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v | |
About The Editors |
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ix | |
Preface |
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xi | |
Acknowledgment |
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xiii | |
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1 Hierarchical Dynamic Neural Networks for Cascade System Modeling With Application to Wastewater Treatment |
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1 | (8) |
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1 | (1) |
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1.2 Cascade Process Modeling Via Hierarchical Dynamic Neural Networks |
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1 | (2) |
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1.3 Stable Training of the Hierarchical Dynamic Neural Networks |
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3 | (3) |
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1.4 Modeling of Wastewater Treatment |
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6 | (2) |
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8 | (1) |
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8 | (1) |
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2 Hyperellipsoidal Neural Network Trained With Extended Kalman Filter for Forecasting of Time Series |
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9 | (12) |
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9 | (1) |
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2.2 Mathematical Background |
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9 | (3) |
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2.2.1 Mahalanobis Distance |
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9 | (1) |
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2.2.2 Extended Kalman Filter |
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10 | (1) |
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10 | (1) |
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2.2.4 Germinal Center Optimization |
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11 | (1) |
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2.3 HNN for Time Series Forecasting |
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12 | (1) |
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13 | (5) |
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2.4.1 Comparison With the ADALINE Algorithm |
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13 | (1) |
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2.4.2 Experiments With Real-Time Series |
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14 | (1) |
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2.4.3 Mackey-Glass Equation |
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14 | (4) |
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18 | (1) |
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18 | (3) |
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3 Neural Networks: A Methodology for Modeling and Control Design of Dynamical Systems |
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21 | (1) |
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21 | (1) |
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3.2 Neural Modeling and Control for Discrete-Time Systems |
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22 | (6) |
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3.2.1 Discrete-Time Uncertain Nonlinear Systems |
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22 | (1) |
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3.2.2 Discrete-Time Recurrent High-Order Neural Network |
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22 | (2) |
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3.2.3 Sliding Mode Block Control Design |
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24 | (2) |
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3.2.4 Application for a Two-Degree of Freedom Robot |
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26 | (2) |
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3.3 Neural Modeling and Control for Continuous-Time Systems |
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28 | (5) |
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3.3.1 Continuous-Time Uncertain Nonlinear Systems |
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28 | (1) |
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3.3.2 Polynomial Neural Identifier |
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29 | (1) |
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3.3.3 Nonlinear Optimal Neural Control Design |
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30 | (2) |
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3.3.4 Application to a Glucose-Insulin System |
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32 | (1) |
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3.4 Further NN Applications |
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33 | (2) |
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3.4.1 Reduced-Order Models |
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33 | (1) |
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34 | (1) |
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35 | (1) |
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35 | (1) |
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35 | (4) |
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4 Continuous-Time Decentralized Neural Control of a Quadrotor UAV |
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39 | (16) |
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39 | (2) |
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41 | (2) |
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4.2.1 Recurrent High-Order Neural Network (RHONN) |
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41 | (1) |
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4.2.2 Approximation Properties of the RHONN |
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42 | (1) |
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4.2.3 Filtered Error Training Algorithm |
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43 | (1) |
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4.3 Neural Backstepping Controller Design |
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43 | (4) |
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47 | (4) |
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51 | (1) |
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52 | (3) |
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5 Adaptive PID Controller Using a Multilayer Perceptron Trained With the Extended Kalman Filter for an Unmanned Aerial Vehicle |
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55 | (10) |
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55 | (1) |
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55 | (2) |
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5.2.7 Extended Kalman Filter |
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56 | (1) |
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5.3 MLP Trained With the EKF |
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57 | (1) |
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5.4 UAV Controlled With an MLP |
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58 | (4) |
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5.4.1 Quadrotor Dynamic Modeling |
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58 | (1) |
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5.4.2 Quadrotor Control Scheme |
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59 | (3) |
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62 | (3) |
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6 Support Vector Regression for Digital Video Processing |
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65 | (14) |
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65 | (3) |
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65 | (1) |
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6.1.2 Frame Interpolation |
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65 | (2) |
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67 | (1) |
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6.2 Support Vector Regression |
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68 | (1) |
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69 | (1) |
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70 | (6) |
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70 | (1) |
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6.4.2 Filtering, Upscaling, and Motion Regression |
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71 | (5) |
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76 | (1) |
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76 | (3) |
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7 Artificial Neural Networks Based on Nonlinear Bioprocess Models for Predicting Wastewater Organic Compounds and Biofuel Production |
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79 | (18) |
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79 | (8) |
