Description

Book Synopsis

Identifying, assessing, and mitigating electric power grid vulnerabilities is a growing focus in short-term operational planning of power systems. Through illustrated application, this important guide surveys state-of-the-art methodologies for the assessment and enhancement of power system security in short term operational planning and real-time operation. The methodologies employ advanced methods from probabilistic theory, data mining, artificial intelligence, and optimization, to provide knowledge-based support for monitoring, control (preventive and corrective), and decision making tasks.

Key features:

  • Introduces behavioural recognition in wide-area monitoring and security constrained optimal power flow for intelligent control and protection and optimal grid management.
  • Provides in-depth understanding of risk-based reliability and security assessment, dynamic vulnerability assessment methods, supported by the underpinning mathematics.
  • Develo

    Table of Contents

    List of Contributors xv

    Foreword xix

    Preface xxi

    1 Introduction: The Role of Wide Area Monitoring Systems in Dynamic Vulnerability Assessment 1

    Jaime C. Cepeda and José Luis Rueda-Torres

    1.1 Introduction 1

    1.2 Power System Vulnerability 2

    1.2.1 Vulnerability Assessment 2

    1.2.2 Timescale of Power System Actions and Operations 4

    1.3 Power System Vulnerability Symptoms 5

    1.3.1 Rotor Angle Stability 6

    1.3.2 Short-Term Voltage Stability 7

    1.3.3 Short-Term Frequency Stability 7

    1.3.4 Post-Contingency Overloads 7

    1.4 Synchronized Phasor Measurement Technology 8

    1.4.1 Phasor Representation of Sinusoids 8

    1.4.2 Synchronized Phasors 9

    1.4.3 Phasor Measurement Units (PMUs) 9

    1.4.4 Discrete Fourier Transform and Phasor Calculation 10

    1.4.5 Wide Area Monitoring Systems 10

    1.4.6 WAMPAC Communication Time Delay 12

    1.5 The Fundamental Role of WAMS in Dynamic Vulnerability Assessment 13

    1.6 Concluding Remarks 16

    2 Steady-state Security 21

    Evelyn Heylen, Steven De Boeck, Marten Ovaere, Hakan Ergun, and Dirk Van Hertem

    2.1 Power System Reliability Management: A Combination of Reliability Assessment and Reliability Control 22

    2.1.1 Reliability Assessment 23

    2.1.2 Reliability Control 24

    2.2 Reliability Under Various Timeframes 31

    2.3 Reliability Criteria 33

    2.4 Reliability and Its Cost as a Function of Uncertainty 34

    2.4.1 Reliability Costs 34

    2.4.2 Interruption Costs 35

    2.4.3 Minimizing the Sum of Reliability and Interruption Costs 36

    3 Probabilistic Indicators for the Assessment of Reliability and Security of Future Power Systems 41

    Bart W. Tuinema, Nikoleta Kandalepa, and José Luis Rueda-Torres

    3.1 Introduction 41

    3.2 Time Horizons in the Planning and Operation of Power Systems 42

    3.2.1 Time Horizons 42

    3.2.2 Overlapping and Interaction 42

    3.2.3 Remedial Actions 42

    3.3 Reliability Indicators 45

    3.3.1 Security-of-Supply Related Indicators 45

    3.3.2 Additional Indicators 47

    3.4 Reliability Analysis 49

    3.4.1 Input Information 49

    3.4.2 Pre-calculations 50

    3.4.3 Reliability Analysis 50

    3.4.4 Output: Reliability Indicators 53

    3.5 Application Example: EHV Underground Cables 53

    3.5.1 Input Parameters 54

    3.5.2 Results of Analysis 56

    4 An Enhanced WAMS-based Power System Oscillation Analysis Approach 63

    Qing Liu, Hassan Bevrani, and Yasunori Mitani

    4.1 Introduction 63

    4.2 HHT Method 65

    4.2.1 EMD 65

    4.2.2 Hilbert Transform 65

    4.2.3 Hilbert Spectrum and Hilbert Marginal Spectrum 66

    4.2.4 HHT Issues 67

    4.3 The Enhanced HHT Method 71

    4.3.1 Data Pre-treatment Processing 71

