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Bayesian Estimation of Drivers’ Gap Selections and Reaction Times in Left-Turning Crashes from Event Data Recorder Pre-Crash Data

机译:从事件数据记录器预崩溃数据左转碰撞中的拖车差距选择和反应时间的贝叶斯估计

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For at least 15 years it has been recognized that pre-crash data captured by event data recorders might help illuminate the actions of drivers prior to crashes. In left-turning crashes where pre-crash data are available from both vehicles it should be possible to estimate features such as the location and speed of the opposing vehicle at the time of turn initiation and the reaction time of the opposing driver. Difficulties arise however from measurement errors in pre-crash data and because the EDR data from the two vehicles are not synchronized so the resulting uncertainties should be accounted for. This paper describes a method for accomplishing this using Markov Chain Monte Carlo computation. First, planar impact methods are used to estimate the speeds at impact of the involved vehicles. Next, the impact speeds and pre-crash EDR data are used to reconstruct the vehicles' trajectories during approximately 5 seconds preceding the crash. Interpolation of these trajectories is then used to estimate speeds and distances at critical times. The method is illustrated using three cases from the NASS/CDS database.
机译:至少15年来,已经认识到,事件数据记录器捕获的预先崩溃数据可能有助于在崩溃之前阐明驱动程序的动作。在左转碰撞中,在碰撞预防数据的情况下,应该可以在转动启动时估计诸如相对车辆的位置和速度的特征,以及相对驾驶员的反应时间。然而,从预崩溃数据中的测量误差以及来自两个车辆的EDR数据不同步,因此应考虑所产生的不确定性。本文介绍了使用马尔可夫链蒙特卡罗计算完成此方法的方法。首先,平面的冲击方法用于估计所涉及的车辆的影响的速度。接下来,冲击速度和预崩溃前EDR数据用于在崩溃之前5秒钟内重建车辆轨迹。然后使用这些轨迹的插值来估计临界时期的速度和距离。使用NASS / CDS数据库的三种情况来说明该方法。

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