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Kirjailija

Carlos J. Vega

Kirjat ja teokset yhdessä paikassa: 2 kirjaa, julkaisuja vuosilta 2021-2023, suosituimpien joukossa Nonlinear Pinning Control of Complex Dynamical Networks. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

2 kirjaa

Kirjojen julkaisuhaarukka 2021-2023.

Nonlinear Pinning Control of Complex Dynamical Networks

Nonlinear Pinning Control of Complex Dynamical Networks

Edgar N. Sanchez; Carlos J. Vega; Oscar J. Suarez; Guanrong Chen

TAYLOR FRANCIS LTD
2023
nidottu
This book presents two nonlinear control strategies for complex dynamical networks. First, sliding-mode control is used, and then the inverse optimal control approach is employed. For both cases, model-based is considered in Chapter 3 and Chapter 5; then, Chapter 4 and Chapter 6 are based on determining a model for the unknow system using a recurrent neural network, using on-line extended Kalman filtering for learning.The book is organized in four sections. The first one covers mathematical preliminaries, with a brief review for complex networks, and the pinning methodology. Additionally, sliding-mode control and inverse optimal control are introduced. Neural network structures are also discussed along with a description of the high-order ones. The second section presents the analysis and simulation results for sliding-mode control for identical as well as non-identical nodes. The third section describes analysis and simulation results for inverse optimal control considering identical or non-identical nodes. Finally, the last section presents applications of these schemes, using gene regulatory networks and microgrids as examples.
Nonlinear Pinning Control of Complex Dynamical Networks

Nonlinear Pinning Control of Complex Dynamical Networks

Edgar N. Sanchez; Carlos J. Vega; Oscar J. Suarez; Guanrong Chen

Taylor Francis Ltd
2021
sidottu
This book presents two nonlinear control strategies for complex dynamical networks. First, sliding-mode control is used, and then the inverse optimal control approach is employed. For both cases, model-based is considered in Chapter 3 and Chapter 5; then, Chapter 4 and Chapter 6 are based on determining a model for the unknow system using a recurrent neural network, using on-line extended Kalman filtering for learning.The book is organized in four sections. The first one covers mathematical preliminaries, with a brief review for complex networks, and the pinning methodology. Additionally, sliding-mode control and inverse optimal control are introduced. Neural network structures are also discussed along with a description of the high-order ones. The second section presents the analysis and simulation results for sliding-mode control for identical as well as non-identical nodes. The third section describes analysis and simulation results for inverse optimal control considering identical or non-identical nodes. Finally, the last section presents applications of these schemes, using gene regulatory networks and microgrids as examples.