Description

Book Synopsis

A comprehensive exploration of the control schemes of human-robot interactions

InHuman-Robot Interaction Control Using Reinforcement Learning,an expert team of authors deliversa concise overview of human-robot interaction control schemes and insightful presentations of novel, model-free and reinforcement learning controllers. The book begins with a brief introduction to state-of-the-art human-robot interaction control and reinforcement learning before moving on to describe the typical environment model. The authors also describe some of the most famous identification techniques for parameter estimation.

Human-Robot Interaction Control Using Reinforcement Learningoffers rigorous mathematical treatments and demonstrations that facilitate the understanding of control schemes and algorithms.It also describes stability and convergence analysis of human-robot interaction control and reinforcement learning based control.

The authorsalsodiscussadvan

Table of Contents

Author Biographies xi

List of Figures xiii

List of Tables xvii

Preface xix

Part I Human-robot Interaction Control 1

1 Introduction 3

1.1 Human-Robot Interaction Control 3

1.2 Reinforcement Learning for Control 6

1.3 Structure of the Book 7

References 10

2 Environment Model of Human-Robot Interaction 17

2.1 Impedance and Admittance 17

2.2 Impedance Model for Human-Robot Interaction 21

2.3 Identification of Human-Robot Interaction Model 24

2.4 Conclusions 30

References 30

3 Model Based Human-Robot Interaction Control 33

3.1 Task Space Impedance/Admittance Control 33

3.2 Joint Space Impedance Control 36

3.3 Accuracy and Robustness 37

3.4 Simulations 39

3.5 Conclusions 42

References 44

4 Model Free Human-Robot Interaction Control 45

4.1 Task-Space Control Using Joint-Space Dynamics 45

4.2 Task-Space Control Using Task-Space Dynamics 52

4.3 Joint Space Control 53

4.4 Simulations 54

4.5 Experiments 55

4.6 Conclusions 68

References 71

5 Human-in-the-loop Control Using Euler Angles 73

5.1 Introduction 73

5.2 Joint-Space Control 74

5.3 Task-Space Control 79

5.4 Experiments 83

5.5 Conclusions 92

References 94

Part II Reinforcement Learning for Robot Interaction Control 97

6 Reinforcement Learning for Robot Position/Force Control 99

6.1 Introduction 99

6.2 Position/Force Control Using an Impedance Model 100

6.3 Reinforcement Learning Based Position/Force Control 103

6.4 Simulations and Experiments 110

6.5 Conclusions 117

References 117

7 Continuous-Time Reinforcement Learning for Force Control 119

7.1 Introduction 119

7.2 K-means Clustering for Reinforcement Learning 120

7.3 Position/Force Control Using Reinforcement Learning 124

7.4 Experiments 130

7.5 Conclusions 136

References 136

8 Robot Control in Worst-Case Uncertainty Using Reinforcement Learning 139

8.1 Introduction 139

8.2 Robust Control Using Discrete-Time Reinforcement Learning 141

8.3 Double Q-Learning with k-Nearest Neighbors 144

8.4 Robust Control Using Continuous-Time Reinforcement Learning 150

8.5 Simulations and Experiments: Discrete-Time Case 154

8.6 Simulations and Experiments: Continuous-Time Case 161

8.7 Conclusions 170

References 170

9 Redundant Robots Control Using Multi-Agent Reinforcement Learning 173

9.1 Introduction 173

9.2 Redundant Robot Control 175

9.3 Multi-Agent Reinforcement Learning for Redundant Robot Control 179

9.4 Simulations and experiments 183

9.5 Conclusions 187

References 189

10 Robot H2 Neural Control Using Reinforcement Learning 193

10.1 Introduction 193

10.2 H2 Neural Control Using Discrete-Time Reinforcement Learning 194

10.3 H2 Neural Control in Continuous Time 207

10.4 Examples 219

10.5 Conclusion 229

References 229

11 Conclusions 233

A Robot Kinematics and Dynamics 235

A.1 Kinematics 235

A.2 Dynamics 237

A.3 Examples 240

References 246

B Reinforcement Learning for Control 247

B.1 Markov decision processes 247

B.2 Value functions 248

B.3 Iterations 250

B.4 TD learning 251

Reference 258

Index 259

HumanRobot Interaction Control Using

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    A Hardback by Wen Yu, Adolfo Perrusquia

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      Publisher: John Wiley & Sons Inc
      Publication Date: 05/11/2021
      ISBN13: 9781119782742, 978-1119782742
      ISBN10: 1119782740
      Also in:
      Robotics

      Description

      Book Synopsis

      A comprehensive exploration of the control schemes of human-robot interactions

      InHuman-Robot Interaction Control Using Reinforcement Learning,an expert team of authors deliversa concise overview of human-robot interaction control schemes and insightful presentations of novel, model-free and reinforcement learning controllers. The book begins with a brief introduction to state-of-the-art human-robot interaction control and reinforcement learning before moving on to describe the typical environment model. The authors also describe some of the most famous identification techniques for parameter estimation.

