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An approximate internal model-based neural control for serial robots with multiple clearance joints

Lixin Yang, Xianmin Zhang

Year
2018
Citations
4
Access
Open access

Abstract

A dynamic model of serial robots with multiple clearance joints is developed. The contact phenomenon in the clearance joint is modeled by a continuous dissipative Hertz contact theory, and the friction force is calculated based on the modified Coulomb’s friction law. A neural network method is employed to predict the dynamic response, which avoids the problem in solving the differential algebraic equations. An approximate internal model-based neural control method is proposed to control the undesired effects arising from the joint clearances. The validity of the proposed method is verified by simulation results.

Keywords

Artificial neural networkControl theory (sociology)Dissipative systemRobotHertzJoint (building)Contact forceInternal modelComputer scienceControl (management)

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