    4.3.2 Inhibiting the Boundary End Effect 75

    4.3.3 Parameter Identification 80

    4.4 Enhanced HHT Method Evaluation 81

    4.4.1 Case I 81

    4.4.2 Case II 84

    4.4.3 Case III 85

    4.5 Application to RealWide Area Measurements 88

    5 Pattern Recognition-Based Approach for Dynamic Vulnerability Status Prediction 95

    Jaime C. Cepeda, José Luis Rueda-Torres, Delia G. Colomé, and István Erlich

    5.1 Introduction 95

    5.2 Post-contingency Dynamic Vulnerability Regions 96

    5.3 Recognition of Post-contingency DVRs 97

    5.3.1 N-1 Contingency Monte Carlo Simulation 98

    5.3.2 Post-contingency Pattern Recognition Method 100

    5.3.3 Definition of Data-TimeWindows 103

    5.3.4 Identification of Post-contingency DVRs—Case Study 104

    5.4 Real-Time Vulnerability Status Prediction 109

    5.4.1 Support Vector Classifier (SVC) Training 112

    5.4.2 SVC Real-Time Implementation 113

    5.5 Concluding Remarks 115

    6 Performance Indicator-Based Real-Time Vulnerability Assessment 119

    Jaime C. Cepeda, José Luis Rueda-Torres, Delia G. Colomé, and István Erlich

    6.1 Introduction 119

    6.2 Overview of the Proposed Vulnerability Assessment Methodology 120

    6.3 Real-Time Area Coherency Identification 122

    6.3.1 Associated PMU Coherent Areas 122

    6.4 TVFS Vulnerability Performance Indicators 125

    6.4.1 Transient Stability Index (TSI) 125

    6.4.2 Voltage Deviation Index (VDI) 128

    6.4.3 Frequency Deviation Index (FDI) 131

    6.4.4 Assessment of TVFS Security Level for the Illustrative Examples 131

    6.4.5 Complete TVFS Real-Time Vulnerability Assessment 133

    6.5 Slower Phenomena Vulnerability Performance Indicators 137

    6.5.1 Oscillatory Index (OSI) 137

    6.5.2 Overload Index (OVI) 141

    6.6 Concluding Remarks 145

    7 Challenges Ahead Risk-Based AC Optimal Power Flow Under Uncertainty for Smart Sustainable Power Systems 149

    Florin Capitanescu

    7.1 Chapter Overview 149

    7.2 Conventional (Deterministic) AC Optimal Power Flow (OPF) 150

    7.2.1 Introduction 150

    7.2.2 Abstract Mathematical Formulation of the OPF Problem 150

    7.2.3 OPF Solution via Interior-Point Method 151

    7.2.4 Illustrative Example 154

    7.3 Risk-Based OPF 158

    7.3.1 Motivation and Principle 158

    7.3.2 Risk-Based OPF Problem Formulation 159

    7.3.3 Illustrative Example 160

    7.4 OPF Under Uncertainty 162

    7.4.1 Motivation and Potential Approaches 162

    7.4.2 Robust Optimization Framework 162

    7.4.3 Methodology for Solving the R-OPF Problem 163

    7.4.4 Illustrative Example 164

    7.5 Advanced Issues and Outlook 169

    7.5.1 Conventional OPF 169

    7.5.2 Beyond the Scope of Conventional OPF: Risk, Uncertainty, Smarter Sustainable Grid 172

    8 Modeling Preventive and Corrective Actions Using Linear Formulation 177

    Tom Van Acker and Dirk Van Hertem

    8.1 Introduction 177

    8.2 Security Constrained OPF 178

    8.3 Available Control Actions in AC Power Systems 178

    8.3.1 Generator Redispatch 179

    8.3.2 Load Shedding and Demand Side Management 179

    8.3.3 Phase Shifting Transformer 179

    8.3.4 Switching Actions 180

    8.3.5 Reactive Power Management 180

    8.3.6 Special Protection Schemes 180

    8.4 Linear Implementation of Control Actions in a SCOPF Environment 180

    8.4.1 Generator Redispatch 181

    8.4.2 Load Shedding and Demand Side Management 182

    8.4.3 Phase Shifting Transformer 183

    8.4.4 Switching 184

    8.5 Case Study of Preventive and Corrective Actions 185

    8.5.1 Case Study 1: Generator Redispatch and Load Shedding (CS1) 186

    8.5.2 Case Study 2: Generator Redispatch, Load Shedding and PST (CS2) 187

