Jerry Mendel, Hani Hagras, Woei-Wan Tan, William W Melek, Hao Ying
Introduction to Type-2 Fuzzy Logic Control
Theory and Applications
By Mendel, Jerry; Hagras, Hani; Tan, Woei-Wan; Melek, William W.; Ying, Hao
Jerry Mendel, Hani Hagras, Woei-Wan Tan, William W Melek, Hao Ying
Introduction to Type-2 Fuzzy Logic Control
Theory and Applications
By Mendel, Jerry; Hagras, Hani; Tan, Woei-Wan; Melek, William W.; Ying, Hao
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
Written by world-class leaders in type-2 fuzzy logic control, this book offers a self-contained reference for both researchers and students. The coverage provides both background and an extensive literature survey on fuzzy logic and related type-2 fuzzy control. It also includes research questions, experiment and simulation results, and downloadable computer programs on an associated website. This key resource will prove useful to students and engineers wanting to learn type-2 fuzzy control theory and its applications.
Andere Kunden interessierten sich auch für
- Akira HiroseComplex-Valued Neural Networks152,99 €
- Jerry MendelPerceptual Computing132,99 €
- Akira HiroseComplex-Valued Neural Networks110,99 €
- David B. Fogel / Charles J. Robinson (Hgg.)Computational Intelligence183,99 €
- Richard JensenComputational Intelligence and Feature Selection179,99 €
- Michael FisherAn Introduction to Practical Formal Methods Using Temporal Logic161,99 €
- Plamen AngelovAutonomous Learning Systems153,99 €
-
-
-
Written by world-class leaders in type-2 fuzzy logic control, this book offers a self-contained reference for both researchers and students. The coverage provides both background and an extensive literature survey on fuzzy logic and related type-2 fuzzy control. It also includes research questions, experiment and simulation results, and downloadable computer programs on an associated website. This key resource will prove useful to students and engineers wanting to learn type-2 fuzzy control theory and its applications.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- IEEE Press Series on Computational Intelligence
- Verlag: Wiley & Sons
- 1. Auflage
- Seitenzahl: 376
- Erscheinungstermin: August 2014
- Englisch
- Abmessung: 236mm x 152mm x 25mm
- Gewicht: 635g
- ISBN-13: 9781118278390
- ISBN-10: 1118278399
- Artikelnr.: 36907324
- IEEE Press Series on Computational Intelligence
- Verlag: Wiley & Sons
- 1. Auflage
- Seitenzahl: 376
- Erscheinungstermin: August 2014
- Englisch
- Abmessung: 236mm x 152mm x 25mm
- Gewicht: 635g
- ISBN-13: 9781118278390
- ISBN-10: 1118278399
- Artikelnr.: 36907324
JERRY M. MENDEL is Professor in the Ming Hsieh Department of Electrical Engineering at the University of Southern California, Life Fellow of the IEEE, and a Distinguished Member of the IEEE Control Systems Society. HANI HAGRAS is Professor and Director of the Computational Intelligence Centre in the School of Computer Science and Electronic Engineering at the University of Essex, UK, and is a Fellow of the IEEE. WOEI-WAN TAN is Associate Professor in the Department of Electrical Engineering at the National University of Singapore. WILLIAM W. MELEK is Associate Professor in the Department of Mechanical and Mechatronics Engineering at the University of Waterloo. HAO YING is Professor in the Department of Electrical and Computer Engineering at Wayne State University and a Fellow of the IEEE.
