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Neural-net tuned PID control of a parallel type mechanism with force feedback for virtual reality applications

Published online by Cambridge University Press:  20 May 2004

M. Karkoub
Affiliation:
INRIA, Projet IMARA, Domaine de Voluceau, 78153 Le Chesney Cedex (France). E-mail: mansour.karkoub@inria.fr
M.-G. Her
Affiliation:
INRIA, Projet IMARA, Domaine de Voluceau, 78153 Le Chesney Cedex (France). E-mail: mansour.karkoub@inria.fr
K.-S. Hsu
Affiliation:
Department of Mechanical Engineering, Tatung University, Taipei, Taiwan 10451 Taiwan (R.O.C.)
C.-Y. Chen
Affiliation:
Department of Automation Engineering, Kao Yuan Institute of Technology, Lu-Chu Hsiang, Kaohsiung, Taiwan (R.O.C.)

Abstract

This paper explores a new type of a parallel platform human interface manipulator based on virtual reality (VR) for mechanism design applications. A motion control of a six-link robot manipulator actuated by three active joints is presented here. The main components of the system include a user interface, a software simulating the environment, and a VR control system. The model of the VR system is built based on a force feedback behavior that enables the operator to feel the actual force feedback from the virtual environment just as he/she would from the real environment. A primary stabilizing controller is used to develop a haptic interface device where realistic simulations of the dynamic interaction forces between a human operator and the simulated virtual object/mechanism is required. The stability and performance of the system are studied and analyzed based on the Nyquist stability criterion. Experiments on cutting virtual clay are used to validate the theoretical developments. It was shown that the experimental and theoretical results are in good agreement.

Type
Research Article
Copyright
© 2004 Cambridge University Press

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