Produktbild: Monitoring and Control of Information-Poor Systems

Monitoring and Control of Information-Poor Systems An Approach based on Fuzzy Relational Models

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

09.04.2012

Verlag

John Wiley & Sons Inc

Seitenzahl

336

Maße (L/B/H)

24.9/17/2 cm

Gewicht

644 g

Auflage

2. Auflage

Sprache

Englisch

ISBN

978-0-470-68869-4

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

09.04.2012

Verlag

John Wiley & Sons Inc

Seitenzahl

336

Maße (L/B/H)

24.9/17/2 cm

Gewicht

644 g

Auflage

2. Auflage

Sprache

Englisch

ISBN

978-0-470-68869-4

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  • Produktbild: Monitoring and Control of Information-Poor Systems
  • Preface xi

    About the Author xv

    Acknowledgements xvii

    I ANALYSING THE BEHAVIOUR OF INFORMATION-POOR SYSTEMS

    1 Characteristics of Information-Poor Systems 3

    1.1 Introduction to Information-Poor Systems 3

    1.1.1 Blast Furnaces 3

    1.1.2 Container Cranes 3

    1.1.3 Cooperative Control Systems 4

    1.1.4 Distillation Columns 4

    1.1.5 Drug Administration 4

    1.1.6 Electrical Power Generation and Distribution 4

    1.1.7 Environmental Risk Assessment Systems 4

    1.1.8 Financial Investment and Portfolio Selection 5

    1.1.9 Health Care Systems 5

    1.1.10 Indoor Climate Control 5

    1.1.11 NOx Emissions from Gas Turbines and Internal Combustion Engines 6

    1.1.12 Penicillin Production Plant 6

    1.1.13 Polymerization Reactors 6

    1.1.14 Rotary Kilns 6

    1.1.15 Solar Power Plant 7

    1.1.16 Wastewater Treatment Plant 7

    1.1.17 Wood Pulp Production Plant 7

    1.2 Main Causes of Uncertainty 7

    1.2.1 Sources of Modelling Errors 8

    1.2.2 Sources of Measurement Errors 8

    1.2.3 Reasons for Poorly Defined Objectives and Constraints 9

    1.3 Design in the Face of Uncertainty 9

    References 9

    2 Describing and Propagating Uncertainty 13

    2.1 Methods of Describing Uncertainty 13

    2.1.1 Uncertainty Intervals and Probability Distributions 13

    2.1.2 Fuzzy Sets and Fuzzy Numbers 14

    2.2 Methods of Propagating Uncertainty 15

    2.2.1 Interval Arithmetic 15

    2.2.2 Statistical Methods 16

    2.2.3 Monte Carlo Methods 16

    2.2.4 Fuzzy Arithmetic 17

    2.3 Fuzzy Arithmetic Using ±-Cut Sets and Interval Arithmetic 18

    2.4 Fuzzy Arithmetic Based on the Extension Principle 21

    2.5 Representing and Propagating Uncertainty Using Pseudo-Triangular Membership Functions 24

    2.6 Summary 27

    References 27

    3 Accounting for Measurement Uncertainty 29

    3.1 Measurement Errors 29

    3.2 Introduction to Fuzzy Random Variables 29

    3.2.1 Definition of a Fuzzy Random Variable 30

    3.2.2 Generating Fuzzy Random Variables from a Knowledge of the Random and Systematic Errors 30

    3.3 A Hybrid Approach to the Propagation of Uncertainty 32

    3.4 Fuzzy Sensor Fusion Based on the Extension Principle 34

    3.5 Fuzzy Sensors 38

    3.6 Summary 39

    References 39

    4 Accounting for Modelling Errors in Fuzzy Models 41

    4.1 An Introduction to Rule-Based Models 41

    4.2 Linguistic Fuzzy Models 41

    4.2.1 Fuzzy Rules 41

    4.2.2 Fuzzy Inferencing 42

    4.2.3 Compositional Rules of Inference 43

    4.3 Functional Fuzzy Models 47

    4.4 Fuzzy Neural Networks 48

    4.5 Methods of Generating Fuzzy Models 50

    4.5.1 Modifying Expert Rules to Take Account of Uncertainty 50

    4.5.2 Identifying Fuzzy Rules from Data 56

    4.6 Defuzzification 58

    4.7 Summary 60

    References 60

    5 Fuzzy Relational Models 63

    5.1 Introduction to Fuzzy Relations and Fuzzy Relational Models 63

    5.2 Fuzzy FRMs 65

    5.3 Methods of Estimating Rule Confidences from Data 67

    5.4 Estimating Probability Density Functions from Data 70