      Human-Robot Interaction Control Using Reinforcement Learningoffers rigorous mathematical treatments and demonstrations that facilitate the understanding of control schemes and algorithms.It also describes stability and convergence analysis of human-robot interaction control and reinforcement learning based control.

      The authorsalsodiscussadvan

      Table of Contents

      Author Biographies xi

      List of Figures xiii

      List of Tables xvii

      Preface xix

      Part I Human-robot Interaction Control 1

      1 Introduction 3

      1.1 Human-Robot Interaction Control 3

      1.2 Reinforcement Learning for Control 6

      1.3 Structure of the Book 7

      References 10

      2 Environment Model of Human-Robot Interaction 17

      2.1 Impedance and Admittance 17

      2.2 Impedance Model for Human-Robot Interaction 21

      2.3 Identification of Human-Robot Interaction Model 24

      2.4 Conclusions 30

      References 30

      3 Model Based Human-Robot Interaction Control 33

      3.1 Task Space Impedance/Admittance Control 33

      3.2 Joint Space Impedance Control 36

      3.3 Accuracy and Robustness 37

      3.4 Simulations 39

      3.5 Conclusions 42

      References 44

      4 Model Free Human-Robot Interaction Control 45

      4.1 Task-Space Control Using Joint-Space Dynamics 45

      4.2 Task-Space Control Using Task-Space Dynamics 52

      4.3 Joint Space Control 53

      4.4 Simulations 54

      4.5 Experiments 55

      4.6 Conclusions 68

      References 71

      5 Human-in-the-loop Control Using Euler Angles 73

      5.1 Introduction 73

      5.2 Joint-Space Control 74

      5.3 Task-Space Control 79

      5.4 Experiments 83

      5.5 Conclusions 92

      References 94

      Part II Reinforcement Learning for Robot Interaction Control 97

      6 Reinforcement Learning for Robot Position/Force Control 99

      6.1 Introduction 99

      6.2 Position/Force Control Using an Impedance Model 100

      6.3 Reinforcement Learning Based Position/Force Control 103

      6.4 Simulations and Experiments 110

      6.5 Conclusions 117

      References 117

      7 Continuous-Time Reinforcement Learning for Force Control 119

      7.1 Introduction 119

      7.2 K-means Clustering for Reinforcement Learning 120

      7.3 Position/Force Control Using Reinforcement Learning 124

      7.4 Experiments 130

      7.5 Conclusions 136

      References 136

      8 Robot Control in Worst-Case Uncertainty Using Reinforcement Learning 139

      8.1 Introduction 139

      8.2 Robust Control Using Discrete-Time Reinforcement Learning 141

      8.3 Double Q-Learning with k-Nearest Neighbors 144

      8.4 Robust Control Using Continuous-Time Reinforcement Learning 150

      8.5 Simulations and Experiments: Discrete-Time Case 154

      8.6 Simulations and Experiments: Continuous-Time Case 161

      8.7 Conclusions 170

      References 170

      9 Redundant Robots Control Using Multi-Agent Reinforcement Learning 173

      9.1 Introduction 173

      9.2 Redundant Robot Control 175

      9.3 Multi-Agent Reinforcement Learning for Redundant Robot Control 179

      9.4 Simulations and experiments 183

      9.5 Conclusions 187

      References 189

      10 Robot H2 Neural Control Using Reinforcement Learning 193

      10.1 Introduction 193

      10.2 H2 Neural Control Using Discrete-Time Reinforcement Learning 194

      10.3 H2 Neural Control in Continuous Time 207

      10.4 Examples 219

      10.5 Conclusion 229

      References 229

      11 Conclusions 233

      A Robot Kinematics and Dynamics 235

      A.1 Kinematics 235

      A.2 Dynamics 237

      A.3 Examples 240

      References 246

      B Reinforcement Learning for Control 247

      B.1 Markov decision processes 247

      B.2 Value functions 248

      B.3 Iterations 250

      B.4 TD learning 251

      Reference 258

      Index 259

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