Seyed Alireza Samerei, Kayvan Aghabayk, A. Montella
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引用次数: 0
摘要
连环相撞(PU)是指两辆以上的车辆在短时间内发生多次碰撞,造成严重后果,包括人员死亡和重大损失。本研究旨在调查实时交通、环境和碰撞特征及其相互作用对严重 PU 碰撞的影响,而对这一问题的研究一直不足。本研究调查并解释了总体积/容量(TV/C)、"重型车辆体积/总体积"(HVV/TV)和平均速度的影响。为此,利用伊朗高速公路 5 年内的碰撞和实时交通数据,对 PU 碰撞严重程度进行了建模和解释。在六种机器学习方法中,通过 SHAP 方法解释的 CatBoost 模型表现优异。结果表明,平均车速大于 90 km/h、TV/C < 0.6、HVV/TV ≥ 0.1、水平弯道、纵向坡度、夜间以及重型车辆的参与与严重 PU 碰撞风险有关。此外,几种相互作用也与严重 PU 碰撞有关,包括 TV/C ≈ 0.1、HVV/TV ≥ 0.25 和夜间的同时出现;TV/C ≈ 0.1 或 0.45、HVV/TV ≥ 0.25 和平均车速 > 90 km/h;水平弯道和高平均车速;水平弯道和夜间之间的相互作用。总之,这项研究提供了有关导致严重 PU 碰撞的交通和环境因素的重要见解,为政策制定者的知情决策提供了支持。
Analyzing Pile-Up Crash Severity: Insights from Real-Time Traffic and Environmental Factors Using Ensemble Machine Learning and Shapley Additive Explanations Method
Pile-up (PU) crashes, which involve multiple collisions between more than two vehicles within a brief timeframe, carry substantial consequences, including fatalities and significant damages. This study aims to investigate the real-time traffic, environmental, and crash characteristics and their interactions in terms of their contributions to severe PU crashes, which have been understudied. This study investigates and interprets the effects of Total Volume/Capacity (TV/C), “Heavy Vehicles Volume/Total Volume” (HVV/TV), and average speed. For this purpose, the PU crash severity was modelled and interpreted using the crash and real-time traffic data of Iran’s freeways over a 5-year period. Among six machine learning methods, the CatBoost model demonstrated superior performance, interpreted via the SHAP method. The results indicate that avg.speed > 90 km/h, TV/C < 0.6, HVV/TV ≥ 0.1, horizontal curves, longitudinal grades, nighttime, and the involvement of heavy vehicles are associated with the risk of severe PU crashes. Additionally, several interactions are associated with severe PU crashes, including the co-occurrence of TV/C ≈ 0.1, HVV/TV ≥ 0.25, and nighttime; the interactions between TV/C ≈ 0.1 or 0.45, HVV/TV ≥ 0.25, and avg.speed > 90 km/h; horizontal curves and high average speeds; horizontal curves; and nighttime. Overall, this research provides essential insights into traffic and environmental factors driving severe PU crashes, supporting informed decision-making for policymakers.