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Assessing rear-end collision risk of cars and heavy vehicles on freeways using a surrogate safety measure

机译:使用替代安全措施评估高速公路上汽车和重型车辆的追尾碰撞风险

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This study analyzes rear-end collision risk of cars and heavy vehicles on freeways using a surrogate safety measure. The crash potential index (CPI) was modified to reflect driver's reaction time and estimated by types of lead and following vehicles (car or heavy vehicle). CPIs were estimated using the individual vehicle trajectory data from a segment of the US-101 freeway in Los Angeles, U.S.A. It was found that the CPI was generally higher for the following heavy vehicle than the following car due to heavy vehicle's lower braking capability. This study also validates the CPI using the simulated traffic data which replicate the observed traffic conditions a few minutes before the crash time upstream and downstream of the crash locations. The observed data were obtained from crash records and loop detectors on a section of the Gardiner Expressway in Toronto, Canada. The result shows that the values of CPI were consistently higher during the traffic conditions immediately before the crash time (crash case) than the normal traffic conditions (non-crash case). This demonstrates that the CPI can be used to capture rear-end collision risk during car-following maneuver on freeways. The result also shows that rear-end collision risk is lower for heavy vehicles than cars in the crash case due to their shorter reaction time and lower speed when spacing is shorter. Thus, it is important to reflect the differences in driver behavior and vehicle performance characteristics between cars and heavy vehicles in estimating surrogate safety measures. Lastly, it was found that the CPI-based crash prediction model can correctly identify the crash and non-crash cases at higher accuracy than the other crash prediction models based on detectors.
机译:本研究使用替代安全措施分析了高速公路上的汽车和重型车辆的追尾碰撞风险。碰撞可能性指数(CPI)进行了修改,以反映驾驶员的反应时间,并根据领先和随后的车辆(汽车或重型车辆)的类型进行估算。使用来自美国洛杉矶US-101高速公路路段的单个车辆轨迹数据估算CPI。发现由于重型车辆较低的制动能力,因此其后的重型车辆的CPI通常高于后续的车辆。这项研究还使用模拟交通数据验证了CPI,该数据复制了在撞车位置上游和下游撞车时间之前几分钟的观察到的交通情况。观察到的数据是从加拿大多伦多加丁纳高速公路的一部分上的碰撞记录和环路探测器获得的。结果表明,在紧接崩溃时间之前的交通状况(崩溃案例)中,CPI值始终高于正常交通状况(非崩溃案例)中的CPI值。这表明CPI可用于捕获高速公路上的跟车操作过程中的追尾风险。结果还表明,重型车辆的追尾碰撞风险比碰撞情况下的汽车低,这是因为它们的反应时间较短,而间距较短时的速度较低。因此,重要的是在估计替代安全措施时反映小汽车和重型车辆之间驾驶员行为和车辆性能特征的差异。最后,发现基于CPI的碰撞预测模型可以比其他基于检测器的碰撞预测模型更高的准确度正确识别碰撞和非碰撞案例。

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