    8.5.3 Case Study 3: Generator Redispatch, Load Shedding and Switching (CS3) 190

    9 Model-based Predictive Control for Damping Electromechanical Oscillations in Power Systems 193

    DaWang

    9.1 Introduction 193

    9.2 MPC BasicTheory & Damping Controller Models 194

    9.2.1 What is MPC? 194

    9.2.2 Damping Controller Models 196

    9.3 MPC for Damping Oscillations 198

    9.3.1 Outline of Idea 198

    9.3.2 Mathematical Formulation 199

    9.3.3 Proposed Control Schemes 200

    9.4 Test System & Simulation Setting 204

    9.5 Performance Analysis of MPC Schemes 204

    9.5.1 Centralized MPC 204

    9.5.2 Distributed MPC 209

    9.5.3 Hierarchical MPC 209

    9.6 Conclusions and Discussions 213

    10 Voltage Stability Enhancement by Computational Intelligence Methods 217

    Worawat Nakawiro

    10.1 Introduction 217

    10.2 Theoretical Background 218

    10.2.1 Voltage Stability Assessment 218

    10.2.2 Sensitivity Analysis 219

    10.2.3 Optimal Power Flow 220

    10.2.4 Artificial Neural Network 220

    10.2.5 Ant Colony Optimisation 221

    10.3 Test Power System 223

    10.4 Example 1: Preventive Measure 224

    10.4.1 Problem Statement 224

    10.4.2 Simulation Results 225

    10.5 Example 2: Corrective Measure 226

    10.5.1 Problem Statement 226

    10.5.2 Simulation Results 227

    11 Knowledge-Based Primary and Optimization-Based Secondary Control of Multi-terminal HVDCGrids 233

    Adedotun J. Agbemuko, Mario Ndreko, Marjan Popov, José Luis Rueda-Torres, and Mart A.M.M van der Meijden

    11.1 Introduction 234

    11.2 Conventional Control Schemes in HV-MTDC Grids 234

    11.3 Principles of Fuzzy-Based Control 236

    11.4 Implementation of the Knowledge-Based Power-Voltage Droop Control Strategy 236

    11.4.1 Control Scheme for Primary and Secondary Power-Voltage Control 237

    11.4.2 Input/Output Variables 238

    11.4.3 Knowledge Base and Inference Engine 241

    11.4.4 Defuzzification and Output 241

    11.5 Optimization-Based Secondary Control Strategy 242

    11.5.1 Fitness Function 242

    11.5.2 Constraints 244

    11.6 Simulation Results 245

    11.6.1 Set Point Change 245

    11.6.2 Constantly Changing Reference Set Points 246

    11.6.3 Sudden Disconnection ofWind Farm for Undefined Period 246

    11.6.4 Permanent Outage of VSC 3 247

    12 Model Based Voltage/Reactive Control in Sustainable Distribution Systems 251

    Hoan Van Pham and Sultan Nasiruddin Ahmed

    12.1 Introduction 251

    12.2 BackgroundTheory 252

    12.2.1 Voltage Control 252

    12.2.2 Model Predictive Control 253

    12.2.3 Model Analysis 255

    12.2.4 Implementation 257

    12.3 MPC Based Voltage/Reactive Controller – an Example 258

    12.3.1 Control Scheme 258

    12.3.2 Overall Objective Function of the MPC Based Controller 259

    12.3.3 Implementation of the MPC Based Controller 261

    12.4 Test Results 262

    12.4.1 Test System and Measurement Deployment 262

    12.4.2 Parameter Setup and Algorithm Selection for the Controller 263

    12.4.3 Results and Discussion 263

    12.5 Conclusions 266

    13 Multi-Agent based Approach for Intelligent Control of Reactive Power Injection in Transmission Systems 269

    Hoan Van Pham and Sultan Nasiruddin Ahmed

    13.1 Introduction 269

    13.2 System Model and Problem Formulation 270

    13.3 Multi-Agent Based Approach 275

    13.3.1 Augmented Lagrange Formulation 275

    13.3.2 Implementation Algorithm 275

    13.4 Case Studies and Simulation Results 277

    13.4.1 Case Studies 277

    13.4.2 Simulation Results 277

    14 Operation of Distribution SystemsWithin Secure Limits Using Real-Time Model Predictive Control 283

    Hamid Soleimani Bidgoli, Gustavo Valverde, Petros Aristidou, Mevludin Glavic, and Thierry Van Cutsem