Preface xiii Contributors xvii 1 Introduction 1 1.1 Early History of Fuzzy
Control 1 1.2 What Is a Type-1 Fuzzy Set? 2 1.3 What Is a Type-1 Fuzzy
Logic Controller? 3 1.4 What Is a Type-2 Fuzzy Set? 7 1.5 What Is a Type-2
Fuzzy Logic Controller? 9 1.6 Distinguishing an FLC from Other Nonlinear
Controllers 10 1.7 T2 FLCs versus T1 FLCs 11 1.8 Real-World Applications of
IT2 Mamdani FLCs 14 1.8.1 Applications to Industrial Control 14 1.8.2
Airplane Altitude Control 23 1.8.3 Control of Mobile Robots 24 1.8.4
Control of Ambient Intelligent Environments 27 1.9 Book Rationale 29 1.10
Software and How it Can Be Accessed 30 1.11 Coverage of the Other Chapters
30 2 Introduction to Type-2 Fuzzy Sets 32 2.1 Introduction 32 2.2 Brief
Review of Type-1 Fuzzy Sets 32 2.2.1 Some Definitions 32 2.2.2
Set-Theoretic Operations 35 2.2.3 Alpha Cuts 36 2.2.4 Compositions of T1
FSs 39 2.2.5 Rules and Their MFs 40 2.3 Interval Type-2 Fuzzy Sets 42 2.3.1
Introduction 42 2.3.2 Definitions 43 2.3.3 Set-Theoretic Operations 51
2.3.4 Centroid of an IT2 FS 54 2.3.5 Properties of cl(k) and cr(k) 58 2.3.6
KM Algorithms as Well as Some Others 59 2.4 General Type-2 Fuzzy Sets 68
2.4.1 alpha-Plane/zSlice Representation 68 2.4.2 Set-Theoretic Operations
72 2.4.3 Centroid of a GT2 FS 73 2.5 Wrapup 77 2.6 Moving On 79 3 Interval
Type-2 Fuzzy Logic Controllers 80 3.1 Introduction 80 3.2 Type-1 Fuzzy
Logic Controllers 80 3.2.1 Introduction 80 3.2.2 T1 Mamdani FLCs 81 3.2.3
T1 TSK FLCs 85 3.2.4 Design of T1 FLCs 86 3.3 Interval Type-2 Fuzzy Logic
Controllers 86 3.3.1 Introduction 86 3.3.2 IT2 Mamdani FLCs 87 3.3.3 IT2
TSK FLCs 103 3.3.4 Design of T2 FLCs 105 3.4 Wu-Mendel Uncertainty Bounds
105 3.5 Control Analyses of IT2 FLCs 111 3.6 Determining the FOU Parameters
of IT2 FLCs 114 3.6.1 Blurring T1 MFs 114 3.6.2 Optimizing FOU Parameters
114 3.7 Moving On 122 Appendix 3A. Proof of Theorem 3.4 123 3A.1
Inner-Bound Set [ul(x), ur(x)] 123 3A.2 Outer-Bound Set [ul(x), ur(x)] 124
4 Analytical Structure of Various Interval Type-2 Fuzzy PI and PD
Controllers 131 4.1 Introduction 131 4.2 PID, PI, and PD Controllers and
Their Relationships 134 4.2.1 Two Forms of PID Controller--Position Form
and Incremental Form 134 4.2.2 PI and PD Controllers and Their Relationship
135 4.3 Components of the Interval T2 Fuzzy PI and PD Controllers 136 4.4
Mamdani Fuzzy PI and PD Controllers--Configuration 1 140 4.4.1 Fuzzy PI
Controller Configuration 140 4.4.2 Method for Deriving the Analytical
Structure 144 4.5 Mamdani Fuzzy PI and PD Controllers--Configuration 2 154
4.6 Mamdani Fuzzy PI and PD Controllers--Configuration 3 162 4.6.1 Fuzzy PI
Controller Configuration 162 4.6.2 Method for Deriving the Analytical
Structure 165 4.7 Mamdani Fuzzy PI and PD Controllers--Configuration 4 169
4.7.1 Fuzzy PI Controller Configuration 169 4.7.2 Method for Deriving the
Analytical Structure 171 4.8 TSK Fuzzy PI and PD Controllers--Configuration
5 181 4.8.1 Fuzzy PI Controller Configuration 181 4.8.2 Deriving the
