A Framework for Determining Collision Likelihood Using Continuous Friction Values in a Connected Vehicle Environment

Author:

Xie Qian1,Kwon Tae J.1

Affiliation:

1. Department of Civil and Environmental Engineering, University of Alberta, Edmonton, AB T6G 2W2, Canada

Abstract

Jurisdictions currently provide information on winter road conditions through qualitative descriptors like bare and fully snow-covered. Ideally, these descriptors are meant to warn drivers beforehand about hazardous roads. In practice, however, discerning between safe and unsafe roads is sometimes unclear due to intermediate RSC classes covering too wide a range of conditions. This study aims at solving this safety ambiguity issue by proposing a framework for predicting collision likelihood within a road segment. The proposed framework converts road surface images into friction coefficients, which are then converted into continuous measurements through an interpolator. To find the best-performing interpolator, we evaluated geostatistical, machine learning, and hybrid interpolators. It was found that ordinary kriging had the lowest estimation error and was the least sensitive to changes in distance between measurements. After developing an interpolator, collision likelihood models were developed for segment lengths ranging from 0.5 km to 20 km. We chose the 6.5 km model based on its accuracy and intuitiveness. This model had 76.9% accuracy and included friction and AADT as predictors. It was also estimated that if the proposed framework were implemented in an environment with connected vehicles and intelligent transportation systems, it would offer significant safety improvements.

Funder

NSERC

Publisher

MDPI AG

Subject

Computational Mathematics,Computational Theory and Mathematics,Numerical Analysis,Theoretical Computer Science

Reference26 articles.

1. (2022, November 09). 511 Alberta. Available online: https://511.alberta.ca/.

2. (2023, April 24). Iowa DOT 511. Available online: https://www.511ia.org/@-94.9603,42.19251,7?show=iowaAppIncident,iowaAppRoadwork,weatherWarningsAreaEvents,otherStateInfo.

3. Wu, M., Kwon, T.J., Fu, L., and Wong, A.H. (2022). The Rise of Smart Cities, Elsevier.

4. Exploring the Associations between Winter Maintenance Operations, Weather Variables, Surface Condition, and Road Safety: A Path Analysis Approach;Abohassan;Accid. Anal. Prev.,2021

5. Gu, L. (2019). Developing Models for Estimating Winter Road Weather and Surface Conditions—An Empirical Investigation, University of Alberta.

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