    14.1 Introduction 283

    14.2 Basic MPC Principles 285

    14.3 Control Problem Formulation 285

    14.4 Voltage CorrectionWith Minimum Control Effort 288

    14.4.1 Inclusion of LTC Actions as Known Disturbances 289

    14.4.2 Problem Formulation 290

    14.5 Correction of Voltages and Congestion Management with Minimum Deviation from References 291

    14.5.4 Problem Formulation 295

    14.6 Test System 296

    14.7 Simulation Results: Voltage Correction with Minimal Control Effort 298

    14.8 Simulation Results: Voltage and/or Congestion Corrections with Minimum Deviation from Reference 302

    15 Enhancement of Transmission System Voltage Stability through Local Control of Distribution Networks 311

    Gustavo Valverde, Petros Aristidou, and Thierry Van Cutsem

    15.1 Introduction 311

    15.2 Long-Term Voltage Stability 313

    15.2.1 Countermeasures 314

    15.3 Impact of Volt-VAR Control on Long-Term Voltage Stability 316

    15.3.1 Countermeasures 318

    15.4 Test System Description 319

    15.4.1 Test System 319

    15.4.2 VVC Algorithm 321

    15.4.3 Emergency Detection 322

    15.5 Case Studies and Simulation Results 323

    15.5.1 Results in Stable Scenarios 323

    15.5.2 Results in Unstable Scenarios 326

    15.5.3 Results with Emergency Support From Distribution 328

    16 Electric Power Network Splitting Considering Frequency Dynamics and Transmission Overloading Constraints 337

    Nelson Granda and Delia G. Colomé

    16.1 Introduction 337

    16.1.1 Stage One: Vulnerability Assessment 337

    16.1.2 Stage Two: Islanding Process 338

    16.2 Network Splitting Mechanism 340

    16.2.1 Graph Modeling, Update, and Reduction 341

    16.2.2 Graph Partitioning Procedure 342

    16.2.3 Load Shedding/Generation Tripping Schemes 343

    16.2.4 Tie-Lines Determination 344

    16.3 Power Imbalance Constraint Limits 344

    16.3.1 Reduced Frequency ResponseModel 345

    16.3.2 Power Imbalance Constraint Limits Determination 347

    16.4 Overload Assessment and Control 348

    16.5 Test Results 349

    16.5.1 Power System Collapse 349

    16.5.2 Application of Proposed Methodology 351

    16.5.3 Performance of Proposed ACIS 354

    16.6 Conclusions and Recommendations 356

    17 High-Speed Transmission Line Protection Based on Empirical Orthogonal Functions 361

    Rommel P. Aguilar and Fabián E. Pérez-Yauli

    17.1 Introduction 361

    17.2 Empirical Orthogonal Functions 363

    17.2.1 Formulation 363

    17.3 Applications of EOFs for Transmission Line Protection 365

    17.3.1 Fault Direction 366

    17.3.2 Fault Classification 367

    17.3.3 Fault Location 369

    17.4 Study Case 369

    17.4.1 Transmission Line Model and Simulation 369

    17.4.2 The Power System and Transmission Line 370

    17.4.3 Training Data 370

    17.4.4 Training Data Matrix 370

    17.4.5 Signal Conditioning 373

    17.4.6 Energy Patterns 373

    17.4.7 EOF Analysis 376

    17.4.8 Evaluation of the Protection Scheme 379

    17.4.9 Fault Classification 380

    17.4.10 Fault Location 382

    17.5 Conclusions 383

    Study Cases:WECC 9-bus, ATPDrawModels and Parameters 384

    18 Implementation of a Real Phasor Based Vulnerability Assessment and Control Scheme: The Ecuadorian WAMPAC System 389

    Pablo X. Verdugo, Jaime C. Cepeda, Aharon B. De La Torre, and Diego E. Echeverría

    18.1 Introduction 389

    18.2 PMU Location in the Ecuadorian SNI 390

    18.3 Steady-State Angle Stability 391

    18.4 Steady-State Voltage Stability 395

    18.5 Oscillatory Stability 398

    18.5.1 Power System Stabilizer Tuning 402

    18.6 Ecuadorian Special Protection Scheme (SPS) 407

    18.6.1 SPS Operation Analysis 409

    18.7 Concluding Remarks 410

    Index 413

Dynamic Vulnerability Assessment and Intelligent

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      Publisher: John Wiley & Sons Inc
      Publication Date: 16/03/2018
      ISBN13: 9781119214953, 978-1119214953
      ISBN10: 1119214955

      Description

      Book Synopsis

      Identifying, assessing, and mitigating electric power grid vulnerabilities is a growing focus in short-term operational planning of power systems. Through illustrated application, this important guide surveys state-of-the-art methodologies for the assessment and enhancement of power system security in short term operational planning and real-time operation. The methodologies employ advanced methods from probabilistic theory, data mining, artificial intelligence, and optimization, to provide knowledge-based support for monitoring, control (preventive and corrective), and decision making tasks.

