ISBN-13: 9781119189046 / Angielski / Twarda / 2017 / 272 str.
ISBN-13: 9781119189046 / Angielski / Twarda / 2017 / 272 str.
A timely guide using iterative learning control (ILC) as a solution for multi-agent systems (MAS) challenges, showcasing recent advances and industrially relevant applications
Preface ix
1 Introduction 1
1.1 Introduction to Iterative Learning Control 1
1.1.1 Contraction–Mapping Approach 3
1.1.2 Composite Energy Function Approach 4
1.2 Introduction to MAS Coordination 5
1.3 Motivation and Overview 7
1.4 Common Notations in This Book 9
2 Optimal Iterative Learning Control for Multi–agent Consensus Tracking 11
2.1 Introduction 11
2.2 Preliminaries and Problem Description 12
2.2.1 Preliminaries 12
2.2.2 Problem Description 13
2.3 Main Results 15
2.3.1 Controller Design for Homogeneous Agents 15
2.3.2 Controller Design for Heterogeneous Agents 20
2.4 Optimal Learning Gain Design 21
2.5 Illustrative Example 23
2.6 Conclusion 26
3 Iterative Learning Control for Multi–agent Coordination Under Iteration–Varying Graph 27
3.1 Introduction 27
3.2 Problem Description 28
3.3 Main Results 29
3.3.1 Fixed Strongly Connected Graph 29
3.3.2 Iteration–Varying Strongly Connected Graph 32
3.3.3 Uniformly Strongly Connected Graph 37
3.4 Illustrative Example 38
3.5 Conclusion 40
4 Iterative Learning Control for Multi–agent Coordination with Initial State Error 41
4.1 Introduction 41
4.2 Problem Description 42
4.3 Main Results 43
4.3.1 Distributed D–type Updating Rule 43
4.3.2 Distributed PD–type Updating Rule 48
4.4 Illustrative Examples 49
4.5 Conclusion 50
5 Multi–agent Consensus Tracking with Input Sharing by Iterative Learning Control 53
5.1 Introduction 53
5.2 Problem Formulation 54
5.3 Controller Design and Convergence Analysis 54
5.3.1 Controller Design Without Leader s Input Sharing 55
5.3.2 Optimal Design Without Leader s Input Sharing 58
5.3.3 Controller Design with Leader s Input Sharing 59
5.4 Extension to Iteration–Varying Graph 60
5.4.1 Iteration–Varying Graph with Spanning Trees 60
5.4.2 Iteration–Varying Strongly Connected Graph 60
5.4.3 Uniformly Strongly Connected Graph 62
5.5 Illustrative Examples 63
5.5.1 Example 1: Iteration–Invariant Communication Graph 63
5.5.2 Example 2: Iteration–Varying Communication Graph 64
5.5.3 Example 3: Uniformly Strongly Connected Graph 66
5.6 Conclusion 68
6 A HOIM–Based Iterative Learning Control Scheme for Multi–agent Formation 69
6.1 Introduction 69
6.2 Kinematic Model Formulation 70
6.3 HOIM–Based ILC for Multi–agent Formation 71
6.3.1 Control Law for Agent 1 72
6.3.2 Control Law for Agent 2 74
6.3.3 Control Law for Agent 3 75
6.3.4 Switching Between Two Structures 78
6.4 Illustrative Example 78
6.5 Conclusion 80
7 P–type Iterative Learning for Non–parameterized Systems with Uncertain Local Lipschitz Terms 81
7.1 Introduction 81
7.2 Motivation and Problem Description 82
7.2.1 Motivation 82
7.2.2 Problem Description 83
7.3 Convergence Properties with Lyapunov Stability Conditions 84
7.3.1 Preliminary Results 84
7.3.2 Lyapunov Stable Systems 86
7.3.3 Systems with Stable Local Lipschitz Terms but Unstable Global Lipschitz Factors 90
7.4 Convergence Properties in the Presence of Bounding Conditions 92
7.4.1 Systems with Bounded Drift Term 92
7.4.2 Systems with Bounded Control Input 94
7.5 Application of P–type Rule in MAS with Local Lipschitz Uncertainties 97
7.6 Conclusion 99
8 Synchronization for Nonlinear Multi–agent Systems by Adaptive Iterative Learning Control 101
8.1 Introduction 101
8.2 Preliminaries and Problem Description 102
8.2.1 Preliminaries 102
8.2.2 Problem Description for First–Order Systems 102
