Description

Book Synopsis

DISTRIBUTED MODEL PREDICTIVE CONTROL FOR PLANT-WIDE SYSTEMS

In this book, experienced researchers gave a thorough explanation of distributed model predictive control (DMPC): its basic concepts, technologies, and implementation in plant-wide systems. Known for its error tolerance, high flexibility, and good dynamic performance, DMPC is a popular topic in the control field and is widely applied in many industries.

To efficiently design DMPC systems, readers will be introduced to several categories of coordinated DMPCs, which are suitable for different control requirements, such as network connectivity, error tolerance, performance of entire closed-loop systems, and calculation of speed. Various real-life industrial applications, theoretical results, and algorithms are provided to illustrate key concepts and methods, as well as to provide solutions to optimize the global performance of plant-wide systems.

  • Features system partition methods, coordination

    Table of Contents
    Preface xi

    About the Authors xv

    Acknowledgement xvii

    List of Figures xix

    List of Tables xxiii

    1 Introduction 1

    1.1 Plant-Wide System 1

    1.2 Control System Structure of the Plant-Wide System 3

    1.2.1 Centralized Control 4

    1.2.2 Decentralized Control and Hierarchical Coordinated Decentralized Control 5

    1.2.3 Distributed Control 6

    1.3 Predictive Control 8

    1.3.1 What is Predictive Control 8

    1.3.2 Advantage of Predictive Control 9

    1.4 Distributed Predictive Control 9

    1.4.1 Why Distributed Predictive Control 9

    1.4.2 What is Distributed Predictive Control 10

    1.4.3 Advantage of Distributed Predictive Control 10

    1.4.4 Classification of DMPC 11

    1.5 About this Book 13

    Part I FOUNDATION

    2 Model Predictive Control 19

    2.1 Introduction 19

    2.2 Dynamic Matrix Control 20

    2.2.1 Step Response Model 20

    2.2.2 Prediction 21

    2.2.3 Optimization 22

    2.2.4 Feedback Correction 23

    2.2.5 DMC with Constraint 24

    2.3 Predictive Control with the State Space Model 26

    2.3.1 System Model 27

    2.3.2 Performance Index 28

    2.3.3 Prediction 28

    2.3.4 Closed-Loop Solution 30

    2.3.5 State Space MPC with Constraint 31

    2.4 Dual Mode Predictive Control 33

    2.4.1 Invariant Region 33

    2.4.2 MPC Formulation 34

    2.4.3 Algorithms 35

    2.4.4 Feasibility and Stability 36

    2.5 Conclusion 37

    3 Control Structure of Distributed MPC 39

    3.1 Introduction 39

    3.2 Centralized MPC 40

    3.3 Single-Layer Distributed MPC 41

    3.4 Hierarchical Distributed MPC 42

    3.5 Example of the Hierarchical DMPC Structure 43

    3.6 Conclusion 45

    4 Structure Model and System Decomposition 47

    4.1 Introduction 47

    4.2 System Mathematic Model 48

    4.3 Structure Model and Structure Controllability 50

    4.3.1 Structure Model 50

    4.3.2 Function of the Structure Model in System Decomposition 51

    4.3.3 Input–Output Accessibility 53

    4.3.4 General Rank of the Structure Matrix 56

    4.3.5 Structure Controllability 56

    4.4 Related Gain Array Decomposition 58

    4.4.1 RGA Definition 59

    4.4.2 RGA Interpretation 60

    4.4.3 Pairing Rules 61

    4.5 Conclusion 63

    Part II UNCONSTRAINED DISTRIBUTED PREDICTIVE CONTROL

    5 Local Cost Optimization-based Distributed Model Predictive Control 67

    5.1 Introduction 67

    5.2 Local Cost Optimization-based Distributed Predictive Control 68

    5.2.1 Problem Description 68

    5.2.2 DMPC Formulation 69

