Decision-adjusted driver risk predictive models using kinematics information

https://doi.org/10.1016/j.aap.2021.106088Get rights and content
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Highlights

  • Kinematics information is beneficial for driver risk prediction.

  • Hard braking events provide more valuable information in identifying high-risk drivers than rapid starts.

  • The thresholds for identifying kinematic events can directly impact driving risk prediction performance.

  • Decision-adjusted modeling provides insightful guidance for model and threshold selection.

Abstract

Accurate prediction of driving risk is challenging due to the rarity of crashes and individual driver heterogeneity. One promising direction of tackling this challenge is to take advantage of telematics data, increasingly available from connected vehicle technology, to obtain dense risk predictors. In this work, we propose a decision-adjusted framework to develop optimal driver risk prediction models using telematics-based driving behavior information. We apply the proposed framework to identify the optimal threshold values for elevated longitudinal acceleration (ACC), deceleration (DEC), lateral acceleration (LAT), and other model parameters for predicting driver risk. The Second Strategic Highway Research Program (SHRP 2) naturalistic driving data were used with the decision rule of identifying the top 1% to 20% of the riskiest drivers. The results show that the decision-adjusted model improves prediction precision by 6.3% to 26.1% compared to a baseline model using non-telematics predictors. The proposed model is superior to models based on a receiver operating characteristic curve criterion, with 5.3% and 31.8% improvement in prediction precision. The results confirm that the optimal thresholds for ACC, DEC and LAT are sensitive to the decision rules, especially when predicting a small percentage of high-risk drivers. This study demonstrates the value of kinematic driving behavior in crash risk prediction and the necessity for a systematic approach for extracting prediction features. The proposed method can benefit broad applications, including fleet safety management, use-based insurance, driver behavior intervention, as well as connected-vehicle safety technology development.

Keywords

Automobile crash risk
Decision-adjusted modeling
Predictive modeling
Telematics data
Naturalistic driving study

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