<div>The focus of this book is the application of artificial neural networks in uncertain dynamical systems. It explains how to use neural networks in concert with adaptive techniques for system identification, state estimation, and control problems. The authors begin with a brief historical overvie
Adaptive Sliding Mode Neural Network Control for Nonlinear Systems
โ Scribed by Yang Li, Jianhua Zhang, Qiong Wu
- Publisher
- Academic Press
- Year
- 2018
- Tongue
- English
- Leaves
- 183
- Series
- Emerging Methodologies and Applications in Modelling, Identification and Control
- Category
- Library
No coin nor oath required. For personal study only.
โฆ Synopsis
Adaptive Sliding Mode Neural Network Control for Nonlinear Systems introduces nonlinear systems basic knowledge, analysis and control methods, and applications in various fields. It offers instructive examples and simulations, along with the source codes, and provides the basic architecture of control science and engineering.
โฆ Table of Contents
Cover
Adaptive Sliding Mode Neural Network Control for Nonlinear Systems
Copyright
Author Biographies
Preface
Acknowledgments
Introduction
An Overview of Each Chapter
1. Basic Concepts
1.1 Lyapunov Stability
1.1.1 Lyapunov Stability Theory
1.1.1.1 Introduction
1.1.1.2 Autonomous System
1.1.1.3 Equilibrium State
1.1.1.4 Lyapunov Stability
1.1.2 Lyapunov Asymptotic Stability
1.1.2.1 Definition of Lyapunov Asymptotic Stability
1.1.2.2 Example of Lyapunov Asymptotic Stability
1.1.3 Lyapunov Uniform Asymptotic Stability
1.1.3.1 Definition of Lyapunov Uniform Asymptotic Stability
1.1.3.2 The Relationship Between Lyapunov Asymptotic Stability and Lyapunov Uniform Asymptotic Stability
1.1.4 Lyapunov Global Asymptotic Stability
1.1.4.1 Definition of Lyapunov Global Asymptotic Stability
1.1.4.2 The Relationship Between Lyapunov Asymptotic Stability and Lyapunov Global Asymptotic Stability
1.1.5 Lyapunov Instability
1.1.5.1 The Geometric Interpretation of Definition of Lyapunov Instability
1.1.5.2 The Mathematical Description of Lyapunov Instability
1.1.6 Positive Definite Function
1.1.6.1 Definition
1.1.6.2 The Relationship Between Positive Definite Function and Negative Definite Function
1.1.6.3 Example of Positive Definite Function
1.1.7 Lyapunov Function
1.1.7.1 Definition of Lyapunov Function
1.1.7.2 Construction of Lyapunov function
1.1.8 Lyapunov Stability Theorem and Lyapunov Global Uniform Asymptotic Stability Theorem
1.1.8.1 Lyapunov Local Uniform Asymptotic Stability Theorem
1.1.8.2 Example of Lyapunov Stability Theorem
1.1.9 Robust Stability
1.2 Advanced Nonlinear Systems Control
1.3 Intelligent Methodology
References
2. Nonlinear Systems Analysis Approach
2.1 Exponential Stability Analysis of Cellular Neural Networks Based on Linear Matrix Inequality
2.1.1 System Formulation and Preliminaries
2.1.2 Main Results
2.1.3 Simulation Example
2.2 Robust Lyapunov Stability Analysis of the Cellular Neural Networks Based on Linear Matrix Inequality
2.2.1 System Formulation and Preliminaries
2.2.2 Main Results
2.2.3 Simulation Example
References
3. Classical Nonlinear Systems Control Methods
3.1 Sliding Mode Control
3.1.1 Design of Supertwisting Control Systems
3.1.2 Design of U-Supertwisting Controller
3.1.3 Simulation Example
3.2 Backstepping Control
3.2.1 System Formulation and Preliminaries
3.2.2 Main Results
3.2.3 Simulation Example
References
4. Advanced Nonlinear Systems Controller Design
4.1 Supertwisting Synchronization Control of Chaotic System-Based U-Model Method
4.1.1 Problem Description
4.1.2 Synchronization Control Based on Supertwisting Algorithm
4.1.3 Simulation Example
4.2 Supertwisting Sliding Mode Control of Nonlinear System-Based U-Model Method
4.2.1 Problem Description
4.2.2 One-Order Nonlinear System Control
4.2.3 N-order Nonlinear System Control
4.2.4 Simulation Example
4.3 Sliding Mode Controller Design for Nonlinear Systems With Matching Perturbations
4.3.1 Nonlinear Dynamic Plant Model
4.3.2 U-Model Method
4.3.3 U-Model
4.3.4 Design of U-Model Sliding Mode Control
4.3.5 Stability Analysis
4.3.6 Simulation Example
References
5. Intelligent Methodology
5.1 Neural Network Identification and Control for Nonlinear Dynamic Systems
5.1.1 System Description and Preliminaries
5.1.2 System Identification With Neural Network
5.1.3 Indirect Adaptive Controller Design
5.1.4 Algorithm for Implement
5.1.5 Simulation Studies
5.2 Finite-Time Adaptive Neural Network Control
5.2.1 System Description and Preliminaries
5.2.2 Adaptive NNs Control
5.2.3 Simulation Example
5.2.3.1 Mathematical Example
5.2.3.2 Plate-Ball Example
References
6. Applications
6.1 Aircraft Path Planning Based on Neural Networks
6.1.1 Path Model Based on Risk Assessment Model
6.1.2 Path Planning Based on PCNNs
6.1.3 Network Architecture
6.1.4 Path Planning Based on Neural Networks
6.1.5 Simulation Example
6.2 ADS-B for Multilateration System Using BP Neural Network
6.2.1 Multilateration
6.2.2 Multilateration System Theory and Positioning Algorithm
6.2.3 The Establishment and Process of BP Neural Network
6.2.4 The Simulation of BP Neural Network
References
Further Reading
Index
A
B
C
E
F
G
H
I
L
M
N
O
P
R
S
T
U
Back Cover
๐ SIMILAR VOLUMES
<div>The focus of this book is the application of artificial neural networks in uncertain dynamical systems. It explains how to use neural networks in concert with adaptive techniques for system identification, state estimation, and control problems. The authors begin with a brief historical overvie
<p><i>Neural Networks Modelling and Control: Applications for Unknown Nonlinear Delayed Systems in Discrete Time </i>focuses on modeling and control of discrete-time unknown nonlinear delayed systems under uncertainties based on Artificial Neural Networks. First, a Recurrent High Order Neural Networ
No fluff here, this book is chock full of valuable and insightful information on the application of recurrent closed loop neural nets for estimating and controlling nonlinear time series.
Intelligent systems are a hallmark of modern feedback control systems. But as these systems mature, we have come to expect higher levels of performance in speed and accuracy in the face of severe nonlinearities, disturbances, unforeseen dynamics, and unstructured uncertainties. Artificial neural net