    5.2.3 Closed-loop Solution 72

    5.2.4 Stability Analysis 79

    5.2.5 Simulation Results 79

    5.3 Distributed MPC Strategy Based on Nash Optimality 82

    5.3.1 Formulation 83

    5.3.2 Algorithm 86

    5.3.3 Computational Convergence for Linear Systems 86

    5.3.4 Nominal Stability of Distributed Model Predictive Control System 88

    5.3.5 Performance Analysis with Single-step Horizon Control Under Communication Failure 89

    5.3.6 Simulation Results 94

    5.4 Conclusion 99

    Appendix 99

    Appendix A. QP problem transformation 99

    Appendix B. Proof of Theorem 5.1 100

    6 Cooperative Distributed Predictive Control 103

    6.1 Introduction 103

    6.2 Noniterative Cooperative DMPC 104

    6.2.1 System Description 104

    6.2.2 Formulation 104

    6.2.3 Closed-Form Solution 107

    6.2.4 Stability and Performance Analysis 109

    6.2.5 Example 113

    6.3 Distributed Predictive Control based on Pareto Optimality 114

    6.3.1 Formulation 118

    6.3.2 Algorithm 119

    6.3.3 The DMPC Algorithm Based on Plant-Wide Optimality 119

    6.3.4 The Convergence Analysis of the Algorithm 121

    6.4 Simulation 121

    6.5 Conclusions 123

    7 Networked Distributed Predictive Control with Information Structure Constraints 125

    7.1 Introduction 125

    7.2 Noniterative Networked DMPC 126

    7.2.1 Problem Description 126

    7.2.2 DMPC Formulation 127

    7.2.3 Closed-Form Solution 132

    7.2.4 Stability Analysis 135

    7.2.5 Analysis of Performance 135

    7.2.6 Numerical Validation 137

    7.3 Networked DMPC with Iterative Algorithm 144

    7.3.1 Problem Description 144

    7.3.2 DMPC Formulation 145

    7.3.3 Networked MPC Algorithm 147

    7.3.4 Convergence and Optimality Analysis for Networked 150

    7.3.5 Nominal Stability Analysis for Distributed Control Systems 152

    7.3.6 Simulation Study 153

    7.4 Conclusion 159

    Appendix 159

    Appendix A. Proof of Lemma 7.1 159

    Appendix B. Proof of Lemma 7.2 160

    Appendix C. Proof of Lemma 7.3 160

    Appendix D. Proof of Theorem 7.1 161

    Appendix E. Proof of Theorem 7.2 161

    Appendix F. Derivation of the QP problem (7.52) 164

    Part III CONSTRAINT DISTRIBUTED PREDICTIVE CONTROL

    8 Local Cost Optimization Based Distributed Predictive Control with Constraints 169

    8.1 Introduction 169

    8.2 Problem Description 170

    8.3 Stabilizing Dual Mode Noncooperative DMPC with Input Constraints 171

    8.3.1 Formulation 171

    8.3.2 Algorithm Design for Resolving Each Subsystem-based Predictive Control 176

    8.4 Analysis 177

    8.4.1 Recursive Feasibility of Each Subsystem-based Predictive Control 177

    8.4.2 Stability Analysis of Entire Closed-loop System 183

    8.5 Example 184

    8.5.1 The System 184

    8.5.2 Performance Comparison with the Centralized MPC 185

    8.6 Conclusion 187

    9 Cooperative Distributed Predictive Control with Constraints 189

    9.1 Introduction 189

    9.2 System Description 190

    9.3 Stabilizing Cooperative DMPC with Input Constraints 191

    9.3.1 Formulation 191

    9.3.2 Constraint C-DMPC Algorithm 193

    9.4 Analysis 194

    9.4.1 Feasibility 194

    9.4.2 Stability 199

    9.5 Simulation 201

    9.6 Conclusion 208

    10 Networked Distributed Predictive Control with Inputs and Information Structure Constraints 209

    10.1 Introduction 209

    10.2 Problem Description 210

    10.3 Constrained N-DMPC 212

    10.3.1 Formulation 212

    10.3.2 Algorithm Design for Resolving Each Subsystem-based Predictive Control 218

