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Existence, learning, and replication of periodic motions in recurrent neural networks

A. Ruiz, D.H. Owens, Stuart Townley

Year
1998
Citations
72

Abstract

A class of recurrent neural networks is shown to possess a stable limit cycle. A gradient type algorithm is used to modify the parameters of the network so that it learns and replicates autonomously a time varying periodic signal. The results are applied to controlling the repetitive motion of a two-link robot manipulator.

Keywords

Artificial neural networkRecurrent neural networkComputer scienceLimit cycleReplication (statistics)Periodic functionClass (philosophy)Motion (physics)Artificial intelligenceLimit (mathematics)

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