B. Abegaz
Loyola University of Chicago,
United States
Keywords: robot operating system (ROS), unsupervised machine learning, feedback control
Summary:
AROSV is a robot operating system (ROS) based self-driving vehicle controller system that is designed to observe and control the movement of an autonomous vehicle from its starting position to a desired destination. Various computational and control mechanisms were implemented on the AROSV system using a closed-loop feedback motion controller and four unsupervised machine learning based motion controllers. The proposed unsupervised machine learning based motion control methods provide quicker response times of under one second during the lateral, longitudinal and angular motion control of the autonomous vehicle. The implementation of such methods could contribute to minimizing traffic congestion and avoiding collision for the future vehicular transportation systems.