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Model predictive control based path following for a wheel-legged robot

Ke Zhang, Junzheng Wang, Hui Peng, Yunpei Dang

Year
2020
Citations
6

Abstract

This paper proposes a model predictive control (MPC) based path following approach for tracking control of a wheel-legged robot named BIT-NAZA. The accuracy and stability of tracking control are still the main challenges for the autonomous wheel-legged robot due to its complex mechanical system. The wheel-legged robot has four legs and four wheels, and the wheels are installed on the end of the foot. To guarantee the tracking performance of the wheel-legged robot, effective approaches for reliable tracking control should be investigated with the consideration of the robot modeling, kinematics and dynamics constraints designing. In this paper, model predictive control based path following controller is designed and employed to improve the tracking performance for the wheel-legged robot BIT-NAZA. Experiments with the wheel-legged robot are performed to validate the performance of the proposed control strategy. The results demonstrate that the proposed methodology can achieve promising tracking performance in terms of accuracy.

Keywords

Legged robotModel predictive controlRobotKinematicsControl theory (sociology)Computer scienceController (irrigation)Control engineeringPath (computing)Mobile robot

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