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Adaptive PID Neuro-Controller for a Nonlinear Servomechanism

Rached Dhaouadi, Reza Jafari

Year
2007
Citations
3

Abstract

In this paper we propose an adaptive PID control scheme based on recurrent neural networks (RNN). The control system includes a RNN-PID control network and a RNN emulator. The recurrent neural networks are trained on-line using the RTRL learning algorithm. The plant sensitivity Information is calculated on-line using the emulator network and is fed back along with other inputs to train the control network. On-line simulation studies and results for a one-degree of freedom robot arm servomechanism are presented to show the effectiveness of the proposed control scheme.

Keywords

ServomechanismRecurrent neural networkControl theory (sociology)PID controllerComputer scienceArtificial neural networkScheme (mathematics)Nonlinear systemControl engineeringAdaptive control

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