Analytical Structure 184 4.9 Analyzing the Derived Analytical Structures
185 4.9.1 Structural Connection with the Corresponding T1 Fuzzy PI
Controller 186 4.9.2 Characteristics of the Variable Gains of the T2 Fuzzy
PI Controller 190 4.10 Design Guidelines for the T2 Fuzzy PI and PD
Controllers 194 4.10.1 Determination of theta1 and theta2 Values 196 4.10.2
Determination of the Remaining Nine Parameter Values 197 4.11 Summary 198
Appendix 4A 200 5 Analysis of Simplified Interval Type-2 Fuzzy PI and PD
Controllers 205 5.1 Introduction 205 5.2 Simplified Type-2 FLCs: Design,
Computation, and Performance 206 5.2.1 Structure of a Simplified IT2 FLC
207 5.2.2 Output Computation 208 5.2.3 Computational Cost 209 5.2.4 Genetic
Tuning of FLC 210 5.2.5 Performance 211 5.2.6 Discussions 216 5.3
Analytical Structure of Interval T2 Fuzzy PD and PI Controller 221 5.3.1
Configuration of Interval T2 Fuzzy PD and PI Controller 221 5.3.2 Analysis
of the Karnik-Mendel Type-Reduced IT2 Fuzzy PD Controller 227 6.7 Robust
Control Design 277 6.7.1 System Description 277 6.7.2 Disturbance Rejection
Problem and Solution 280 6.7.3 Robust Control Example 284 6.8 Summary 285
Appendix 285 7 Looking into the Future 290 7.1 Introduction 290 7.2 William
Melek and Hao Ying Look into the Future 290 7.3 Hani Hagras Looks into the
Future 293 7.3.1 Nonsingleton IT2 FL Control 293 7.3.2 zSlices-Based
Singleton General T2 FL Control 299 7.4 Woei Wan Tan Looks into the Future
306 7.5 Jerry Mendel Looks into The Future 307 7.5.1 IT2 FLC 307 7.5.2 GT2
FLC 309 Appendix A T2 FLC Software: From Type-1 to zSlices-Based General
Type-2 FLCs 315 A.1 Introduction 315 A.2 FLC for Right-Edge Following 315
A.3 Type-1 FLC Software 316 A.3.1 Define and Set Up T1 FLC Inputs 316 A.3.2
Define T1 FSs That Quantify Each Variable 316 A.3.3 Define Logical
Antecedents and Consequents for the FL Rules 318 A.3.4 Define Rule Base of
T1 FLC 318 A.4 Interval T2 FLC Software 321 A.4.1 Define and Set Up FLC
Inputs 323 A.4.2 Define IT2 FSs That Quantify Each Variable 323 A.4.3
Define Logical Antecedents and Consequents for the FL Rules 323 A.4.4
Define Rule Base of the IT2 FLC 323 A.5 zSlices-Based General Type-2 FLC
Software 327 A.5.1 Define and Set Up FLC Inputs 327 A.5.2 Define
zSlices-Based GT2 FSs That Quantify Each Variable 327 A.5.3 Define Logical
Antecedents and Consequents for the FL Rules 335 A.5.4 Define Rule Base of
the GT2 FLC 335 References 338 Index 347
Control 1 1.2 What Is a Type-1 Fuzzy Set? 2 1.3 What Is a Type-1 Fuzzy
Logic Controller? 3 1.4 What Is a Type-2 Fuzzy Set? 7 1.5 What Is a Type-2
Fuzzy Logic Controller? 9 1.6 Distinguishing an FLC from Other Nonlinear
Controllers 10 1.7 T2 FLCs versus T1 FLCs 11 1.8 Real-World Applications of
IT2 Mamdani FLCs 14 1.8.1 Applications to Industrial Control 14 1.8.2
Airplane Altitude Control 23 1.8.3 Control of Mobile Robots 24 1.8.4
Control of Ambient Intelligent Environments 27 1.9 Book Rationale 29 1.10
