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Original Articles

Nonlinear system identification using neural state space models, applicable to robust control design

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Pages 129-152 | Received 15 Dec 1992, Published online: 24 Feb 2007
 

Abstract

Prediction error learning algorithms for neural state space models are developed, both for the deterministic case and the stochastic case with measurement and process noise. For the stochastic case, a predictor with direct parametrization of the Kalman gain by a neural net architecture is proposed. Expressions for the gradients are derived by applying Narendra's sensitivity model approach. Finally a linear fractional transformation representation is given for neural state space models, which makes it possible to use these models, obtained from input/output measurements on a plant, in a standard robust performance control scheme.

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