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MANIPULATION

Nonlinear model predictive control of a robot manipulator

Philippe Poignet, Maxime Gautier

Year
2000
Citations
97

Abstract

An efficient approach for nonlinear model predictive control is proposed. Basically, the model is first linearized by feedback, secondly a model predictive control scheme, implemented with an optimized dynamic model and running within a small sampling period, is exhibited. Major simulation results performed using numerical values of an industrial SCARA type robot prove the effectiveness of the proposed approach. The nonlinear model-based predictive control and the commonly used computed torque control are compared. The tracking performances and the robustness with respect to external disturbances or model/robot mismatch are described.

Keywords

SCARAControl theory (sociology)Model predictive controlRobustness (evolution)Nonlinear systemRobotNonlinear modelComputer scienceTorqueControl engineering

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