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E-raamat: Stability Analysis and State Estimation of Memristive Neural Networks [Taylor & Francis e-raamat]

(Anhui Polytechnic University, Wuhu, China.), (Nanjing University of Science and Technology, Nanjing, China), (Brunel Uni, UK)
  • Formaat: 214 pages, 3 Tables, black and white; 47 Line drawings, black and white; 47 Illustrations, black and white
  • Ilmumisaeg: 17-Aug-2021
  • Kirjastus: CRC Press
  • ISBN-13: 9781003189152
  • Taylor & Francis e-raamat
  • Hind: 216,96 €*
  • * hind, mis tagab piiramatu üheaegsete kasutajate arvuga ligipääsu piiramatuks ajaks
  • Tavahind: 309,94 €
  • Säästad 30%
  • Formaat: 214 pages, 3 Tables, black and white; 47 Line drawings, black and white; 47 Illustrations, black and white
  • Ilmumisaeg: 17-Aug-2021
  • Kirjastus: CRC Press
  • ISBN-13: 9781003189152

In this book, the stability analysis and estimator design problems are discussed for delayed discrete-time memristive neural networks. In each chapter, the analysis problems are firstly considered, where the stability, synchronization and other performances (e.g., robustness, disturbances attenuation level) are investigated within a unified theoretical framework. In this stage, some novel notions are put forward to reflect the engineering practice. Then, the estimator design issues are discussed where sufficient conditions are derived to ensure the existence of the desired estimators with guaranteed performances. Finally, the theories and techniques developed in previous parts are applied to deal with some issues in several emerging research areas.

The book

  • Unifies existing and emerging concepts concerning delayed discrete memristive neural networks with an emphasis on a variety of network-induced phenomena
  • Captures recent advances of theories, techniques, and applications of delayed discrete memristive neural networks from a network-oriented perspective
  • Provides a series of latest results in two popular yet interrelated areas, stability analysis and state estimation of neural networks
  • Exploits a unified framework for analysis and synthesis by designing new tools and techniques in combination with conventional theories of systems science, control engineering and signal processing
  • Gives simulation examples in each chapter to reflect the engineering practice


This book discusses the stability analysis and estimator design problems for discrete-time memristive neural networks subject to time-delays and approaches state estimation from different perspectives. Each chapter includes analysis problems and application of theories and techniques to pertinent research areas.
Preface xi
Acknowledgment xiii
Authors Biographies xv
List of Figures
xvii
List of Tables
xix
Symbols xxi
1 Introduction
1(18)
1.1 Background on Memristive Neural Networks
2(7)
1.1.1 Memristor and Its Circuit Realization
4(1)
1.1.2 Stability Analysis and State Estimation for MNNs
5(1)
1.1.3 Recent Progress on Several Types of Neural Networks
6(1)
1.1.3.1 RNNs
7(1)
1.1.3.2 BAMNNs
8(1)
1.1.3.3 CMNNs
8(1)
1.2 MNNs subject to Engineering-Oriented Complexities
9(4)
1.2.1 Stochasticity
10(1)
1.2.2 Time-Delays
10(1)
1.2.3 Network-Induced Incomplete Information
11(1)
1.2.3.1 Missing Measurements
11(1)
1.2.3.2 Channel Fading
12(1)
1.2.3.3 Signal Quantization
12(1)
1.3 Design Techniques
13(3)
1.3.1 Event-Triggering Mechanisms
13(1)
1.3.2 Network Communication Protocols
14(1)
1.3.2.1 RR Protocol
14(1)
1.3.2.2 WTOD Protocol
15(1)
1.3.2.3 SC Protocol
15(1)
1.3.3 Set-Membership Technique
15(1)
1.3.4 Non-Fragile Algorithm
16(1)
1.4 Outline
16(3)
2 H∞ State Estimation For Discrete-Time Memristive Recurrent Neural Networks with Stochastic Time-Delays
19(14)
2.1 Problem Formulation
20(3)
2.2 Main Results
23(5)
2.3 An Illustrative Example
28(3)
2.4 Summary
31(2)
3 Event-Triggered H∞ State Estimation For Delayed Stochastic Memristive Neural Networks with Missing Measurements: the Discrete Time Case
33(22)
3.1 Problem Formulation
34(6)
3.2 Main Results
40(9)
3.3 An Illustrative Example
49(3)
3.4 Summary
52(3)
4 H∞ State Estimation For Discrete-Time Stochastic Memristive Bam Neural Networks with Mixed Time-Delays
55(22)
4.1 Problem Formulation and Preliminaries
56(7)
4.2 Main Results
63(9)
4.3 Numerical Example
72(4)
4.4 Summary
76(1)
5 Stability Analysis For Discrete-Time Stochastic Memristive Neural Networks with Both Leakage and Probabilistic Delays
77(18)
5.1 Problem Formulation
78(5)
5.2 Main Results
83(9)
5.3 Illustrative Examples
92(2)
5.4 Summary
94(1)
6 Delay-Distribution-Dependent H∞ State Estimation For Discrete-Time Memristive Neural Networks with Mixed Time-Delays and Fading Measurements
95(22)
6.1 Problem Formulation
96(6)
6.2 Main Results
102(10)
6.3 Illustrative Examples
112(3)
6.4 Summary
115(2)
7 On State Estimation For Discrete Time-Delayed Memristive Neural Networks Under the Wtod Protocol: A Resilient Set-Membership Approach
117(18)
7.1 Problem Formulation
118(6)
7.1.1 Memristive Neural Network Model
118(2)
7.1.2 The WTOD Protocol
120(4)
7.2 Main Results
124(6)
7.3 An Illustrative Example
130(4)
7.4 Summary
134(1)
8 On Finite-Horizon H∞ State Estimation For Discrete-Time Delayed Memristive Neural Networks Under Stochastic Communication Protocol
135(16)
8.1 Problem Formulation and Preliminaries
136(4)
8.2 Main Results
140(6)
8.3 An Illustrative Example
146(3)
8.4 Summary
149(2)
9 Resilient H∞ State Estimation For Discrete-Time Stochastic Delayed Memristive Neural Networks: A Dynamic Event-Triggered Mechanism
151(18)
9.1 Problem Formulation
152(4)
9.2 Main Results
156(8)
9.3 An Illustrative Example
164(4)
9.4 Summary
168(1)
10 H∞ and L2 --- L∞ State Estimation For Delayed Memristive Neural Networks On Finite Horizon: the Round-Robin Protocol
169(22)
10.1 Problem Formulation and Preliminaries
170(3)
10.2 Main Results
173(9)
10.3 An Illustrative Example
182(8)
10.4 Summary
190(1)
11 Conclusions and Future Topics
191(2)
Bibliography 193(20)
Index 213
Hongjian Liu is currently a Professor in the School of Mathematics and Physics, Anhui Polytechnic University, Wuhu, China. His current research interests include filtering theory, memristive neural networks and network communication systems. He is a very active reviewer for many international journals.

Zidong Wang is currently Professor of Dynamical Systems and Computing at Brunel University London in the United Kingdom. His research interests include dynamical systems, signal processing, bioinformatics, control theory and applications.

Lifeng Ma is currently a Professor with the School of Automation, Nanjing University of Science and Technology, Nanjing, China. His current research interests include nonlinear control and signal processing, variable structure control, distributed control and filtering, time-varying systems, and multi-agent systems.