Software and How it Can Be Accessed 30 1.11 Coverage of the Other Chapters
30 2 Introduction to Type-2 Fuzzy Sets 32 2.1 Introduction 32 2.2 Brief
Review of Type-1 Fuzzy Sets 32 2.2.1 Some Definitions 32 2.2.2
Set-Theoretic Operations 35 2.2.3 Alpha Cuts 36 2.2.4 Compositions of T1
FSs 39 2.2.5 Rules and Their MFs 40 2.3 Interval Type-2 Fuzzy Sets 42 2.3.1
Introduction 42 2.3.2 Definitions 43 2.3.3 Set-Theoretic Operations 51
2.3.4 Centroid of an IT2 FS 54 2.3.5 Properties of cl(k) and cr(k) 58 2.3.6
KM Algorithms as Well as Some Others 59 2.4 General Type-2 Fuzzy Sets 68
2.4.1 alpha-Plane/zSlice Representation 68 2.4.2 Set-Theoretic Operations
72 2.4.3 Centroid of a GT2 FS 73 2.5 Wrapup 77 2.6 Moving On 79 3 Interval
Type-2 Fuzzy Logic Controllers 80 3.1 Introduction 80 3.2 Type-1 Fuzzy
Logic Controllers 80 3.2.1 Introduction 80 3.2.2 T1 Mamdani FLCs 81 3.2.3
T1 TSK FLCs 85 3.2.4 Design of T1 FLCs 86 3.3 Interval Type-2 Fuzzy Logic
Controllers 86 3.3.1 Introduction 86 3.3.2 IT2 Mamdani FLCs 87 3.3.3 IT2
TSK FLCs 103 3.3.4 Design of T2 FLCs 105 3.4 Wu-Mendel Uncertainty Bounds
105 3.5 Control Analyses of IT2 FLCs 111 3.6 Determining the FOU Parameters
of IT2 FLCs 114 3.6.1 Blurring T1 MFs 114 3.6.2 Optimizing FOU Parameters
114 3.7 Moving On 122 Appendix 3A. Proof of Theorem 3.4 123 3A.1
Inner-Bound Set [ul(x), ur(x)] 123 3A.2 Outer-Bound Set [ul(x), ur(x)] 124
4 Analytical Structure of Various Interval Type-2 Fuzzy PI and PD
Controllers 131 4.1 Introduction 131 4.2 PID, PI, and PD Controllers and
Their Relationships 134 4.2.1 Two Forms of PID Controller--Position Form
and Incremental Form 134 4.2.2 PI and PD Controllers and Their Relationship
135 4.3 Components of the Interval T2 Fuzzy PI and PD Controllers 136 4.4
Mamdani Fuzzy PI and PD Controllers--Configuration 1 140 4.4.1 Fuzzy PI
Controller Configuration 140 4.4.2 Method for Deriving the Analytical
Structure 144 4.5 Mamdani Fuzzy PI and PD Controllers--Configuration 2 154
4.6 Mamdani Fuzzy PI and PD Controllers--Configuration 3 162 4.6.1 Fuzzy PI
Controller Configuration 162 4.6.2 Method for Deriving the Analytical
Structure 165 4.7 Mamdani Fuzzy PI and PD Controllers--Configuration 4 169
4.7.1 Fuzzy PI Controller Configuration 169 4.7.2 Method for Deriving the
Analytical Structure 171 4.8 TSK Fuzzy PI and PD Controllers--Configuration
5 181 4.8.1 Fuzzy PI Controller Configuration 181 4.8.2 Deriving the
Analytical Structure 184 4.9 Analyzing the Derived Analytical Structures
185 4.9.1 Structural Connection with the Corresponding T1 Fuzzy PI
Controller 186 4.9.2 Characteristics of the Variable Gains of the T2 Fuzzy
PI Controller 190 4.10 Design Guidelines for the T2 Fuzzy PI and PD
Controllers 194 4.10.1 Determination of theta1 and theta2 Values 196 4.10.2
Determination of the Remaining Nine Parameter Values 197 4.11 Summary 198
Appendix 4A 200 5 Analysis of Simplified Interval Type-2 Fuzzy PI and PD
