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Articles

Determining the steering direction in critical situations: A decision tree–based method

ORCID Icon, , &
Pages 395-400 | Received 20 Oct 2019, Accepted 15 May 2020, Published online: 04 Jun 2020
 

Abstract

Objective: Factors related to the driver–vehicle–environment system have a significant influence on a driver’s decision to perform evasive maneuvers, especially the decision of steering direction (DSD) in critical situations. However, few studies have systematically investigated the relationships between these factors and DSD. The objective of this study is to analyze and model drivers’ DSD in critical situations.

Methods: Data from the NASS-CDS from 1995 to 2015 were utilized in this study. The decision tree (DT) classifier was utilized to model a driver’s DSD for both intersection-related and non-intersection-related subsets, combined with a 10-fold cross-validation technique and grid search approach to evaluate and optimize the model. An analysis of variable importance was also conducted.

Results: Two separate DT models of drivers’ DSD were obtained based on the optimized hyperparameters, with test accuracies of 84.6% (intersection-related) and 79.2% (non-intersection-related). The variable DIFFANGLE (angle difference between 2 vehicles) ranked as the most important factor influencing drivers’ DSD in both models. The variables, in order of importance, were SPEED (travel speed of the subject vehicle) and AGE (driver’s age) for the intersection-related model and SPEED, PREMOVE (pre-event movement), TRAFFLOW (trafficway flow), and AGE for the non-intersection-related model. Moreover, an interesting same direction pattern was observed in both DT models.

Conclusions: This study employed NASS-CDS data and DT classifiers to analyze and model drivers’ DSD behavior. The test accuracies for both classifiers were acceptable. Potential variables influencing drivers’ DSD were explored, which improves the research on evasive behavior in lateral movement and promotes further applications for intelligent vehicles using the constructed models.

Disclosure statement

No potential conflict of interest was reported by the author(s).

Data availability

The data sets analyzed in the current study are available in NHTSA’s repository, https://www.nhtsa.gov/research-data/national-automotive-sampling-system-nass.

Additional information

Funding

This study is supported by National Natural Science Foundation of China (Grant No. 51505247) and the State Key Laboratory of Advanced Design and Manufacturing for Vehicle Body (Grant No. 61775006).

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