Javascript must be enabled to continue!
Modeling driver-vehicle interaction in automated driving
View through CrossRef
AbstractIn automated vehicles, the collaboration of human drivers and automated systems plays a decisive role in road safety, driver comfort, and acceptance of automated vehicles. A successful interaction requires a precise interpretation and investigation of all influencing factors such as driver state, system state, and surroundings (e.g., traffic, weather). This contribution discusses the detailed structure of the driver-vehicle interaction, which takes into account the driving situation and the driver state to improve driver performance. The interaction rules are derived from a controller that is fed by the driver state within a loop. The regulation of the driver state continues until the target state is reached or the criticality of the situation is resolved. In addition, a driver model is proposed that represents the driver’s decision-making process during the interaction between driver and vehicle and during the transition of driving tasks. The model includes the sensory perception process, decision-making, and motor response. The decision-making process during the interaction deals with the cognitive and emotional states of the driver. Based on the proposed driver-vehicle interaction loop and the driver model, an experiment with 38 participants is performed in a driving simulator to investigate (1) if both emotional and cognitive states become active during the decision-making process and (2) what the temporal sequence of the processes is. Finally, the evidence gathered from the experiment is analyzed. The results are consistent with the suggested driver model in terms of the cognitive and emotional state of the driver during the mode change from automated system to the human driver.
Springer Science and Business Media LLC
Title: Modeling driver-vehicle interaction in automated driving
Description:
AbstractIn automated vehicles, the collaboration of human drivers and automated systems plays a decisive role in road safety, driver comfort, and acceptance of automated vehicles.
A successful interaction requires a precise interpretation and investigation of all influencing factors such as driver state, system state, and surroundings (e.
g.
, traffic, weather).
This contribution discusses the detailed structure of the driver-vehicle interaction, which takes into account the driving situation and the driver state to improve driver performance.
The interaction rules are derived from a controller that is fed by the driver state within a loop.
The regulation of the driver state continues until the target state is reached or the criticality of the situation is resolved.
In addition, a driver model is proposed that represents the driver’s decision-making process during the interaction between driver and vehicle and during the transition of driving tasks.
The model includes the sensory perception process, decision-making, and motor response.
The decision-making process during the interaction deals with the cognitive and emotional states of the driver.
Based on the proposed driver-vehicle interaction loop and the driver model, an experiment with 38 participants is performed in a driving simulator to investigate (1) if both emotional and cognitive states become active during the decision-making process and (2) what the temporal sequence of the processes is.
Finally, the evidence gathered from the experiment is analyzed.
The results are consistent with the suggested driver model in terms of the cognitive and emotional state of the driver during the mode change from automated system to the human driver.
Related Results
Applying machine learning for driver assistance systems and autonomous vehicle technologies
Applying machine learning for driver assistance systems and autonomous vehicle technologies
As the number of vehicles increases worldwide, the traffic situation becomes increasingly complicated in terms of safety. The automotive industry has been developing various safety...
Suspension damping force control algorithms using vehicle states with driver and road inputs
Suspension damping force control algorithms using vehicle states with driver and road inputs
"The damping force control system of the shock absorber is relatively simply constituted and adopted widely. Skyhook semi-active control logic is representative algorithm which red...
Human Driver Interaction with Self-Balancing Vehicles’ Dynamics
Human Driver Interaction with Self-Balancing Vehicles’ Dynamics
This paper deals with a research activity concerning two-wheel self-balancing vehicles, with particular reference to the interaction between the driver and the vehicle’s dynamics. ...
Modeling and Explanation of Driver Steering Style: An Experiment under Large-Curvature Road Condition
Modeling and Explanation of Driver Steering Style: An Experiment under Large-Curvature Road Condition
Before the maturation of vehicle’s self-driving, human-vehicle shared control would be a dominant solution in a certain period. Understanding driver’s maneuver behavior is an impor...
The effect of non-driving task takeover request message timing on novice drivers' driving trust
The effect of non-driving task takeover request message timing on novice drivers' driving trust
The unpredictable behavior patterns of self-driving vehicles in SAE level 3 autonomous driving can be untrustworthy to the driver. In self-driving vehicles, vehicle actions must be...
Modeling and simulation on interaction between pedestrians and a vehicle in a channel
Modeling and simulation on interaction between pedestrians and a vehicle in a channel
The mixed traffic flow composed of pedestrians and vehicles shows distinct features that a single kind of traffic flow does not have. In this paper, the motion of a vehicle is desc...
Driver Characteristics Oriented Autonomous Longitudinal Driving System in Car-Following Situation
Driver Characteristics Oriented Autonomous Longitudinal Driving System in Car-Following Situation
Advanced driver assistance system such as adaptive cruise control, traffic jam assistance, and collision warning has been developed to reduce the driving burden and increase drivin...
Concept of a Vehicle Platform for Development and Testing of Low-Speed Automated Driving Functions
Concept of a Vehicle Platform for Development and Testing of Low-Speed Automated Driving Functions
"The development of automated driving functions belongs among the most complex tasks, which have been focused on by academia and industry in the recent decade. The advantages of au...