      Key features:

      • Introduces behavioural recognition in wide-area monitoring and security constrained optimal power flow for intelligent control and protection and optimal grid management.
      • Provides in-depth understanding of risk-based reliability and security assessment, dynamic vulnerability assessment methods, supported by the underpinning mathematics.
      • Develo

        Table of Contents

        List of Contributors xv

        Foreword xix

        Preface xxi

        1 Introduction: The Role of Wide Area Monitoring Systems in Dynamic Vulnerability Assessment 1

        Jaime C. Cepeda and José Luis Rueda-Torres

        1.1 Introduction 1

        1.2 Power System Vulnerability 2

        1.2.1 Vulnerability Assessment 2

        1.2.2 Timescale of Power System Actions and Operations 4

        1.3 Power System Vulnerability Symptoms 5

        1.3.1 Rotor Angle Stability 6

        1.3.2 Short-Term Voltage Stability 7

        1.3.3 Short-Term Frequency Stability 7

        1.3.4 Post-Contingency Overloads 7

        1.4 Synchronized Phasor Measurement Technology 8

        1.4.1 Phasor Representation of Sinusoids 8

        1.4.2 Synchronized Phasors 9

        1.4.3 Phasor Measurement Units (PMUs) 9

        1.4.4 Discrete Fourier Transform and Phasor Calculation 10

        1.4.5 Wide Area Monitoring Systems 10

        1.4.6 WAMPAC Communication Time Delay 12

        1.5 The Fundamental Role of WAMS in Dynamic Vulnerability Assessment 13

        1.6 Concluding Remarks 16

        2 Steady-state Security 21

        Evelyn Heylen, Steven De Boeck, Marten Ovaere, Hakan Ergun, and Dirk Van Hertem

        2.1 Power System Reliability Management: A Combination of Reliability Assessment and Reliability Control 22

        2.1.1 Reliability Assessment 23

        2.1.2 Reliability Control 24

        2.2 Reliability Under Various Timeframes 31

        2.3 Reliability Criteria 33

        2.4 Reliability and Its Cost as a Function of Uncertainty 34

        2.4.1 Reliability Costs 34

        2.4.2 Interruption Costs 35

        2.4.3 Minimizing the Sum of Reliability and Interruption Costs 36

        3 Probabilistic Indicators for the Assessment of Reliability and Security of Future Power Systems 41

        Bart W. Tuinema, Nikoleta Kandalepa, and José Luis Rueda-Torres

        3.1 Introduction 41

        3.2 Time Horizons in the Planning and Operation of Power Systems 42

        3.2.1 Time Horizons 42

        3.2.2 Overlapping and Interaction 42

        3.2.3 Remedial Actions 42

        3.3 Reliability Indicators 45

        3.3.1 Security-of-Supply Related Indicators 45

        3.3.2 Additional Indicators 47

        3.4 Reliability Analysis 49

        3.4.1 Input Information 49

        3.4.2 Pre-calculations 50

        3.4.3 Reliability Analysis 50

        3.4.4 Output: Reliability Indicators 53

        3.5 Application Example: EHV Underground Cables 53

        3.5.1 Input Parameters 54

        3.5.2 Results of Analysis 56

        4 An Enhanced WAMS-based Power System Oscillation Analysis Approach 63

        Qing Liu, Hassan Bevrani, and Yasunori Mitani

        4.1 Introduction 63

        4.2 HHT Method 65

        4.2.1 EMD 65

        4.2.2 Hilbert Transform 65

        4.2.3 Hilbert Spectrum and Hilbert Marginal Spectrum 66

        4.2.4 HHT Issues 67

        4.3 The Enhanced HHT Method 71

        4.3.1 Data Pre-treatment Processing 71

        4.3.2 Inhibiting the Boundary End Effect 75

        4.3.3 Parameter Identification 80

        4.4 Enhanced HHT Method Evaluation 81

        4.4.1 Case I 81

        4.4.2 Case II 84

        4.4.3 Case III 85

        4.5 Application to RealWide Area Measurements 88

        5 Pattern Recognition-Based Approach for Dynamic Vulnerability Status Prediction 95

        Jaime C. Cepeda, José Luis Rueda-Torres, Delia G. Colomé, and István Erlich

