September 1, 2010 – August 31, 2015
$3.1M
PI:
S. Ferrari
Co-PI:
G. Sapiro (Duke University), A. Visconti (Ferrari SpA)
Project Description
This project develops new methods inspired by modern control theory, computational intelligence, and data mining, for the design of human-machine interfaces that adapt the dynamic response of the automobile to the driver, in order to enhance the driver’s experience and the automobile’s performance in the closed loop.
Research Goals
- Integration of remote sensing and information processing for driver state inference
- Application of adaptive feedback control for driver experience improvement
- Development of displays and ambiance design
Peer-Reviewed Publications
- H. Wei, W. Ross, S. Varisco, P. Krief, and S. Ferrari, “Modeling of Human Driver Behavior via Receding Horizon and Artificial Neural Network Controllers,” Proc. of the IEEE Conference on Decision and Control, Florence, Italy, December 2013. [PDF][Slides]
Presentations
- “Human Driver Modeling via Articial Neural Networks,” Veicolo Group, Ferrari S.p.A., Maranello (MO), Italy, January 2013.
- “Modeling Human Pilots with Artificial Neural Networks,” IEEE Conference on Decision and Control, Florence, Italy, December 2013. [Slides]