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Discrete-Time Neural Inverse Optimal Control for Nonlinear Systems via Passivation

Fernando Ornelas-Téllez, Edgar N. Sánchez, Alexander G. Loukianov

Year
2012
Citations
33

Abstract

This paper presents a discrete-time inverse optimal neural controller, which is constituted by combination of two techniques: 1) inverse optimal control to avoid solving the Hamilton-Jacobi-Bellman equation associated with nonlinear system optimal control and 2) on-line neural identification, using a recurrent neural network trained with an extended Kalman filter, in order to build a model of the assumed unknown nonlinear system. The inverse optimal controller is based on passivity theory. The applicability of the proposed approach is illustrated via simulations for an unstable nonlinear system and a planar robot.

Keywords

Control theory (sociology)Nonlinear systemArtificial neural networkOptimal controlController (irrigation)InverseDiscrete time and continuous timeExtended Kalman filterKalman filterComputer science

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