Modeling Driver Behavior and Driver Aggressiveness Using Biobehavioral Methods - Phase I

University

University of Kansas

Principal Investigator

Alexandra Kondyli (akondyli@ku.edu)

Total Project Cost

$168,517

Funding Type

2016 USDOT

Start Date

07/15/2017

End Date

12/31/2018

Agency ID or Contract Number

69A3551747107

Abstract

It is well known that driver inattention and human error are the primary causes of traffic accidents. In addition, existing driver behavioral modeling algorithms (e.g., car-following, lane changing) assume that driver variability is expressed through various distributions and random number generators. What constitutes aggressive driving, and which are the actions of aggressive drivers that negatively affect safety and traffic instability, are some of the topics that have not been studied thoroughly. At the same time, significant work has been done in the field of cognitive science and psychology, with emphasis in understanding, modeling, and predicting drivers’ intended actions.<br/>The goal of this research is to investigate the linkage between different driver profiles with both traffic stability and the probability of being involved in risk-taking behaviors, borrowing concepts from the fields of cognitive science and psychology. Participants with different driving habits and levels of aggressiveness will be invited to participate in driving simulator experiments, where they will be asked to drive under different geometric, control, and traffic scenarios, that may additionally vary on the level of moral decision making involved. Various metrics related to drivers’ reaction times, gap acceptance, car-following, and lane changing activity will be measured through the driving simulator experiments. Additional behavioral and psychophysical measures will be collected through electroencephalogram recordings (EEG) during the simulator experiments, and through questionnaires.<br/>These data will result in the identification of measurable behavioral parameters and their inter-driver heterogeneity. It is expected that these parameters will be used in subsequent projects to refine or develop enhanced driver behavior models that account for both safety and traffic instabilities.

Deliverables

Download the Final Report

Related Phases Phase II: Modeling Driver Behavior and Driver Aggressiveness Using Biobehavioral Methods – Phase II

Phase III: Modeling Driver Behavior and Driver Aggressiveness Using Biobehavioral Methods – PART III

Phase IV: Investigation of Driver Adaptations in a Mixed Traffic Environment