신경회로망을 이용한 불확실한 로봇 시스템의 하이브리드 위치/힘 제어Hybrid position/force control of uncertain robotic systems using neural networks

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This paper presents neural networks for hybrid position/force control which is a type of position and force control for robot manipulators. The performance of conventional hybrid position/force control is excellent in the case of the exactly-known dynamic model of the robot, but degrades seriously as the uncertainty of the model increases. Hence, the neural network control scheme is presented here to overcome such shortcoming. The introduced neural term is designed to learn the uncertainty of the robot, and to control the robot through uncertainty compensation. Further more, the learning rule of the neural network is derived and is shown to be effective in the sense that it requires neither desired output of the network nor error back propagation through the plant. The proposed scheme is verified through the simulation of hybrid position/force control of a 6-dof robot manipulator.
Publisher
제어자동화시스템공학회
Issue Date
1997
Keywords

robot manipulators control; position/force control; neural networks; learning rule

Citation

제어자동화시스템공학논문지, 제 3권, 제 3호, pp.252-258

Citation
Journal of Control, Automation and Systems Engineering, Vol.3, No.3, pp.252-258
ISSN
1225-9845
URI
http://hdl.handle.net/10203/8425
Appears in Collection
EE-Journal Papers(저널논문)
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