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This book is indexed in
Engineering » Control Engineering
Frontiers in Advanced Control Systems
Edited by Ginalber Luiz de Oliveira Serra, ISBN 978-953-51-0677-7, Hard cover, 278 pages, Publisher: InTech, Chapters published July 25, 2012 under CC BY 3.0 license
DOI: 10.5772/1267
This book pretends to bring the state-of-art research results on advanced control from both the theoretical and practical perspectives. The fundamental and advanced research results as well as the contributions in terms of the technical evolution of control theory are of particular interest. This book can serve as a bridge between people who are working on the theoretical and practical research on control theory, and facilitate the proposal of development of new control techniques and its applications. In addition, this book presents educational importance to help students and researchers to know the frontiers of the control technology.
- Chapter 1
Highlighted Aspects From Black Box Fuzzy Modeling For Advanced Control Systems Design - Chapter 2
Online Adaptive Learning Solution of Multi-Agent Differential Graphical Games - Chapter 3
Neural and Genetic Control Approaches in Process Engineering - Chapter 4
New Techniques for Optimizing the Norm of Robust Controllers of Polytopic Uncertain Linear Systems - Chapter 5
On Control Design of Switched Affine Systems with Application to DC-DC Converters - Chapter 6
PID Controller Tuning Based on the Classification of Stable, Integrating and Unstable Processes in a Parameter Plane - Chapter 7
A Comparative Study using Bio-Inspired Optimization Methods Applied to Controllers Tuning - Chapter 8
Adaptive Coordinated Cooperative Control of Multi-Mobile Manipulators - Chapter 9
Iterative Learning - MPC: an Alternative Strategy - Chapter 10
FPGA Implementation of PID Controller for the Stabilization of a DC-DC “Buck” Converter - Chapter 11
Model Predictive Control Relevant Identification - Chapter 12
System Identification Using Orthonormal Basis Filters