Controllers 205 5.1 Introduction 205 5.2 Simplified Type-2 FLCs: Design,
Computation, and Performance 206 5.2.1 Structure of a Simplified IT2 FLC
207 5.2.2 Output Computation 208 5.2.3 Computational Cost 209 5.2.4 Genetic
Tuning of FLC 210 5.2.5 Performance 211 5.2.6 Discussions 216 5.3
Analytical Structure of Interval T2 Fuzzy PD and PI Controller 221 5.3.1
Configuration of Interval T2 Fuzzy PD and PI Controller 221 5.3.2 Analysis
of the Karnik-Mendel Type-Reduced IT2 Fuzzy PD Controller 227 6.7 Robust
Control Design 277 6.7.1 System Description 277 6.7.2 Disturbance Rejection
Problem and Solution 280 6.7.3 Robust Control Example 284 6.8 Summary 285
Appendix 285 7 Looking into the Future 290 7.1 Introduction 290 7.2 William
Melek and Hao Ying Look into the Future 290 7.3 Hani Hagras Looks into the
Future 293 7.3.1 Nonsingleton IT2 FL Control 293 7.3.2 zSlices-Based
Singleton General T2 FL Control 299 7.4 Woei Wan Tan Looks into the Future
306 7.5 Jerry Mendel Looks into The Future 307 7.5.1 IT2 FLC 307 7.5.2 GT2
FLC 309 Appendix A T2 FLC Software: From Type-1 to zSlices-Based General
Type-2 FLCs 315 A.1 Introduction 315 A.2 FLC for Right-Edge Following 315
A.3 Type-1 FLC Software 316 A.3.1 Define and Set Up T1 FLC Inputs 316 A.3.2
Define T1 FSs That Quantify Each Variable 316 A.3.3 Define Logical
Antecedents and Consequents for the FL Rules 318 A.3.4 Define Rule Base of
T1 FLC 318 A.4 Interval T2 FLC Software 321 A.4.1 Define and Set Up FLC
Inputs 323 A.4.2 Define IT2 FSs That Quantify Each Variable 323 A.4.3
Define Logical Antecedents and Consequents for the FL Rules 323 A.4.4
Define Rule Base of the IT2 FLC 323 A.5 zSlices-Based General Type-2 FLC
Software 327 A.5.1 Define and Set Up FLC Inputs 327 A.5.2 Define
zSlices-Based GT2 FSs That Quantify Each Variable 327 A.5.3 Define Logical
Antecedents and Consequents for the FL Rules 335 A.5.4 Define Rule Base of
the GT2 FLC 335 References 338 Index 347
Preface xiii Contributors xvii 1 Introduction 1 1.1 Early History of Fuzzy
Control 1 1.2 What Is a Type-1 Fuzzy Set? 2 1.3 What Is a Type-1 Fuzzy
Logic Controller? 3 1.4 What Is a Type-2 Fuzzy Set? 7 1.5 What Is a Type-2
Fuzzy Logic Controller? 9 1.6 Distinguishing an FLC from Other Nonlinear
Controllers 10 1.7 T2 FLCs versus T1 FLCs 11 1.8 Real-World Applications of
IT2 Mamdani FLCs 14 1.8.1 Applications to Industrial Control 14 1.8.2
Airplane Altitude Control 23 1.8.3 Control of Mobile Robots 24 1.8.4
Control of Ambient Intelligent Environments 27 1.9 Book Rationale 29 1.10
Software and How it Can Be Accessed 30 1.11 Coverage of the Other Chapters
30 2 Introduction to Type-2 Fuzzy Sets 32 2.1 Introduction 32 2.2 Brief
Review of Type-1 Fuzzy Sets 32 2.2.1 Some Definitions 32 2.2.2
Set-Theoretic Operations 35 2.2.3 Alpha Cuts 36 2.2.4 Compositions of T1
FSs 39 2.2.5 Rules and Their MFs 40 2.3 Interval Type-2 Fuzzy Sets 42 2.3.1
Introduction 42 2.3.2 Definitions 43 2.3.3 Set-Theoretic Operations 51
2.3.4 Centroid of an IT2 FS 54 2.3.5 Properties of cl(k) and cr(k) 58 2.3.6
