Many studies have tried to use the surrogate safety measures (SSM) estimated from the microscopic traffic simulations. However, it is difficult to adopt these developed SSM to reflect real-world traffic conditions when the developed network in the simulation is not calibrated and validated accordingly. This paper proposed a method to develop the pattern-based surrogate safety measure (PSSM) using individual vehicle trajectory data. The PSSM can be estimated based on the pattern of hazardous driving behaviour (HDB). Using digital tacho graph data collected from the commercial vehicles, HDB patterns were obtained. Various PSSMs were developed and validated with the observed crash data using Random Forest. Then, the surrogate safety performance function was estimated based on the frequency of HDB. To enhance model performance, machine learning and data mining techniques were applied. The results show that sudden deceleration, sudden lane change, sudden overtaking and sudden U-turn are related to traffic crashes during HDB. The results also show that high potential for safety improvement was identified in the road section linking the urban and suburban areas. The findings from this study can provide new approach to adopt real-time individual vehicle trajectory data to evaluate safety performance of network levels.
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June 2021
Research Article|
October 22 2020
Using vehicle data as a surrogate for highway accident data Available to Purchase
Seongmin Park, MSc
;
Seongmin Park, MSc
PhD student, Department of Transportation and Logistic Engineering, Hanyang University, Ansan, Korea
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Seung-oh Son, MSc
;
Seung-oh Son, MSc
PhD student, Department of Transportation and Logistic Engineering, Hanyang University, Ansan, Korea
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Juneyoung Park, PhD
;
Juneyoung Park, PhD
Assistant Professor, Department of Transportation and Logistic Engineering, Hanyang University, Ansan, Korea (corresponding author: juneyoung@hanyang.ac.kr)
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Cheol Oh, PhD
;
Cheol Oh, PhD
Professor, Department of Transportation and Logistic Engineering, Hanyang University, Ansan, Korea
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Sungmin Hong, PhD
Sungmin Hong, PhD
Senior Researcher, Transportation Safety Research Department, Korea Transportation Safety Authority, Gimcheon, Korea
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Publisher: Emerald Publishing
Received:
February 28 2020
Accepted:
July 22 2020
Online ISSN: 1751-7699
Print ISSN: 0965-0903
ICE Publishing: All rights reserved
2020
Proceedings of the Institution of Civil Engineers - Municipal Engineer (2021) 174 (2): 67–74.
Article history
Received:
February 28 2020
Accepted:
July 22 2020
Citation
Park S, Son S, Park J, Oh C, Hong S (2021), "Using vehicle data as a surrogate for highway accident data". Proceedings of the Institution of Civil Engineers - Municipal Engineer, Vol. 174 No. 2 pp. 67–74, doi: https://doi.org/10.1680/jmuen.20.00012
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