    10.4 Analysis 219

    10.4.1 Feasibility 219

    10.4.2 Stability 225

    10.5 Formulations Under Other Coordination Strategies 227

    10.5.1 Local Cost Optimization Based DMPC 227

    10.5.2 Cooperative DMPC 228

    10.6 Simulation Results 229

    10.6.1 The System 229

    10.6.2 Performance of Closed-loop System under the N-DMPC 230

    10.6.3 Performance Comparison with the Centralized MPC and the Local Cost Optimization based MPC 231

    10.7 Conclusions 236

    Part IV APPLICATION

    11 Hot-Rolled Strip Laminar Cooling Process with Distributed Predictive Control 239

    11.1 Introduction 239

    11.2 Laminar Cooling of Hot-rolled Strip 240

    11.2.1 Description 240

    11.2.2 Thermodynamic Model 241

    11.2.3 Problem Statement 242

    11.3 Control Strategy of HSLC 244

    11.3.1 State Space Model of Subsystems 244

    11.3.2 Design of Extended Kalman Filter 247

    11.3.3 Predictor 247

    11.3.4 Local MPC Formulation 248

    11.3.5 Iterative Algorithm 249

    11.4 Numerical Experiment 251

    11.4.1 Validation of Designed Model 251

    11.4.2 Convergence of EKF 252

    11.4.3 Performance of DMPC Comparing with Centralized MPC 252

    11.4.4 Advantages of the Proposed DMPC Framework Comparing with the Existing Method 253

    11.5 Experimental Results 256

    11.6 Conclusion 258

    12 High-Speed Train Control with Distributed Predictive Control 263

    12.1 Introduction 263

    12.2 System Description 264

    12.3 N-DMPC for High-Speed Trains 264

    12.3.1 Three Types of Force 264

    12.3.2 The Force Analysis of EMUs 266

    12.3.3 Model of CRH2 267

    12.3.4 Performance Index 271

    12.3.5 Optimization Problem 272

    12.4 Simulation Results 272

    12.4.1 Parameters of CRH2 273

    12.4.2 Simulation Matrix 273

    12.4.3 Results and Some Comments 274

    12.5 Conclusion 278

    13 Operation Optimization of Multitype Cooling Source System Based on DMPC 279

    13.1 Introduction 279

    13.2 Structure of Joint Cooling System 279

    13.3 Control Strategy of Joint Cooling System 280

    13.3.1 Economic Optimization Strategy 281

    13.3.2 Design of Distributed Model Predictive Control in Multitype Cold Source System 283

    13.4 Results and Analysis of Simulation 286

    13.5 Conclusion 292

    References 293

    Index 299

Distributed Model Predictive Control for

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      Publisher: John Wiley & Sons Inc
      Publication Date: 22/09/2015
      ISBN13: 9781118921562, 978-1118921562
      ISBN10: 1118921569

      Description

      Book Synopsis

      DISTRIBUTED MODEL PREDICTIVE CONTROL FOR PLANT-WIDE SYSTEMS

      In this book, experienced researchers gave a thorough explanation of distributed model predictive control (DMPC): its basic concepts, technologies, and implementation in plant-wide systems. Known for its error tolerance, high flexibility, and good dynamic performance, DMPC is a popular topic in the control field and is widely applied in many industries.

      To efficiently design DMPC systems, readers will be introduced to several categories of coordinated DMPCs, which are suitable for different control requirements, such as network connectivity, error tolerance, performance of entire closed-loop systems, and calculation of speed. Various real-life industrial applications, theoretical results, and algorithms are provided to illustrate key concepts and methods, as well as to provide solutions to optimize the global performance of plant-wide systems.