        5.1 Introduction 95

        5.2 Post-contingency Dynamic Vulnerability Regions 96

        5.3 Recognition of Post-contingency DVRs 97

        5.3.1 N-1 Contingency Monte Carlo Simulation 98

        5.3.2 Post-contingency Pattern Recognition Method 100

        5.3.3 Definition of Data-TimeWindows 103

        5.3.4 Identification of Post-contingency DVRs—Case Study 104

        5.4 Real-Time Vulnerability Status Prediction 109

        5.4.1 Support Vector Classifier (SVC) Training 112

        5.4.2 SVC Real-Time Implementation 113

        5.5 Concluding Remarks 115

        6 Performance Indicator-Based Real-Time Vulnerability Assessment 119

        Jaime C. Cepeda, José Luis Rueda-Torres, Delia G. Colomé, and István Erlich

        6.1 Introduction 119

        6.2 Overview of the Proposed Vulnerability Assessment Methodology 120

        6.3 Real-Time Area Coherency Identification 122

        6.3.1 Associated PMU Coherent Areas 122

        6.4 TVFS Vulnerability Performance Indicators 125

        6.4.1 Transient Stability Index (TSI) 125

        6.4.2 Voltage Deviation Index (VDI) 128

        6.4.3 Frequency Deviation Index (FDI) 131

        6.4.4 Assessment of TVFS Security Level for the Illustrative Examples 131

        6.4.5 Complete TVFS Real-Time Vulnerability Assessment 133

        6.5 Slower Phenomena Vulnerability Performance Indicators 137

        6.5.1 Oscillatory Index (OSI) 137

        6.5.2 Overload Index (OVI) 141

        6.6 Concluding Remarks 145

        7 Challenges Ahead Risk-Based AC Optimal Power Flow Under Uncertainty for Smart Sustainable Power Systems 149

        Florin Capitanescu

        7.1 Chapter Overview 149

        7.2 Conventional (Deterministic) AC Optimal Power Flow (OPF) 150

        7.2.1 Introduction 150

        7.2.2 Abstract Mathematical Formulation of the OPF Problem 150

        7.2.3 OPF Solution via Interior-Point Method 151

        7.2.4 Illustrative Example 154

        7.3 Risk-Based OPF 158

        7.3.1 Motivation and Principle 158

        7.3.2 Risk-Based OPF Problem Formulation 159

        7.3.3 Illustrative Example 160

        7.4 OPF Under Uncertainty 162

        7.4.1 Motivation and Potential Approaches 162

        7.4.2 Robust Optimization Framework 162

        7.4.3 Methodology for Solving the R-OPF Problem 163

        7.4.4 Illustrative Example 164

        7.5 Advanced Issues and Outlook 169

        7.5.1 Conventional OPF 169

        7.5.2 Beyond the Scope of Conventional OPF: Risk, Uncertainty, Smarter Sustainable Grid 172

        8 Modeling Preventive and Corrective Actions Using Linear Formulation 177

        Tom Van Acker and Dirk Van Hertem

        8.1 Introduction 177

        8.2 Security Constrained OPF 178

        8.3 Available Control Actions in AC Power Systems 178

        8.3.1 Generator Redispatch 179

        8.3.2 Load Shedding and Demand Side Management 179

        8.3.3 Phase Shifting Transformer 179

        8.3.4 Switching Actions 180

        8.3.5 Reactive Power Management 180

        8.3.6 Special Protection Schemes 180

        8.4 Linear Implementation of Control Actions in a SCOPF Environment 180

        8.4.1 Generator Redispatch 181

        8.4.2 Load Shedding and Demand Side Management 182

        8.4.3 Phase Shifting Transformer 183

        8.4.4 Switching 184

        8.5 Case Study of Preventive and Corrective Actions 185

        8.5.1 Case Study 1: Generator Redispatch and Load Shedding (CS1) 186

        8.5.2 Case Study 2: Generator Redispatch, Load Shedding and PST (CS2) 187

        8.5.3 Case Study 3: Generator Redispatch, Load Shedding and Switching (CS3) 190

        9 Model-based Predictive Control for Damping Electromechanical Oscillations in Power Systems 193

        DaWang

        9.1 Introduction 193

