项目名称: |
Predicting Driver Takeover Performance in Conditional Automation (Level 3) through Physiological Sensing |
摘要: |
The National Highway Traffic Safety Administration (NHTSA) calls for
fundamental research on “the driver performance profile over time in
sustained and short-cycle automation … and driver-vehicle interface to
allow safe operation and transition between automated and nonautomated
vehicle operation.” The emerging level 3 autonomous
vehicle (AV) has the potential to transform driving because it can
perform all aspects of the driving task and allow for complete
disengagement of drivers (e.g., sit back and relax) under certain
driving scenarios. The vehicle can handle situations that require an
immediate response, such as emergency braking. However, this is not
fully autonomous, and still requires the driver to be prepared for
takeover at all times with a few seconds of warning. Being able to
measure and predict the takeover performance (TOP) ahead of time
and issue adequate warnings is thus critical to ensure driver comfort,
trust, and safety in the system and ultimately acceptance of the
technology by different stakeholders. This has not been explored to
the extent of establishing complete and irrefutable trust in the
autonomous vehicle system and its ability to engage the driver in safe
and effective takeover under certain driving scenarios. Therefore, the
objective of this project is to perform fundamental research to
understand drivers’ capabilities of taking over the vehicle safely and
promptly at any time in level 3 automation. This project advances
fundamental research in human factors in level 3 AVs. This is achieved
through an integrated treatment of the drivers’ TOP measured and
predicted through physiological features and driving environment data
in level 3 AVs. Thus, the main objective of this research will be to
investigate the feasibility of using multimodal physiological features
collected from drivers in level 3 AVs under different driving and
disengagement scenarios (secondary tasks) to develop a personalized
and real-time prediction of TOP. The project will engage a diverse
group of students and faculty and develop a research program in an
unexplored area of level 3 AVs, leading to substantial advances in how
human physiological sensing can be used to understand the driver’s
TOP, especially in a personalized manner. Such an understanding can
eventually lead to the design of adaptive and personalized alerts that
can be integrated in level 3 AVs. |
状态: |
Active |
资金: |
206,278 ($149,278 CCAT, $57,000 Cost Share) |
资助组织: |
Office of the Assistant Secretary for Research and Technology<==>Center for Connected and Automated Transportation |
项目负责人: |
Tucker-Thomas, Dawn;Bezzina, Debra |
执行机构: |
University of Michigan, Ann Arbor |
开始时间: |
20210301 |
预计完成日期: |
20220228 |
主题领域: |
Passenger Transportation;Safety and Human Factors;Transportation (General);Vehicles and Equipment |