      • Features system partition methods, coordination

        Table of Contents
        Preface xi

        About the Authors xv

        Acknowledgement xvii

        List of Figures xix

        List of Tables xxiii

        1 Introduction 1

        1.1 Plant-Wide System 1

        1.2 Control System Structure of the Plant-Wide System 3

        1.2.1 Centralized Control 4

        1.2.2 Decentralized Control and Hierarchical Coordinated Decentralized Control 5

        1.2.3 Distributed Control 6

        1.3 Predictive Control 8

        1.3.1 What is Predictive Control 8

        1.3.2 Advantage of Predictive Control 9

        1.4 Distributed Predictive Control 9

        1.4.1 Why Distributed Predictive Control 9

        1.4.2 What is Distributed Predictive Control 10

        1.4.3 Advantage of Distributed Predictive Control 10

        1.4.4 Classification of DMPC 11

        1.5 About this Book 13

        Part I FOUNDATION

        2 Model Predictive Control 19

        2.1 Introduction 19

        2.2 Dynamic Matrix Control 20

        2.2.1 Step Response Model 20

        2.2.2 Prediction 21

        2.2.3 Optimization 22

        2.2.4 Feedback Correction 23

        2.2.5 DMC with Constraint 24

        2.3 Predictive Control with the State Space Model 26

        2.3.1 System Model 27

        2.3.2 Performance Index 28

        2.3.3 Prediction 28

        2.3.4 Closed-Loop Solution 30

        2.3.5 State Space MPC with Constraint 31

        2.4 Dual Mode Predictive Control 33

        2.4.1 Invariant Region 33

        2.4.2 MPC Formulation 34

        2.4.3 Algorithms 35

        2.4.4 Feasibility and Stability 36

        2.5 Conclusion 37

        3 Control Structure of Distributed MPC 39

        3.1 Introduction 39

        3.2 Centralized MPC 40

        3.3 Single-Layer Distributed MPC 41

        3.4 Hierarchical Distributed MPC 42

        3.5 Example of the Hierarchical DMPC Structure 43

        3.6 Conclusion 45

        4 Structure Model and System Decomposition 47

        4.1 Introduction 47

        4.2 System Mathematic Model 48

        4.3 Structure Model and Structure Controllability 50

        4.3.1 Structure Model 50

        4.3.2 Function of the Structure Model in System Decomposition 51

        4.3.3 Input–Output Accessibility 53

        4.3.4 General Rank of the Structure Matrix 56

        4.3.5 Structure Controllability 56

        4.4 Related Gain Array Decomposition 58

        4.4.1 RGA Definition 59

        4.4.2 RGA Interpretation 60

        4.4.3 Pairing Rules 61

        4.5 Conclusion 63

        Part II UNCONSTRAINED DISTRIBUTED PREDICTIVE CONTROL

        5 Local Cost Optimization-based Distributed Model Predictive Control 67

        5.1 Introduction 67

        5.2 Local Cost Optimization-based Distributed Predictive Control 68

        5.2.1 Problem Description 68

        5.2.2 DMPC Formulation 69

        5.2.3 Closed-loop Solution 72

        5.2.4 Stability Analysis 79

        5.2.5 Simulation Results 79

        5.3 Distributed MPC Strategy Based on Nash Optimality 82

        5.3.1 Formulation 83

        5.3.2 Algorithm 86

        5.3.3 Computational Convergence for Linear Systems 86

        5.3.4 Nominal Stability of Distributed Model Predictive Control System 88

        5.3.5 Performance Analysis with Single-step Horizon Control Under Communication Failure 89

        5.3.6 Simulation Results 94

        5.4 Conclusion 99

        Appendix 99

        Appendix A. QP problem transformation 99

        Appendix B. Proof of Theorem 5.1 100

        6 Cooperative Distributed Predictive Control 103

        6.1 Introduction 103

        6.2 Noniterative Cooperative DMPC 104

        6.2.1 System Description 104

        6.2.2 Formulation 104

        6.2.3 Closed-Form Solution 107

        6.2.4 Stability and Performance Analysis 109

        6.2.5 Example 113

        6.3 Distributed Predictive Control based on Pareto Optimality 114

        6.3.1 Formulation 118

        6.3.2 Algorithm 119

        6.3.3 The DMPC Algorithm Based on Plant-Wide Optimality 119

        6.3.4 The Convergence Analysis of the Algorithm 121

        6.4 Simulation 121

        6.5 Conclusions 123

        7 Networked Distributed Predictive Control with Information Structure Constraints 125

        7.1 Introduction 125

        7.2 Noniterative Networked DMPC 126

        7.2.1 Problem Description 126

        7.2.2 DMPC Formulation 127

        7.2.3 Closed-Form Solution 132

        7.2.4 Stability Analysis 135

        7.2.5 Analysis of Performance 135

        7.2.6 Numerical Validation 137

        7.3 Networked DMPC with Iterative Algorithm 144

        7.3.1 Problem Description 144

