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Parametric motion control of robotic arms: A biologically based approach using neural networksA neural network based system is presented which is able to generate point-to-point movements of robotic manipulators. The foundation of this approach is the use of prototypical control torque signals which are defined by a set of parameters. The parameter set is used for scaling and shaping of these prototypical torque signals to effect a desired outcome of the system. This approach is based on neurophysiological findings that the central nervous system stores generalized cognitive representations of movements called synergies, schemas, or motor programs. It has been proposed that these motor programs may be stored as torque-time functions in central pattern generators which can be scaled with appropriate time and magnitude parameters. The central pattern generators use these parameters to generate stereotypical torque-time profiles, which are then sent to the joint actuators. Hence, only a small number of parameters need to be determined for each point-to-point movement instead of the entire torque-time trajectory. This same principle is implemented for controlling the joint torques of robotic manipulators where a neural network is used to identify the relationship between the task requirements and the torque parameters. Movements are specified by the initial robot position in joint coordinates and the desired final end-effector position in Cartesian coordinates. This information is provided to the neural network which calculates six torque parameters for a two-link system. The prototypical torque profiles (one per joint) are then scaled by those parameters. After appropriate training of the network, our parametric control design allowed the reproduction of a trained set of movements with relatively high accuracy, and the production of previously untrained movements with comparable accuracy. We conclude that our approach was successful in discriminating between trained movements and in generalizing to untrained movements.
Document ID
19930016775
Acquisition Source
Legacy CDMS
Document Type
Conference Paper
Authors
Bock, O.
(Institute for Space and Terrestrial Science North York Ontario, Canada)
D'Eleuterio, G. M. T.
(Toronto Univ. Ontario., Canada)
Lipitkas, J.
(Toronto Univ. Ontario., Canada)
Grodski, J. J.
(Defence and Civil Inst. of Environmental Medicine Toronto, Ontario., Canada)
Date Acquired
September 6, 2013
Publication Date
January 1, 1993
Publication Information
Publication: NASA. Goddard Space Flight Center, The 1993 Goddard Conference on Space Applicati ons of Artificial Intelligence
Subject Category
Cybernetics
Accession Number
93N25964
Funding Number(s)
CONTRACT_GRANT: W7711-0-7118
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
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