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Discrete-Time Recurrent Neural Control

Discrete-Time Recurrent Neural Control

Autorzy
Wydawnictwo CRC Press Inc.
Data wydania 01/09/2018
Wydanie Pierwsze
Liczba stron 271
Forma publikacji książka w twardej oprawie
Język angielski
ISBN 9781138550209
Kategorie Teorie nieliniowe
627.00 PLN (z VAT)
$141.04 / €134.43 / £116.70 /
Produkt dostępny
Dostawa 2 dni
Ilość
Do schowka

Opis książki

The book presents recent advances in the theory of neural control for discrete-time nonlinear systems with multiple inputs and multiple outputs. It provides solutions for the output trajectory tracking problem of unknown nonlinear systems based on sliding modes and inverse optimal control scheme.

Discrete-Time Recurrent Neural Control

Spis treści

Section I Analyses











Chapter 1 Introduction





1.1 Preliminaries





1.2 Motivation





1.3 Objectives





1.4 Book Structure





1.5 Notation





1.6 Acronyms











Chapter 2 Mathematical Preliminaries





2.1 Optimal Control





2.2 Lyapunov Stability





2.3 Robust Stability Analysis





2.4 Passivity





2.5 Discrete-time High Order Neural Networks





2.6 The EKF Training Algorithm





2.7 Separation Principle for Discrete-time Nonlinear Systems











Chapter 3 Discrete Time Neural Block Control





3.1 Identification





3.2 Illustrative example





3.3 Neural Block Controller Design





3.4 Applications





3.5 Conclusions











Chapter 4 Neural Optimal Control





4.1 Inverse Optimal Control via CLF





4.2 Robust Inverse Optimal Control





4.3 Trajectory Tracking Inverse Optimal Control





4.4 CLF-based Inverse Optimal Control for a Class of Nonlinear Positive Systems





4.5 Speed-Gradient for the Inverse Optimal Control





4.6 Speed-Gradient Algorithm for Trajectory Tracking





4.7 Trajectory Tracking for Systems in Block-Control Form





4.8 Neural Inverse Optimal Control





4.9 Block-Control Form: A Nonlinear Systems Particular Class





4.10 Conclusions











Section II Real-time Applications











Chapter 5 Induction motors





5.1 Neural Identifier





5.2 Discrete-time super-twisting observer





5.3 Neural Sliding Modes Block Control





5.4 Neural Inverse Optimal Control





5.5 Real time Implementation





5.6 Prototype





5.7 Conclusions





Chapter 6 Doubly Fed Induction Generator





6.1 Neural Identifiers





6.2 Neural Sliding Modes Block Control





6.3 Neural Inverse Optimal Control





6.4 Implementation on a Wind Energy Testbed





6.5 Conclusions











Chapter 7 Conclusions

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