        7.3.2 DMPC Formulation 145

        7.3.3 Networked MPC Algorithm 147

        7.3.4 Convergence and Optimality Analysis for Networked 150

        7.3.5 Nominal Stability Analysis for Distributed Control Systems 152

        7.3.6 Simulation Study 153

        7.4 Conclusion 159

        Appendix 159

        Appendix A. Proof of Lemma 7.1 159

        Appendix B. Proof of Lemma 7.2 160

        Appendix C. Proof of Lemma 7.3 160

        Appendix D. Proof of Theorem 7.1 161

        Appendix E. Proof of Theorem 7.2 161

        Appendix F. Derivation of the QP problem (7.52) 164

        Part III CONSTRAINT DISTRIBUTED PREDICTIVE CONTROL

        8 Local Cost Optimization Based Distributed Predictive Control with Constraints 169

        8.1 Introduction 169

        8.2 Problem Description 170

        8.3 Stabilizing Dual Mode Noncooperative DMPC with Input Constraints 171

        8.3.1 Formulation 171

        8.3.2 Algorithm Design for Resolving Each Subsystem-based Predictive Control 176

        8.4 Analysis 177

        8.4.1 Recursive Feasibility of Each Subsystem-based Predictive Control 177

        8.4.2 Stability Analysis of Entire Closed-loop System 183

        8.5 Example 184

        8.5.1 The System 184

        8.5.2 Performance Comparison with the Centralized MPC 185

        8.6 Conclusion 187

        9 Cooperative Distributed Predictive Control with Constraints 189

        9.1 Introduction 189

        9.2 System Description 190

        9.3 Stabilizing Cooperative DMPC with Input Constraints 191

        9.3.1 Formulation 191

        9.3.2 Constraint C-DMPC Algorithm 193

        9.4 Analysis 194

        9.4.1 Feasibility 194

        9.4.2 Stability 199

        9.5 Simulation 201

        9.6 Conclusion 208

        10 Networked Distributed Predictive Control with Inputs and Information Structure Constraints 209

        10.1 Introduction 209

        10.2 Problem Description 210

        10.3 Constrained N-DMPC 212

        10.3.1 Formulation 212

        10.3.2 Algorithm Design for Resolving Each Subsystem-based Predictive Control 218

        10.4 Analysis 219

        10.4.1 Feasibility 219

        10.4.2 Stability 225

        10.5 Formulations Under Other Coordination Strategies 227

        10.5.1 Local Cost Optimization Based DMPC 227

        10.5.2 Cooperative DMPC 228

        10.6 Simulation Results 229

        10.6.1 The System 229

        10.6.2 Performance of Closed-loop System under the N-DMPC 230

        10.6.3 Performance Comparison with the Centralized MPC and the Local Cost Optimization based MPC 231

        10.7 Conclusions 236

        Part IV APPLICATION

        11 Hot-Rolled Strip Laminar Cooling Process with Distributed Predictive Control 239

        11.1 Introduction 239

        11.2 Laminar Cooling of Hot-rolled Strip 240

        11.2.1 Description 240

        11.2.2 Thermodynamic Model 241

        11.2.3 Problem Statement 242

        11.3 Control Strategy of HSLC 244

        11.3.1 State Space Model of Subsystems 244

        11.3.2 Design of Extended Kalman Filter 247

        11.3.3 Predictor 247

        11.3.4 Local MPC Formulation 248

        11.3.5 Iterative Algorithm 249

        11.4 Numerical Experiment 251

        11.4.1 Validation of Designed Model 251

        11.4.2 Convergence of EKF 252

        11.4.3 Performance of DMPC Comparing with Centralized MPC 252

        11.4.4 Advantages of the Proposed DMPC Framework Comparing with the Existing Method 253

        11.5 Experimental Results 256

        11.6 Conclusion 258

        12 High-Speed Train Control with Distributed Predictive Control 263

        12.1 Introduction 263

        12.2 System Description 264

        12.3 N-DMPC for High-Speed Trains 264

        12.3.1 Three Types of Force 264

        12.3.2 The Force Analysis of EMUs 266

        12.3.3 Model of CRH2 267

        12.3.4 Performance Index 271

        12.3.5 Optimization Problem 272

        12.4 Simulation Results 272

        12.4.1 Parameters of CRH2 273

        12.4.2 Simulation Matrix 273

        12.4.3 Results and Some Comments 274

        12.5 Conclusion 278

        13 Operation Optimization of Multitype Cooling Source System Based on DMPC 279

        13.1 Introduction 279

        13.2 Structure of Joint Cooling System 279

        13.3 Control Strategy of Joint Cooling System 280

        13.3.1 Economic Optimization Strategy 281

        13.3.2 Design of Distributed Model Predictive Control in Multitype Cold Source System 283

        13.4 Results and Analysis of Simulation 286

        13.5 Conclusion 292

        References 293

        Index 299

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