From Lagging to Leading: Validating Hard Braking Events as High-Density Indicators of Segment Crash Risk
Yechen Li, Shantanu Shahane, Shoshana Vasserman, Carolina Osorio, Yi-fan Chen, Ivan Kuznetsov, Kristin White, Justyna Swiatkowska, Neha Arora, Feng Guo

TL;DR
This study demonstrates that hard-braking events from connected vehicle data are a scalable, high-density indicator of crash risk, showing a significant positive correlation with actual crash rates across road segments.
Contribution
It validates hard-braking events as a reliable proxy for crash risk and integrates them into regression models for improved traffic safety assessment.
Findings
HBEs occur at much higher rates than crashes.
Positive correlation between HBE rate and crash rate.
HBE data enhances network-wide safety analysis.
Abstract
Identifying high crash risk road segments and accurately predicting crash incidence is fundamental to implementing effective safety countermeasures. While collision data inherently reflects risk, the infrequency and inconsistent reporting of crashes present a major challenge to robust risk prediction models. The proliferation of connected vehicle technology offers a promising avenue to leverage high-density safety metrics for enhanced crash forecasting. A Hard-Braking Event (HBE), interpreted as an evasive maneuver, functions as a potent proxy for elevated driving risk due to its demonstrable correlation with underlying crash causal factors. Crucially, HBE data is significantly more readily available across the entire road network than conventional collision records. This study systematically evaluated the correlation at individual road segment level between police-reported collisions…
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Taxonomy
TopicsTraffic and Road Safety · Traffic Prediction and Management Techniques · Autonomous Vehicle Technology and Safety
