Home /Research /Neural Network-Based Adaptive Motion Control for a Mobile Robot with Unknown Longitudinal Slipping
LEARNING

Neural Network-Based Adaptive Motion Control for a Mobile Robot with Unknown Longitudinal Slipping

Gang Wang, Xiaoping Liu, Yunlong Zhao, Song Han

Year
2019
Citations
27
Access
Open access

Abstract

When the mobile robot performs certain motion tasks in complex environment, wheel slipping inevitably occurs due to the wet or icy road and other reasons, thus directly influences the motion control accuracy. To address unknown wheel longitudinal slipping problem for mobile robot, a RBF neural network approach based on whole model approximation is presented. The real-time data acquisition of inertial measure unit (IMU), encoders and other sensors is employed to get the mobile robot’s position and orientation in the movement, which is applied to compensate the unknown bounds of the longitudinal slipping using the adaptive technique. Both the simulation and experimental results prove that the control scheme possesses good practical performance and realize the motion control with unknown longitudinal slipping.

Keywords

SlippingInertial measurement unitMobile robotComputer scienceControl theory (sociology)Position (finance)Motion controlRobotMotion (physics)Artificial neural network

Related papers

Browse all LEARNING papers