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7.2 Activated Sludge Process |
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87 | (1) |
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7.2.1 Activated Sludge Model |
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81 | (2) |
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7.2.2 Discrete-Time RHONO |
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83 | (1) |
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7.2.3 Neural Observer Structure |
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84 | (1) |
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7.2.4 RHONO Performance in the Presence of Disturbances |
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85 | (2) |
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7.3 Anaerobic Digestion Process |
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87 | (7) |
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7.3.1 Two-Stage Anaerobic Digestion Model |
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87 | (1) |
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88 | (1) |
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89 | (1) |
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7.3.4 Input-Output Stability Analysis Via Simulation |
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90 | (1) |
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7.3.5 Stability Analysis in the Presence of Disturbances |
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91 | (3) |
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94 | (1) |
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95 | (2) |
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8 Learning-Based Identification of Viral Infection Dynamics |
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97 | (610) |
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Esteban A. Hernandez-Vargas |
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97 | (1) |
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8.2 Neural Identification |
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98 | (1) |
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8.2.1 Network Training Based on the Extended Kalman Filter |
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98 | (1) |
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8.3 Within-Host Influenza Infection |
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98 | (1) |
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8.4 Within-Host HIV Infection |
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99 | (1) |
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100 | (4) |
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8.5.7 IAV-RHONN Identification |
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100 | (2) |
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8.5.2 HIV-RHONN Identification |
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102 | (2) |
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104 | (1) |
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104 | (1) |
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104 | (3) |
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9 Attack Detection and Estimation for Cyber-Physical Systems by Using Learning Methodology |
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107 | (1) |
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107 | (7) |
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9.2 Background on System Modeling and Attacks |
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108 | (1) |
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108 | (1) |
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109 | (1) |
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9.3 Secure Linear Networked Control Systems |
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109 | (6) |
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9.3.1 Network Attack Detection and Estimation |
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110 | (2) |
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9.3.2 Attack Detection and Estimation in Linear Physical System |
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112 | (3) |
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9.4 Secure Nonlinear Networked Control Systems |
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115 | (5) |
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9.4.1 Nonlinear Network Attack Detection and Estimation |
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115 | (2) |
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9.4.2 Attack Detection and Estimation in Nonlinear Physical Systems |
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117 | (3) |
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9.5 Results and Discussion |
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120 | (5) |
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9.5.1 Simulation Results for Linear NCS |
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120 | (2) |
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9.5.2 Simulation Results for Nonlinear NCS |
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122 | (3) |
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125 | (1) |
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125 | (2) |
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10 Sensitivity Analysis With Artificial Neural Networks for Operation of Photovoltaic Systems |
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127 | (12) |
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127 | (1) |
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10.2 Experimental Facility and Database |
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128 | (1) |
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10.3 Sensitivity Analysis |
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128 | (5) |
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10.3.1 Sensitivity Analysis Classification |
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129 | (2) |
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10.3.2 Elementary Effect Test |
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131 | (1) |
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10.3.3 Elementary Effect Test Visualization |
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132 | (1) |
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133 | (4) |
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10.4.1 Modeling and Sensitivity Analysis Workflow |
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133 | (1) |
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10.4.2 Artificial Neural Network |
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134 | (1) |
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10.4.3 Sensitivity Analysis Results |
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134 | (3) |
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137 | (1) |
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137 | (2) |
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11 Pattern Classification and Its Applications to Control of Biomechatronic Systems |
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139 | (16) |
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139 | (1) |
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11.2 Biomechatronic System Components |
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139 | (4) |
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139 | (1) |
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11.2.2 Surface Electrodes |
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140 | (1) |
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11.2.3 Signal Conditioning |
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140 | (1) |
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140 | (3) |
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11.2.5 Controller Deployment and User Application |
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143 | (1) |
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11.2.6 Neural Network Control |
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143 | (1) |
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11.3 Biomechatronic System Proposed |
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143 | (10) |
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11.3.1 Problem Formulation |
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144 | (1) |
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11.3.2 Experimental Preparation |
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145 | (1) |
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11.3.3 Experimental Set-Up |
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145 | (2) |
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147 | (1) |
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11.3.5 Control of Biomechatronic System |
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148 | (5) |
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153 | (1) |
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153 | (2) |
Index |
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155 | |