The relationship between driving volatility in time to collision and crash injury severity in a naturalistic driving environment
Behram Wali, Asad Khattak, Thomas Karnowski

TL;DR
This study investigates how driving volatility in time to collision relates to crash injury severity using real-world naturalistic driving data, revealing that higher volatility correlates with more severe crashes.
Contribution
It introduces new volatility indices derived from naturalistic driving data and analyzes their relationship with crash severity using advanced statistical models.
Findings
Higher driving volatility is associated with increased crash severity.
Both longitudinal and lateral volatility contribute to crash outcomes.
Segmentation by time to collision enhances understanding of volatility impacts.
Abstract
As a key indicator of unsafe driving, driving volatility characterizes the variations in microscopic driving decisions. This study characterizes volatility in longitudinal and lateral driving decisions and examines the links between driving volatility in time to collision and crash injury severity. By using a unique real-world naturalistic driving database from the 2nd Strategic Highway Research Program (SHRP), a test set of 671 crash events featuring around 0.2 million temporal samples of real world driving are analyzed. Based on different driving performance measures, 16 different volatility indices are created. To explore the relationships between crash-injury severity outcomes and driving volatility, the volatility indices are then linked with individual crash events including information on crash severity, drivers' pre crash maneuvers and behaviors, secondary tasks and durations,…
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