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Index
Cover image Title page Table of Contents Copyright List of Contributors Dedication About the Editors Preface Acknowledgment Chapter 1: Hierarchical Dynamic Neural Networks for Cascade System Modeling With Application to Wastewater Treatment Abstract 1.1. Introduction 1.2. Cascade Process Modeling Via Hierarchical Dynamic Neural Networks 1.3. Stable Training of the Hierarchical Dynamic Neural Networks 1.4. Modeling of Wastewater Treatment 1.5. Conclusions References Chapter 2: Hyperellipsoidal Neural Network Trained With Extended Kalman Filter for Forecasting of Time Series Abstract 2.1. Introduction 2.2. Mathematical Background 2.3. HNN for Time Series Forecasting 2.4. Results 2.5. Conclusion References Chapter 3: Neural Networks: A Methodology for Modeling and Control Design of Dynamical Systems Abstract 3.1. Introduction 3.2. Neural Modeling and Control for Discrete-Time Systems 3.3. Neural Modeling and Control for Continuous-Time Systems 3.4. Further NN Applications 3.5. Conclusions References Chapter 4: Continuous-Time Decentralized Neural Control of a Quadrotor UAV Abstract 4.1. Introduction 4.2. Fundamentals 4.3. Neural Backstepping Controller Design 4.4. Results 4.5. Conclusion References Chapter 5: Adaptive PID Controller Using a Multilayer Perceptron Trained With the Extended Kalman Filter for an Unmanned Aerial Vehicle Abstract 5.1. Introduction 5.2. Kalman Filter 5.3. MLP Trained With the EKF 5.4. UAV Controlled With an MLP References Chapter 6: Support Vector Regression for Digital Video Processing Abstract 6.1. Introduction 6.2. Support Vector Regression 6.3. SVR Method 6.4. Results 6.5. Conclusions References Chapter 7: Artificial Neural Networks Based on Nonlinear Bioprocess Models for Predicting Wastewater Organic Compounds and Biofuel Production Abstract 7.1. Introduction 7.2. Activated Sludge Process 7.3. Anaerobic Digestion Process 7.4. Conclusion References Chapter 8: Learning-Based Identification of Viral Infection Dynamics Abstract Acknowledgements 8.1. Introduction 8.2. Neural Identification 8.3. Within-Host Influenza Infection 8.4. Within-Host HIV Infection 8.5. Numerical Results 8.6. Conclusions References Chapter 9: Attack Detection and Estimation for Cyber-Physical Systems by Using Learning Methodology Abstract 9.1. Introduction 9.2. Background on System Modeling and Attacks 9.3. Secure Linear Networked Control Systems 9.4. Secure Nonlinear Networked Control Systems 9.5. Results and Discussion 9.6. Conclusions References Chapter 10: Sensitivity Analysis With Artificial Neural Networks for Operation of Photovoltaic Systems Abstract 10.1. Introduction 10.2. Experimental Facility and Database 10.3. Sensitivity Analysis 10.4. Application 10.5. Conclusions References Chapter 11: Pattern Classification and Its Applications to Control of Biomechatronic Systems Abstract 11.1. Introduction 11.2. Biomechatronic System Components 11.3. Biomechatronic System Proposed 11.4. Conclusion References Index
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