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Rear-End Crash Risk Analysis considering Drivers’ Visual Perception and Traffic Flow Uncertainty: A Hierarchical Hybrid Bayesian Network Approach

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  • Naikan Ding
  • Linsheng Lu
  • Nisha Jiao
  • Tingsong Wang

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.

Suggested Citation

  • Naikan Ding & Linsheng Lu & Nisha Jiao & Tingsong Wang, 2021. "Rear-End Crash Risk Analysis considering Drivers’ Visual Perception and Traffic Flow Uncertainty: A Hierarchical Hybrid Bayesian Network Approach," Discrete Dynamics in Nature and Society, Hindawi, vol. 2021, pages 1-21, November.
  • Handle: RePEc:hin:jnddns:7028660
    DOI: 10.1155/2021/7028660
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    Cited by:

    1. Mingyu Kim & Donghyun Lee, 2023. "Why Uncertainty in Deep Learning for Traffic Flow Prediction Is Needed," Sustainability, MDPI, vol. 15(23), pages 1-18, November.

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