Abstract

Rear-end crashes or crash risk is widely recognized as safety-critical state of vehicles under comprehensive conditions. This study investigated the association between traffic flow uncertainty, drivers’ visual perception, car-following behavior, roadway and vehicular characteristics, and rear-end crash risk variation and compared the crash risk variation prediction with and without specific flow-level data. Two datasets comprising 5055 individual vehicles in car-following state were collected through on-road experiments on two freeways in China. A hierarchical hybrid BN model approach was proposed to capture the association between drivers’ visual perception, traffic flow uncertainty, and rear-end crash risk variation. Results show that (1) the BN model with flow-level data outperformed the BN model without flow-level data and could predict 85.3% of the cases of crash risk decrease, with a false alarm rate of 21.4%; (2) the hierarchical hybrid BN models showed plausible spatial transferability in predicting crash risk variation; and (3) the incorporation of specific flow-level variables and data greatly benefited the successful identification of rear-end crash risk variations. The findings of this study suggest that rear-end crash risk is inherently associated with both individual driving behaviors and traffic flow uncertainty, and appropriate visual perceptual information could compensate for crash risk and improve safety.

Highlights

  • Rear-end crashes are one of the most killing accident types on highways

  • The open software GeNIe Academic was employed to build the Bayesian Network (BN) structure and estimate the parameters. e parameters of the BN were learned with the Expectation Maximization (EM) method as explained previously, with a random seed of zero to especially facilitate the parameter learning with the presence of latent variables (i.e., speed risk perception (SRP), distance risk perception (DRP))

  • We attempt to investigate the association between traffic flow uncertainty, roadway and vehicular characteristics, car-following behavior, visual perception, and rear-end crash risk variation and to compare the crash risk variation prediction performance with and without flow-level variables (FR10, lp, rH, and platoon crash risk entropy (PCRE))

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Summary

Introduction

Rear-end crashes are one of the most killing accident types on highways. According to a recent accident statistic by NHTSA [1], rear-end crashes accounted for the largest proportion (32.3%) of the total number of crashes and accounted for 45.9% of the crashes with motor vehicle in 2018 in the USA. An abundance of efforts has been dedicated to analyzing the causation factors [3,4,5], identifying safety-critical events [6, 7], predicting crash risk propensity [8, 9], and evaluating traffic safety [10,11,12]. In these efforts, individual driving behaviors are without a doubt the unparalleled contributive factors to be investigated, because an inspection of the behavioral nature of moving vehicles and drivers is always worth being the first choice. The crashes or crash risk reasoning and prediction could be deemed as a task to obtain the conditional probability of the occurrence of crashes or crash risk under the interactive and complex impacts of the aforementioned conditions and factors

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