        9.2 MPC BasicTheory & Damping Controller Models 194

        9.2.1 What is MPC? 194

        9.2.2 Damping Controller Models 196

        9.3 MPC for Damping Oscillations 198

        9.3.1 Outline of Idea 198

        9.3.2 Mathematical Formulation 199

        9.3.3 Proposed Control Schemes 200

        9.4 Test System & Simulation Setting 204

        9.5 Performance Analysis of MPC Schemes 204

        9.5.1 Centralized MPC 204

        9.5.2 Distributed MPC 209

        9.5.3 Hierarchical MPC 209

        9.6 Conclusions and Discussions 213

        10 Voltage Stability Enhancement by Computational Intelligence Methods 217

        Worawat Nakawiro

        10.1 Introduction 217

        10.2 Theoretical Background 218

        10.2.1 Voltage Stability Assessment 218

        10.2.2 Sensitivity Analysis 219

        10.2.3 Optimal Power Flow 220

        10.2.4 Artificial Neural Network 220

        10.2.5 Ant Colony Optimisation 221

        10.3 Test Power System 223

        10.4 Example 1: Preventive Measure 224

        10.4.1 Problem Statement 224

        10.4.2 Simulation Results 225

        10.5 Example 2: Corrective Measure 226

        10.5.1 Problem Statement 226

        10.5.2 Simulation Results 227

        11 Knowledge-Based Primary and Optimization-Based Secondary Control of Multi-terminal HVDCGrids 233

        Adedotun J. Agbemuko, Mario Ndreko, Marjan Popov, José Luis Rueda-Torres, and Mart A.M.M van der Meijden

        11.1 Introduction 234

        11.2 Conventional Control Schemes in HV-MTDC Grids 234

        11.3 Principles of Fuzzy-Based Control 236

        11.4 Implementation of the Knowledge-Based Power-Voltage Droop Control Strategy 236

        11.4.1 Control Scheme for Primary and Secondary Power-Voltage Control 237

        11.4.2 Input/Output Variables 238

        11.4.3 Knowledge Base and Inference Engine 241

        11.4.4 Defuzzification and Output 241

        11.5 Optimization-Based Secondary Control Strategy 242

        11.5.1 Fitness Function 242

        11.5.2 Constraints 244

        11.6 Simulation Results 245

        11.6.1 Set Point Change 245

        11.6.2 Constantly Changing Reference Set Points 246

        11.6.3 Sudden Disconnection ofWind Farm for Undefined Period 246

        11.6.4 Permanent Outage of VSC 3 247

        12 Model Based Voltage/Reactive Control in Sustainable Distribution Systems 251

        Hoan Van Pham and Sultan Nasiruddin Ahmed

        12.1 Introduction 251

        12.2 BackgroundTheory 252

        12.2.1 Voltage Control 252

        12.2.2 Model Predictive Control 253

        12.2.3 Model Analysis 255

        12.2.4 Implementation 257

        12.3 MPC Based Voltage/Reactive Controller – an Example 258

        12.3.1 Control Scheme 258

        12.3.2 Overall Objective Function of the MPC Based Controller 259

        12.3.3 Implementation of the MPC Based Controller 261

        12.4 Test Results 262

        12.4.1 Test System and Measurement Deployment 262

        12.4.2 Parameter Setup and Algorithm Selection for the Controller 263

        12.4.3 Results and Discussion 263

        12.5 Conclusions 266

        13 Multi-Agent based Approach for Intelligent Control of Reactive Power Injection in Transmission Systems 269

        Hoan Van Pham and Sultan Nasiruddin Ahmed

        13.1 Introduction 269

        13.2 System Model and Problem Formulation 270

        13.3 Multi-Agent Based Approach 275

        13.3.1 Augmented Lagrange Formulation 275

        13.3.2 Implementation Algorithm 275

        13.4 Case Studies and Simulation Results 277

        13.4.1 Case Studies 277

        13.4.2 Simulation Results 277

        14 Operation of Distribution SystemsWithin Secure Limits Using Real-Time Model Predictive Control 283

        Hamid Soleimani Bidgoli, Gustavo Valverde, Petros Aristidou, Mevludin Glavic, and Thierry Van Cutsem

