Assessing the predictability of surrogate safety measures as crash precursors based on vehicle trajectory data prior to crashes

Accid Anal Prev. 2024 Jun:201:107573. doi: 10.1016/j.aap.2024.107573. Epub 2024 Apr 12.

Abstract

This study aims to investigate the predictability of surrogate safety measures (SSMs) for real-time crash risk prediction. We conducted a year-long drone video collection on a busy freeway in Nanjing, China, and collected 20 rear-end crashes. The predictability of SSMs was defined as the probability of crash occurrence when using SSMs as precursors to crashes. Ridge regression models were established to explore contributing factors to the predictability of SSMs. Four commonly used SSMs were tested in this study. It was found that modified time-to-collision (MTTC) outperformed other SSMs when the early warning capability was set at a minimum of 1 s. We further investigated the cost and benefit of SSMs in safety interventions by evaluating the number of necessary predictions for successful crash prediction and the proportion of crashes that can be predicted accurately. The result demonstrated these SSMs were most efficient in proactive safety management systems with an early warning capability of 1 s. In this case, 308, 131, 281, and 327,661 predictions needed to be made before a crash could be successfully predicted by TTC, MTTC, DRAC, and PICUD, respectively, achieving 75 %, 85 %, 35 %, and 100 % successful crash identifications. The ridge regression results indicated that the predefined threshold had the greatest impact on the predictability of all tested SSMs.

Keywords: Predictability; Ridge regression; SSMs; Trajectories prior to crashes.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Accidents, Traffic* / prevention & control
  • Accidents, Traffic* / statistics & numerical data
  • Automobile Driving / statistics & numerical data
  • China
  • Forecasting
  • Humans
  • Regression Analysis
  • Risk Assessment / methods
  • Safety / statistics & numerical data
  • Video Recording