1 Introduction
1.1 Neural Network Control
1.1.1 Why Neural Network Control?
1.1.2 Review of Neural Network Control
1.1.3 Review of RBF Adaptive Control
1.2 Review of RBF Neural Network
1.3 RBF Adaptive Control for Robot Manipulators
1.4 S Function Design for Control System
1.4.1 S Function Introduction
1.4.2 Basic Parameters in S Function
1.4.3 Examples
1.5 An Example of a Simple Adaptive Control System
1.5.1 System Description
1.5.2 Adaptive Control Law Design
1.5.3 Simulation Example
Appendix
References
2 RBF Neural Network Design and Simulation
2.1 RBF Neural Network Design and Simulation
2.1.1 RBF Algorithm
2.1.2 RBF Design Example with Matlab Simulation
2.2 RBF Neural Network Approximation Based on Gradient Descent Method
2.2.1 RBF Neural Network Approximation
2.2.2 Simulation Example
2.3 Effect of Gaussian Function Parameters on RBF Approximation
2.4 Effect of Hidden Nets Number on RBF Approximation
2.5 RBF Neural Network Training for System Modeling
2.5.1 RBF Neural Network Training
2.5.2 Simulation Example
2.6 RBF Neural Network Approximation
Appendix
References
3 RBF Neural Network Control Based on Gradient Descent Algorithm
3.1 Supervisory Control Based on RBF Neural Network
3.1.1 RBF Supervisory Control
3.1.2 Simulation Example
3.2 RBFNN-Based Model Reference Adaptive Control
3.2.1 Controller Design
3.2.2 Simulation Example
3.3 RBF Self-Adjust Control
3.3.1 System Description
3.3.2 RBF Controller Design
3.3.3 Simulation Example
Appendix
References
4 Adaptive RBF Neural Network Control
4.1 Adaptive Control Based on Neural Approximation
4.1.1 Problem Description
4.1.2 Adaptive RBF Controller Design
4.1.3 Simulation Examples
4.2 Adaptive Control Based on Neural Approximation with Unknown Parameter
4.2.1 Problem Description
4.2.2 Adaptive Controller Design
4.2.3 Simulation Examples
4.3 A Direct Method for Robust Adaptive Control by RBF
4.3.1 System Description
4.3.2 Desired Feedback Control and Function Approximation
4.3.3 Controller Design and Performance Analysis
4.3.4 Simulation Example
Appendix
References
5 Neural Network Sliding Mode Control
5.1 Typical Sliding Mode Controller Design
5.2 Sliding Mode Control Based on RBF for Second-Order SISO Nonlinear System
5.2.1 Problem Description
……
6 Adaptive RBF Control Based on Global Approximation
7 Adaptive Robust RBF Control Based on Local Approximation
8 Backstepping Control with RBF
9 Digital RBF Neural Network Control
10 Discrete Neural Network Control
11 Adaptive RBF Observer Design and Sliding Mode Control
Index