KM Algorithms as Well as Some Others 59 2.4 General Type-2 Fuzzy Sets 68
2.4.1 alpha-Plane/zSlice Representation 68 2.4.2 Set-Theoretic Operations
72 2.4.3 Centroid of a GT2 FS 73 2.5 Wrapup 77 2.6 Moving On 79 3 Interval
Type-2 Fuzzy Logic Controllers 80 3.1 Introduction 80 3.2 Type-1 Fuzzy
Logic Controllers 80 3.2.1 Introduction 80 3.2.2 T1 Mamdani FLCs 81 3.2.3
T1 TSK FLCs 85 3.2.4 Design of T1 FLCs 86 3.3 Interval Type-2 Fuzzy Logic
Controllers 86 3.3.1 Introduction 86 3.3.2 IT2 Mamdani FLCs 87 3.3.3 IT2
TSK FLCs 103 3.3.4 Design of T2 FLCs 105 3.4 Wu-Mendel Uncertainty Bounds
105 3.5 Control Analyses of IT2 FLCs 111 3.6 Determining the FOU Parameters
of IT2 FLCs 114 3.6.1 Blurring T1 MFs 114 3.6.2 Optimizing FOU Parameters
114 3.7 Moving On 122 Appendix 3A. Proof of Theorem 3.4 123 3A.1
Inner-Bound Set [ul(x), ur(x)] 123 3A.2 Outer-Bound Set [ul(x), ur(x)] 124
4 Analytical Structure of Various Interval Type-2 Fuzzy PI and PD
Controllers 131 4.1 Introduction 131 4.2 PID, PI, and PD Controllers and
Their Relationships 134 4.2.1 Two Forms of PID Controller--Position Form
and Incremental Form 134 4.2.2 PI and PD Controllers and Their Relationship
135 4.3 Components of the Interval T2 Fuzzy PI and PD Controllers 136 4.4
Mamdani Fuzzy PI and PD Controllers--Configuration 1 140 4.4.1 Fuzzy PI
Controller Configuration 140 4.4.2 Method for Deriving the Analytical
Structure 144 4.5 Mamdani Fuzzy PI and PD Controllers--Configuration 2 154
4.6 Mamdani Fuzzy PI and PD Controllers--Configuration 3 162 4.6.1 Fuzzy PI
Controller Configuration 162 4.6.2 Method for Deriving the Analytical
Structure 165 4.7 Mamdani Fuzzy PI and PD Controllers--Configuration 4 169
4.7.1 Fuzzy PI Controller Configuration 169 4.7.2 Method for Deriving the
Analytical Structure 171 4.8 TSK Fuzzy PI and PD Controllers--Configuration
5 181 4.8.1 Fuzzy PI Controller Configuration 181 4.8.2 Deriving the
Analytical Structure 184 4.9 Analyzing the Derived Analytical Structures
185 4.9.1 Structural Connection with the Corresponding T1 Fuzzy PI
Controller 186 4.9.2 Characteristics of the Variable Gains of the T2 Fuzzy
PI Controller 190 4.10 Design Guidelines for the T2 Fuzzy PI and PD
Controllers 194 4.10.1 Determination of theta1 and theta2 Values 196 4.10.2
Determination of the Remaining Nine Parameter Values 197 4.11 Summary 198
Appendix 4A 200 5 Analysis of Simplified Interval Type-2 Fuzzy PI and PD
Controllers 205 5.1 Introduction 205 5.2 Simplified Type-2 FLCs: Design,
Computation, and Performance 206 5.2.1 Structure of a Simplified IT2 FLC
207 5.2.2 Output Computation 208 5.2.3 Computational Cost 209 5.2.4 Genetic
Tuning of FLC 210 5.2.5 Performance 211 5.2.6 Discussions 216 5.3
Analytical Structure of Interval T2 Fuzzy PD and PI Controller 221 5.3.1
Configuration of Interval T2 Fuzzy PD and PI Controller 221 5.3.2 Analysis
of the Karnik-Mendel Type-Reduced IT2 Fuzzy PD Controller 227 6.7 Robust
