相当大的动物和人类生命损失,以及重大财产损失和定期保险索赔。了解其发生与各种影响因素的关系,并能够识别高风险地点,对于预防AVC非常有价值,从而节省经济、社会和环境成本。然而,AVC数据集的研究存在许多挑战。这些因素包括动物活动的季节性、未知的暴露(即动物交叉的数量)、在广泛的道路网络的大多数路段中非常低的AVC计数,以及使用大型数据集进行离散响应分析所带来的计算负担。为了克服这些挑战,提出了一种贝叶斯层次模型,该模型采用非参数Dirichlet过程对暴露进行建模,并假设片段级avc的数量遵循二项分布。推导了一个Pólya-Gamma增广吉布斯采样器来估计所提出的模型。通过使用美国德克萨斯州约85,000个国家控制的高速公路路段的多年AVC数据,证明该模型可扩展到大型数据集,具有零优势和明确的月度季节性,同时根据路段特定因素(如速度限制的变化)识别高风险位置和关键解释因素。这可以在建模框架内完成,为决策目的提供有用的信息。
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来源期刊
CiteScore
22.10
自引率
34.10%
发文量
35
审稿时长
24 days
期刊介绍: Analytic Methods in Accident Research is a journal that publishes articles related to the development and application of advanced statistical and econometric methods in studying vehicle crashes and other accidents. The journal aims to demonstrate how these innovative approaches can provide new insights into the factors influencing the occurrence and severity of accidents, thereby offering guidance for implementing appropriate preventive measures. While the journal primarily focuses on the analytic approach, it also accepts articles covering various aspects of transportation safety (such as road, pedestrian, air, rail, and water safety), construction safety, and other areas where human behavior, machine failures, or system failures lead to property damage or bodily harm.
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