使用贝叶斯网络分析工作区碰撞的关联模式

Subasish Das, M. Ashifur Rahman, Jinli Liu, Xinyue Ye, Boniphace Kutela
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引用次数: 0

摘要

确保施工区的安全是交通机构的首要任务,因为车辆在这些区域内变换车道和路径会带来危险。最近的统计数据凸显了这一问题的严重性,与 2011 年相比,2019 年在施工区内发生的致命碰撞事故增加了 46%,令人震惊。因此,本研究调查了与侵入或侵占施工区相关的碰撞事故,以揭示其背后的机理。本研究分析了德克萨斯州交通局四年(2016-2019 年)的碰撞数据,利用贝叶斯网络确定了关键因素、其关系以及潜在的替代方案。男性驾驶员、弯曲的道路以及驾驶员分心和状态的特定模式对工作区侵入事故中的伤害严重程度有显著影响。研究揭示了三种不同的情景,其特定属性的概率完全不同:(1) 在农村非主要干道上的碰撞;(2) 与非路障固定物的碰撞;(3) 涉及非路障固定物和违规驾驶的非伤害性碰撞。这项研究的详细结果可为安全工程师提供宝贵的见解,使他们能够减少因侵占而造成的施工区碰撞事故。通过了解关键因素及其影响,交通机构可以实施有效措施来降低与工作区侵占相关的风险,最终为驾驶员和道路工人创造更安全的环境。
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Association Patterns of Work Zone Crashes using Bayesian Network
Ensuring the safety of work zones is a top priority for transportation agencies because of the dangers posed by vehicles changing lanes and paths within these areas. Recent statistics highlight the seriousness of this issue, showing a shocking 46% increase in fatal collisions within work zones in 2019 compared with 2011. Therefore, this study examined crashes related to intrusions or encroachments in work zones to uncover the underlying mechanisms. Analyzing four years of crash data (2016–2019) from the Texas Department of Transportation, this research utilized Bayesian network to identify crucial factors, their relationships, and potential alternative scenarios. The severity of injuries in work zone intrusion accidents was significantly influenced by male drivers, curved roads, and specific patterns of driver distraction and condition. The study revealed three distinct scenarios with complete probability of specific attributes: (1) crashes on rural non-principal arterial roads; (2) collisions with non-barrier fixed objects; and (3) non-injury crashes involving non-barrier fixed objects and driving violations. The detailed findings from this study can provide valuable insights for safety engineers, enabling them to reduce work zone crashes caused by encroachments. By comprehending the key factors and their effects, transportation agencies can implement effective measures to lessen the risks associated with work zone encroachments, ultimately creating a safer environment for both drivers and road workers.
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