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A synthetic approach to compare the large truck crash causation study and naturalistic driving data

机译:一种用于比较大型卡车碰撞原因研究和自然驾驶数据的综合方法

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HighlightsTruck crashes are serious and usually result in the driver/passenger of the other vehicle being injured or killed.Much can be learned about truck crash causation by comparing the Large Truck Crash Causation Study and naturalistic truck driving data.Drivers were 1.34 times more likely to be involved in a multi-vehicle crash, than a multi-vehicle crash-relevant conflict, if they were tailgating.It’s possible to use naturalistic data to calculate the exposure of a given behavior and use the Large Truck Crash Causation Study data set to calculate the crash exposure to the same behavior.AbstractTruck crashes represent a significant problem on our nation’s highways. There is a great opportunity to learn about crash causation by analyzing and comparing the Large Truck Crash Causation Study (LTCCS) and naturalistic driving (ND) data. These data sets provide in-depth information, but have contrasting strengths and weaknesses. The LTCCS contains information on high-severity crashes (crashes and fatal crashes), but relied on data collected during crash investigations. The LTCCS identified principal driver errors in the crash, such as the Critical Reason, but not detailed behaviors or scenario sequences. The ND data sets relate primarily to non-crashes that are detectable from dynamic vehicle events, such as hard braking, swerve,etc., provide direct video observations of the driver and the surrounding driving scene and precise information on driver inputs (kinematics) and captured events, and provide certain types of exposure data that cannot easily be obtained using crash reconstruction data. The ND data are collected continuously, thereby capturing both safety-critical events and normative driving (i.e., baseline). The current project evaluated large-truck crash data from the LTCCS and two large-truck ND data sets, the Naturalistic Truck Driving Study and the Drowsy Driver Warning System Field Operational Test. A synthetic risk ratio analysis on the associated factor, Following Too Closely, indicated that truck drivers in the LTCCS were 1.34 times more likely to be involved in a crash, than an ND crash-relevant conflict, if they were following too closely (i.e., tailgating). Given several caveats noted in the paper, this study suggests it’s possible to use the ND data set to calculate the exposure of a given behavior and use the LTCCS data set to calculate the crash exposure to the same behavior.
机译: 突出显示 卡车碰撞很严重,通常会导致其他车辆的驾驶员/乘客受伤或死亡。 通过比较,可以了解很多有关卡车撞车原因的信息大型卡车事故原因研究和自然卡车驾驶数据。 如果与多车祸相关的冲突发生,与多车祸相关的冲突相比,驾驶员发生多车事故的可能性高1.34倍 可以使用自然数据来计算给定行为的风险,并可以使用大型卡车事故原因研究数据集来计算同一行为的事故风险。 摘要 卡车崩溃代表我们国家公路上的一个重大问题。通过分析和比较大型卡车事故原因研究(LTCCS)和自然驾驶(ND)数据,有很大的机会了解事故原因。这些数据集提供了深入的信息,但有不同的优势和劣势。 LTCCS包含有关高严重度崩溃(崩溃和致命崩溃)的信息,但依赖于崩溃调查期间收集的数据。 LTCCS识别出崩溃中的主要驱动程序错误,例如“关键原因”,但没有详细的行为或场景序列。 ND数据集主要涉及可从动态车辆事件检测到的非碰撞,例如硬刹车,转弯,等。,可提供驾驶员和周围驾驶的直接视频观察场景和有关驾驶员输入(运动学)和捕获事件的精确信息,并提供某些类型的暴露数据,这些数据使用碰撞重建数据无法轻松获得。 ND数据会不断收集,从而捕获安全关键事件和规范性驾驶(,即,基线)。当前项目评估了来自LTCCS的大卡车碰撞数据和两个大卡车ND数据集,即自然卡车驾驶研究和昏昏欲睡的驾驶员警告系统现场操作测试。对相关因素的综合风险比分析,“太近之后”表明,如果LTCCS中的卡车司机过分紧追,则其发生车祸的可能性是与ND车祸有关的冲突的几率是1.34倍。 :italic> ie ,尾注)。考虑到本文中的一些注意事项,这项研究表明可以使用ND数据集来计算给定行为的暴露程度,并使用LTCCS数据集来计算相同行为的崩溃暴露程度。

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