Control Design 277 6.7.1 System Description 277 6.7.2 Disturbance Rejection
Problem and Solution 280 6.7.3 Robust Control Example 284 6.8 Summary 285
Appendix 285 7 Looking into the Future 290 7.1 Introduction 290 7.2 William
Melek and Hao Ying Look into the Future 290 7.3 Hani Hagras Looks into the
Future 293 7.3.1 Nonsingleton IT2 FL Control 293 7.3.2 zSlices-Based
Singleton General T2 FL Control 299 7.4 Woei Wan Tan Looks into the Future
306 7.5 Jerry Mendel Looks into The Future 307 7.5.1 IT2 FLC 307 7.5.2 GT2
FLC 309 Appendix A T2 FLC Software: From Type-1 to zSlices-Based General
Type-2 FLCs 315 A.1 Introduction 315 A.2 FLC for Right-Edge Following 315
A.3 Type-1 FLC Software 316 A.3.1 Define and Set Up T1 FLC Inputs 316 A.3.2
Define T1 FSs That Quantify Each Variable 316 A.3.3 Define Logical
Antecedents and Consequents for the FL Rules 318 A.3.4 Define Rule Base of
T1 FLC 318 A.4 Interval T2 FLC Software 321 A.4.1 Define and Set Up FLC
Inputs 323 A.4.2 Define IT2 FSs That Quantify Each Variable 323 A.4.3
Define Logical Antecedents and Consequents for the FL Rules 323 A.4.4
Define Rule Base of the IT2 FLC 323 A.5 zSlices-Based General Type-2 FLC
Software 327 A.5.1 Define and Set Up FLC Inputs 327 A.5.2 Define
zSlices-Based GT2 FSs That Quantify Each Variable 327 A.5.3 Define Logical
Antecedents and Consequents for the FL Rules 335 A.5.4 Define Rule Base of
the GT2 FLC 335 References 338 Index 347
Control 1 1.2 What Is a Type-1 Fuzzy Set? 2 1.3 What Is a Type-1 Fuzzy
Logic Controller? 3 1.4 What Is a Type-2 Fuzzy Set? 7 1.5 What Is a Type-2
Fuzzy Logic Controller? 9 1.6 Distinguishing an FLC from Other Nonlinear
Controllers 10 1.7 T2 FLCs versus T1 FLCs 11 1.8 Real-World Applications of
IT2 Mamdani FLCs 14 1.8.1 Applications to Industrial Control 14 1.8.2
Airplane Altitude Control 23 1.8.3 Control of Mobile Robots 24 1.8.4
Control of Ambient Intelligent Environments 27 1.9 Book Rationale 29 1.10
Software and How it Can Be Accessed 30 1.11 Coverage of the Other Chapters
30 2 Introduction to Type-2 Fuzzy Sets 32 2.1 Introduction 32 2.2 Brief
Review of Type-1 Fuzzy Sets 32 2.2.1 Some Definitions 32 2.2.2
Set-Theoretic Operations 35 2.2.3 Alpha Cuts 36 2.2.4 Compositions of T1
FSs 39 2.2.5 Rules and Their MFs 40 2.3 Interval Type-2 Fuzzy Sets 42 2.3.1
Introduction 42 2.3.2 Definitions 43 2.3.3 Set-Theoretic Operations 51
2.3.4 Centroid of an IT2 FS 54 2.3.5 Properties of cl(k) and cr(k) 58 2.3.6
KM Algorithms as Well as Some Others 59 2.4 General Type-2 Fuzzy Sets 68
2.4.1 alpha-Plane/zSlice Representation 68 2.4.2 Set-Theoretic Operations
72 2.4.3 Centroid of a GT2 FS 73 2.5 Wrapup 77 2.6 Moving On 79 3 Interval
Type-2 Fuzzy Logic Controllers 80 3.1 Introduction 80 3.2 Type-1 Fuzzy
Logic Controllers 80 3.2.1 Introduction 80 3.2.2 T1 Mamdani FLCs 81 3.2.3
T1 TSK FLCs 85 3.2.4 Design of T1 FLCs 86 3.3 Interval Type-2 Fuzzy Logic
Controllers 86 3.3.1 Introduction 86 3.3.2 IT2 Mamdani FLCs 87 3.3.3 IT2
