ABSTRACT

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.

part I|60 pages

Analyses and Preliminaries

chapter 21|24 pages

Introduction

chapter 2|34 pages

Preliminaries

part II|44 pages

Sliding-Mode Control

chapter 623|22 pages

Model-Based Sliding-Mode Control

chapter 4|20 pages

Neural Sliding-Mode Control

part III|54 pages

Optimal Control

chapter 1065|18 pages

Model-Based Optimal Control

chapter 6|34 pages

Neural Inverse Optimal Control

part IV|42 pages

Applications

chapter 1607|26 pages

Pinning Control for the p53-Mdm2 Network

chapter 8|14 pages

Secondary Control of Microgrids