8.3 Controller Design for First–Order Multi–agent Systems 105
8.3.1 Main Results 105
8.3.2 Extension to Alignment Condition 107
8.4 Extension to High–Order Systems 108
8.5 Illustrative Example 113
8.5.1 First–Order Agents 114
8.5.2 High–Order Agents 115
8.6 Conclusion 118
9 Distributed Adaptive Iterative Learning Control for Nonlinear Multi–agent Systems with State Constraints 123
9.1 Introduction 123
9.2 Problem Formulation 124
9.3 Main Results 127
9.3.1 Original Algorithms 127
9.3.2 Projection Based Algorithms 135
9.3.3 Smooth Function Based Algorithms 138
9.3.4 Alternative Smooth Function Based Algorithms 141
9.3.5 Practical Dead–Zone Based Algorithms 156
9.4 Illustrative Example 163
9.5 Conclusion 171
10 Synchronization for Networked Lagrangian Systems under Directed Graphs 173
10.1 Introduction 173
10.2 Problem Description 174
10.3 Controller Design and Performance Analysis 175
10.4 Extension to Alignment Condition 181
10.5 Illustrative Example 182
10.6 Conclusion 186
11 Generalized Iterative Learning for Economic Dispatch Problem in a Smart Grid 187
11.1 Introduction 187
11.2 Preliminaries 188
11.2.1 In–Neighbor and Out–Neighbor 188
11.2.2 Discrete–Time Consensus Algorithm 189
11.2.3 Analytic Solution to EDP with Loss Calculation 190
11.3 Main Results 191
11.3.1 Upper Level: Estimating the Power Loss 192
11.3.2 Lower Level: Solving Economic Dispatch Distributively 192
11.3.3 Generalization to the Constrained Case 195
11.4 Learning Gain Design 196
11.5 Application Examples 198
11.5.1 Case Study 1: Convergence Test 199
11.5.2 Case Study 2: Robustness of Command Node Connections 200
11.5.3 Case Study 3: Plug and Play Test 201
11.5.4 Case Study 4: Time–Varying Demand 203
11.5.5 Case Study 5: Application in Large Networks 205
11.5.6 Case Study 6: Relation Between Convergence Speed and Learning Gain 205
11.6 Conclusion 206
12 Summary and Future Research Directions 207
12.1 Summary 207
12.2 Future Research Directions 208
12.2.1 Open Issues in MAS Control 208
12.2.2 Applications 212
Appendix A Graph Theory Revisit 221
Appendix B Detailed Proofs 223
B.1 HOIM Constraints Derivation 223
B.2 Proof of Proposition 2.1 224
B.3 Proof of Lemma 2.1 225
B.4 Proof of Theorem 8.1 227
B.5 Proof of Corollary 8.1 228
Bibliography 231
Index 000
Shiping Yang, Jian–Xin Xu, and Xuefang Li
National University of Singapore
Dong Shen
Beijing University of Chemical Technology, P.R. China
A timely guide using iterative learning control (ILC) as a solution for multi–agent systems (MAS) challenges, this book showcases recent advances and industrially relevant applications. Readers are first given a comprehensive overview of the intersection between ILC and MAS, then introduced to a range of topics that include both basic and advanced theoretical discussions, rigorous mathematics, engineering practice, and both linear and nonlinear systems. Through systematic discussion of network theory and intelligent control, the authors explore future research possibilities, develop new tools, and provide numerous applications such as power grids, communication and sensor networks, intelligent transportation systems, and formation control. Readers will gain a roadmap of the latest advances in the fields and can use their newfound knowledge to design their own algorithms.
Written by experienced researchers, Iterative Learning Control for Multi–agent Systems Coordination will appeal to researchers and graduate students of multi–agent systems. Industrial practitioners whose work involves system engineering, system control, system biology, and computing science will also find it useful.
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