Control and State Estimation for Dynamical Network Systems with Complex Samplings

Title: Control and State Estimation for Dynamical Network Systems with Complex Samplings
Author: Bo Shen, Qi Li, Zidong Wang
ISBN: 1032310200 / 9781032310206
Format: Soft Cover
Pages: 306
Publisher: CRC Press
Year: 2024
Availability: 15-30 days

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This book focuses on the control and state estimation problems for dynamical network systems with complex samplings subject to various network-induced phenomena. It includes a series of control and state estimation problems tackled under the passive sampling fashion. Further, it explains the effects from the active sampling fashion, i.e., event-based sampling is examined on the control/estimation performance, and novel design technologies are proposed for controllers/estimators. Simulation results are provided for better understanding of the proposed control/filtering methods. By drawing on a variety of theories and methodologies such as Lyapunov function, linear matrix inequalities, and Kalman theory, sufficient conditions are derived for guaranteeing the existence of the desired controllers and estimators, which are parameterized according to certain matrix inequalities or recursive matrix equations.

  •     Covers recent advances of control and state estimation for dynamical network systems with complex samplings from the engineering perspective
  •     Systematically introduces the complex sampling concept, methods, and application for the control and state estimation
  •     Presents unified framework for control and state estimation problems of dynamical network systems with complex samplings
  •     Exploits a set of the latest techniques such as linear matrix inequality approach, Vandermonde matrix approach, and trace derivation approach
  •     Explains event-triggered multi-rate fusion estimator, resilient distributed sampled-data estimator with predetermined specifications

This book is aimed at researchers, professionals, and graduate students in control engineering and signal processing.

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Chapter 1 : Introduction
Chapter 2 : Stabilization and Control under Noisy Sampling Intervals 
Chapter 3 : Distributed State Estimation over Sensor Networks with Nonuniform Samplings 
Chapter 4 : Event-Triggered Control for Switched Systems 
Chapter 5 : Event-Triggered H∞ State Estimation for State-Saturated Systems 
Chapter 6 : Event-Triggered State Estimation for Discrete-Time Neural Networks 
Chapter 7 : Event-Triggered Fusion Estimation for Multi-Rate Systems 
Chapter 8 : Synchronization Control under Dynamic Event-Triggered Mechanisms 
Chapter 9 : Filtering or State Estimation under Dynamic Event-Triggered Mechanisms
Chapter 10 : Conclusions and Future Work