학술논문

A sensorless state estimation for a safety-oriented cyber-physical system in urban driving: Deep learning approach
Document Type
Periodical
Source
IEEE/CAA Journal of Automatica Sinica IEEE/CAA J. Autom. Sinica Automatica Sinica, IEEE/CAA Journal of. 8(1):169-178 Jan, 2021
Subject
Computing and Processing
Communication, Networking and Broadcast Technologies
General Topics for Engineers
Robotics and Control Systems
Brakes
State estimation
Training
Neural networks
Deep learning
Data models
Computational modeling
Language
ISSN
2329-9266
2329-9274
Abstract
In todayʼ s modern electric vehicles, enhancing the safety-critical cyber-physical system ( CPS ) ʼ s performance is necessary for the safe maneuverability of the vehicle. As a typical CPS, the braking system is crucial for the vehicle design and safe control. However, precise state estimation of the brake pressure is desired to perform safe driving with a high degree of autonomy. In this paper, a sensorless state estimation technique of the vehicleʼ s brake pressure is developed using a deep-learning approach. A deep neural network ( DNN ) is structured and trained using deep-learning training techniques, such as, dropout and rectified units. These techniques are utilized to obtain more accurate model for brake pressure state estimation applications. The proposed model is trained using real experimental training data which were collected via conducting real vehicle testing. The vehicle was attached to a chassis dynamometer while the brake pressure data were collected under random driving cycles. Based on these experimental data, the DNN is trained and the performance of the proposed state estimation approach is validated accordingly. The results demonstrate high-accuracy brake pressure state estimation with RMSE of 0.048 MPa.