    5.4.1 Probabilistic Interpretation of RSK Fuzzy Identification 71

    5.4.2 Effect of Structural Errors on the Output of a Fuzzy FRM 78

    5.4.3 Estimation Based on Limited Amounts of Training Data 83

    5.5 Generic Fuzzy Models 86

    5.5.1 Identification of Generic Fuzzy Models 87

    5.5.2 Reducing the Time Required to Generate the Training Data 91

    5.6 Summary 92

    References 92

    II CONTROL OF INFORMATION-POOR SYSTEMS

    6 Fuzzy Decision-Making 97

    6.1 Risk Assessment in Information-Poor Systems 97

    6.2 Fuzzy Optimization in Information-Poor Systems 99

    6.2.1 Fuzzy Goals and Fuzzy Constraints 99

    6.2.2 Fuzzy Aggregation Operators 99

    6.2.3 Fuzzy Ranking 100

    6.3 Multi-Stage Decision-Making 101

    6.3.1 Fuzzy Dynamic Programming 102

    6.3.2 Branch and Bound 103

    6.3.3 Genetic Algorithms 106

    6.4 Fuzzy Decision-Making Based on Intuitionistic Fuzzy Sets 106

    6.4.1 Definition of an Intuitionistic Fuzzy Set 106

    6.4.2 Multi-Attribute Decision-Making Using Intuitionistic Fuzzy Numbers 107

    6.5 Summary 108

    References 108

    7 Predictive Control in Uncertain Systems 111

    7.1 Model-Based Predictive Control 111

    7.2 Fuzzy Approaches to Model-Based Control of Uncertain Systems 112

    7.2.1 Inverse Control of Fuzzy Interval Systems 112

    7.2.2 Fuzzy Model-Based Predictive Control 114

    7.3 Practical Issues Associated with Multi-Step Fuzzy Decision-Making 115

    7.3.1 Limiting the Accumulation of Uncertainty 115

    7.3.2 Avoiding Excessive Computational Demands When Using Enumerative Search Optimization 115

    7.3.3 Avoiding Excessive Computational Demands When Using Evolutionary Algorithms 116

    7.3.4 Handling Infeasibility 117

    7.3.5 Choosing the Weighting in Multi-Criteria Cost Functions 117

    7.3.6 Dealing with Hard Constraints 118

    7.4 A Simplified Approach to Fuzzy FRM-Based Predictive Control 118

    7.4.1 The Fuzzy Decision-Maker 119

    7.4.2 Conditional Defuzzification 120

    7.5 FMPC of an Uncertain Dynamic System Based on a Generic Fuzzy FRM 122

    7.6 Summary 127

    References 128

    8 Incorporating Fuzzy Inputs 129

    8.1 Fuzzy Setpoints and Fuzzy Measurements 129

    8.1.1 Fuzzy Setpoints 129

    8.1.2 Fuzzy Measurements 129

    8.2 Fuzzy Measures of the Tracking Error and its Derivative 131

    8.3 Inference with Fuzzy Inputs 136

    8.4 Fuzzy Output Neural Networks 138

    8.5 Modelling Input Uncertainty Using a Fuzzy FRM 140

    8.6 Summary 151

    References 151

    9 Disturbance Rejection in Information-Poor Systems 153

    9.1 Rejecting Unmeasured Disturbances in Uncertain Systems 154

    9.1.1 Robust Fuzzy Control 154

    9.1.2 Feedback Linearization Using a Fuzzy Disturbance Observer 155

    9.1.3 Fuzzy Model-Based Internal Model Control 155

    9.2 Fuzzy IMC Based on a Fuzzy Output FRM 157

    9.3 Rejecting Measured Disturbances in Non-Linear Uncertain Systems 161

    9.4 Fuzzy MPC with Feedforward 162

    9.5 Summary 166

    References 166

    III ONLINE LEARNING IN INFORMATION-POOR SYSTEMS

    10 Online Model Identification in Information-Poor Environments 171

    10.1 Online Fuzzy Identification Schemes 171

    10.1.1 Recursive Fuzzy Least-Squares 171

    10.1.2 Recursive Forms of the RSK Algorithm 172

    10.2 Effect of Poor-Quality and Incomplete Training Data 176

    10.3 Ways of Reducing the Computational Demands 177

    10.3.1 Evolving Fuzzy Models 177

    10.3.2 Hierarchical Fuzzy Models 181

    10.4 Summary 185

    References 185

    11 Adaptive Model-Based Control of Information-Poor Systems 187

    11.1 Robust Adaptive Fuzzy Control 187

    11.2 Adaptive Fuzzy FRM-Based Predictive Control 188

    11.3 Commissioning the Controller 189

    11.3.1 Methods of Incorporating Prior Knowledge 189

