Risk-Quantification Method for Car-Following Behavior Considering Driving-Style Propensity

Author:

Wang Kedong12,Qu Dayi1,Yang Yufeng1,Dai Shouchen1,Wang Tao13ORCID

Affiliation:

1. School of Mechanical and Automotive Engineering, Qingdao University of Technology, Qingdao 266520, China

2. Intelligent Manufacturing Institute, Qingdao Huanghai University, Qingdao 266427, China

3. School of Artificial Intelligence and Big Data, Zibo Vocational Institute, Zibo 255300, China

Abstract

To systematically study the influence of a propensity for a particular driving style on car-following risk, a safety potential field risk-quantification method that considers driving style is proposed. First, we classify driving behaviors and construct a field-based safety potential car-following model via analogy with intermolecular interactions; second, we establish a risk-quantification model by considering driving style, risk exposure, and risk severity and classify the consequent risk into four levels, high risk, medium risk, low risk, and safe, using the fuzzy C-means algorithm. Finally, we predict the car-following risk using the LightGBM algorithm in real time. The experimental results show that the LightGBM algorithm can recognize up to 86% of medium–high risk levels compared to the Decision Tree and Random Forest Algorithms. It can achieve effective prediction of car-following risk, which provides sufficient warning information to drivers and helps improve the overall safety of vehicle operation.

Funder

National Natural Science Foundation of China

Modeling of driving safety potential field and resolving longitudinal& lateral dimensions steady-state response mechanism of vehicle clusters based on molecular dynamics in connected environment

Qingdao West Coast New District College President’s Fund

Carbon Fiber Fully Wound with Plastic Lining for Automotive Use High Pressure Gas Cylinder (Type IV Cylinder) R&D

Publisher

MDPI AG

Reference24 articles.

1. Behavioral correlates of individual differences in road-traffic crash risk: An examination method and findings;Elander;Psychol. Bull.,1993

2. Errors and violations on the roads: A real distinction?;Reason;Ergonomics,1990

3. Ishibashi, M., Okuwa, M., Doi, S., and Akamatsu, M. (2007, January 17–20). Indices for characterizing driving style and their relevance to car following behavior. Proceedings of the SICE Annual Conference, Takamatsu, Japan.

4. The multidimensional driving style incentory—Scale construct and validation;Mikulincer;Accid. Anal. Prev.,2004

5. Cheng, F., Gao, W., and Jia, S. (2023). Research on Driving Style Recognition of Autonomous Vehicles Based on ACO-BP. Appl. Sci., 13.

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