        14.1 Introduction 283

        14.2 Basic MPC Principles 285

        14.3 Control Problem Formulation 285

        14.4 Voltage CorrectionWith Minimum Control Effort 288

        14.4.1 Inclusion of LTC Actions as Known Disturbances 289

        14.4.2 Problem Formulation 290

        14.5 Correction of Voltages and Congestion Management with Minimum Deviation from References 291

        14.5.4 Problem Formulation 295

        14.6 Test System 296

        14.7 Simulation Results: Voltage Correction with Minimal Control Effort 298

        14.8 Simulation Results: Voltage and/or Congestion Corrections with Minimum Deviation from Reference 302

        15 Enhancement of Transmission System Voltage Stability through Local Control of Distribution Networks 311

        Gustavo Valverde, Petros Aristidou, and Thierry Van Cutsem

        15.1 Introduction 311

        15.2 Long-Term Voltage Stability 313

        15.2.1 Countermeasures 314

        15.3 Impact of Volt-VAR Control on Long-Term Voltage Stability 316

        15.3.1 Countermeasures 318

        15.4 Test System Description 319

        15.4.1 Test System 319

        15.4.2 VVC Algorithm 321

        15.4.3 Emergency Detection 322

        15.5 Case Studies and Simulation Results 323

        15.5.1 Results in Stable Scenarios 323

        15.5.2 Results in Unstable Scenarios 326

        15.5.3 Results with Emergency Support From Distribution 328

        16 Electric Power Network Splitting Considering Frequency Dynamics and Transmission Overloading Constraints 337

        Nelson Granda and Delia G. Colomé

        16.1 Introduction 337

        16.1.1 Stage One: Vulnerability Assessment 337

        16.1.2 Stage Two: Islanding Process 338

        16.2 Network Splitting Mechanism 340

        16.2.1 Graph Modeling, Update, and Reduction 341

        16.2.2 Graph Partitioning Procedure 342

        16.2.3 Load Shedding/Generation Tripping Schemes 343

        16.2.4 Tie-Lines Determination 344

        16.3 Power Imbalance Constraint Limits 344

        16.3.1 Reduced Frequency ResponseModel 345

        16.3.2 Power Imbalance Constraint Limits Determination 347

        16.4 Overload Assessment and Control 348

        16.5 Test Results 349

        16.5.1 Power System Collapse 349

        16.5.2 Application of Proposed Methodology 351

        16.5.3 Performance of Proposed ACIS 354

        16.6 Conclusions and Recommendations 356

        17 High-Speed Transmission Line Protection Based on Empirical Orthogonal Functions 361

        Rommel P. Aguilar and Fabián E. Pérez-Yauli

        17.1 Introduction 361

        17.2 Empirical Orthogonal Functions 363

        17.2.1 Formulation 363

        17.3 Applications of EOFs for Transmission Line Protection 365

        17.3.1 Fault Direction 366

        17.3.2 Fault Classification 367

        17.3.3 Fault Location 369

        17.4 Study Case 369

        17.4.1 Transmission Line Model and Simulation 369

        17.4.2 The Power System and Transmission Line 370

        17.4.3 Training Data 370

        17.4.4 Training Data Matrix 370

        17.4.5 Signal Conditioning 373

        17.4.6 Energy Patterns 373

        17.4.7 EOF Analysis 376

        17.4.8 Evaluation of the Protection Scheme 379

        17.4.9 Fault Classification 380

        17.4.10 Fault Location 382

        17.5 Conclusions 383

        Study Cases:WECC 9-bus, ATPDrawModels and Parameters 384

        18 Implementation of a Real Phasor Based Vulnerability Assessment and Control Scheme: The Ecuadorian WAMPAC System 389

        Pablo X. Verdugo, Jaime C. Cepeda, Aharon B. De La Torre, and Diego E. Echeverría

        18.1 Introduction 389

        18.2 PMU Location in the Ecuadorian SNI 390

        18.3 Steady-State Angle Stability 391

        18.4 Steady-State Voltage Stability 395

        18.5 Oscillatory Stability 398

        18.5.1 Power System Stabilizer Tuning 402

        18.6 Ecuadorian Special Protection Scheme (SPS) 407

        18.6.1 SPS Operation Analysis 409

        18.7 Concluding Remarks 410

        Index 413

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