    11.3.2 Initialization Using a Generic Fuzzy FRM 189

    11.4 Generating an Optimal Control Signal Using a Partially Trained Model 192

    11.4.1 Taking the Amount of Training into Account 192

    11.4.2 Incorporating a Secondary Controller 194

    11.4.3 Combining the Fuzzy Predictions Generated by More than One Model 201

    11.5 Dealing with the Effects of Disturbances 202

    11.5.1 Adaptive Feedforward Control Based on an Inaccurate Disturbance Measurement 203

    11.6 Summary 209

    References 209

    12 Adaptive Model-Free Control of Information-Poor Systems 211

    12.1 Introduction to Model-Free Adaptive Control of Non-Linear Systems 211

    12.2 Fuzzy FRM-Based Direct Adaptive Control 211

    12.3 Behaviour in the Presence of a Noisy Measurement of the Plant Output 213

    12.4 Behaviour in the Presence of an Unmeasured Disturbance 218

    12.5 Accounting for Uncertainty Arising from a Measured Disturbance 222

    12.6 Summary 227

    References 227

    13 Fault Diagnosis in Information-Poor Systems 229

    13.1 Introduction to Fault Detection and Isolation in Non-Linear Uncertain Systems 229

    13.1.1 Model-Based Methods for Non-Linear Systems 230

    13.1.2 Ways of Accounting for Uncertainty 232

    13.2 A Fuzzy FRM-Based Fault Diagnosis Scheme 233

    13.2.1 Measuring the Similarity of FRMs 234

    13.2.2 Accumulating Evidence of Fault-Free or Faulty Operation 236

    13.2.3 Generating Robust Generic Models of Faulty Operation 239

    13.2.4 Multi-Step Fault Diagnosis 239

    13.3 Summary 242

    References 243

    IV SOME EXAMPLE APPLICATIONS

    14 Control of Thermal Comfort 247

    14.1 Main Sources of Uncertainty and Practical Considerations 248

    14.2 Review of Approaches Suggested for Dealing with the Uncertainty 249

    14.3 Design of the Fuzzy FRM-Based Control System 249

    14.3.1 The Fuzzy FRM 250

    14.3.2 The Fuzzy Cost Functions 252

    14.3.3 The Fuzzy Goals 252

    14.3.4 The Fuzzy Decision-Maker 254

    14.3.5 The Conditional Defuzzifier 254

    14.4 Performance of the Thermal Comfort Controller 254

    14.5 Concluding Remarks 258

    References 259

    15 Identification of Faults in Air-Conditioning Systems 261

    15.1 Main Sources of Uncertainty and Practical Considerations 261

    15.2 Design of a Fuzzy FRM-Based Monitoring System for a Cooling Coil Subsystem 263

    15.3 Diagnosis of Known Faults in a Simulated Cooling Coil Subsystem 264

    15.3.1 Fault-Free Operation 264

    15.3.2 Leaky Valve 264

    15.3.3 Fouled Coil 265

    15.3.4 Valve Stuck in the Fully Closed Position 266

    15.3.5 Valve Stuck in the Midway Position 267

    15.3.6 Valve Stuck in the Fully Open Position 268

    15.4 Commissioning of Air-Handling Units 269

    15.5 Concluding Remarks 272

    References 272

    16 Control of Heat Exchangers 275

    16.1 Main Sources of Uncertainty and Practical Considerations 275

    16.2 Design of a Fuzzy FRM-Based Predictive Controller 276

    16.3 Design of a Fuzzy FRM-Based Internal Model Control Scheme 283

    16.4 Concluding Remarks 290

    References 290

    17 Measurement of Spatially Distributed Quantities 293

    17.1 Review of Approaches Suggested for Dealing with Sensor Bias 293

    17.2 An Example Application 294

    17.2.1 Air Temperature Estimation Using a Single-Point Sensor with Bias Correction 294

    17.2.2 Air Temperature Estimation Based on Mass and Energy Balances 299

    17.3 Using Bias Estimation and Fuzzy Data Fusion to Improve Automated Commissioning in Air-Handling Units 302

    17.3.1 Diagnosis When the Measurement Bias is Estimated Accurately 303

    17.3.2 Diagnosis When the Estimate of the Measurement Bias is Inaccurate 303

    17.4 Concluding Remarks 305

    References 306

    Index 309