TSK FLCs 103 3.3.4 Design of T2 FLCs 105 3.4 Wu-Mendel Uncertainty Bounds
105 3.5 Control Analyses of IT2 FLCs 111 3.6 Determining the FOU Parameters
of IT2 FLCs 114 3.6.1 Blurring T1 MFs 114 3.6.2 Optimizing FOU Parameters
114 3.7 Moving On 122 Appendix 3A. Proof of Theorem 3.4 123 3A.1
Inner-Bound Set [ul(x), ur(x)] 123 3A.2 Outer-Bound Set [ul(x), ur(x)] 124
4 Analytical Structure of Various Interval Type-2 Fuzzy PI and PD
Controllers 131 4.1 Introduction 131 4.2 PID, PI, and PD Controllers and
Their Relationships 134 4.2.1 Two Forms of PID Controller--Position Form
and Incremental Form 134 4.2.2 PI and PD Controllers and Their Relationship
135 4.3 Components of the Interval T2 Fuzzy PI and PD Controllers 136 4.4
Mamdani Fuzzy PI and PD Controllers--Configuration 1 140 4.4.1 Fuzzy PI
Controller Configuration 140 4.4.2 Method for Deriving the Analytical
Structure 144 4.5 Mamdani Fuzzy PI and PD Controllers--Configuration 2 154
4.6 Mamdani Fuzzy PI and PD Controllers--Configuration 3 162 4.6.1 Fuzzy PI
Controller Configuration 162 4.6.2 Method for Deriving the Analytical
Structure 165 4.7 Mamdani Fuzzy PI and PD Controllers--Configuration 4 169
4.7.1 Fuzzy PI Controller Configuration 169 4.7.2 Method for Deriving the
Analytical Structure 171 4.8 TSK Fuzzy PI and PD Controllers--Configuration
5 181 4.8.1 Fuzzy PI Controller Configuration 181 4.8.2 Deriving the
Analytical Structure 184 4.9 Analyzing the Derived Analytical Structures
185 4.9.1 Structural Connection with the Corresponding T1 Fuzzy PI
Controller 186 4.9.2 Characteristics of the Variable Gains of the T2 Fuzzy
PI Controller 190 4.10 Design Guidelines for the T2 Fuzzy PI and PD
Controllers 194 4.10.1 Determination of theta1 and theta2 Values 196 4.10.2
Determination of the Remaining Nine Parameter Values 197 4.11 Summary 198
Appendix 4A 200 5 Analysis of Simplified Interval Type-2 Fuzzy PI and PD
Controllers 205 5.1 Introduction 205 5.2 Simplified Type-2 FLCs: Design,
Computation, and Performance 206 5.2.1 Structure of a Simplified IT2 FLC
207 5.2.2 Output Computation 208 5.2.3 Computational Cost 209 5.2.4 Genetic
Tuning of FLC 210 5.2.5 Performance 211 5.2.6 Discussions 216 5.3
Analytical Structure of Interval T2 Fuzzy PD and PI Controller 221 5.3.1
Configuration of Interval T2 Fuzzy PD and PI Controller 221 5.3.2 Analysis
of the Karnik-Mendel Type-Reduced IT2 Fuzzy PD Controller 227 6.7 Robust
Control Design 277 6.7.1 System Description 277 6.7.2 Disturbance Rejection
Problem and Solution 280 6.7.3 Robust Control Example 284 6.8 Summary 285
Appendix 285 7 Looking into the Future 290 7.1 Introduction 290 7.2 William
Melek and Hao Ying Look into the Future 290 7.3 Hani Hagras Looks into the
Future 293 7.3.1 Nonsingleton IT2 FL Control 293 7.3.2 zSlices-Based
Singleton General T2 FL Control 299 7.4 Woei Wan Tan Looks into the Future
306 7.5 Jerry Mendel Looks into The Future 307 7.5.1 IT2 FLC 307 7.5.2 GT2
FLC 309 Appendix A T2 FLC Software: From Type-1 to zSlices-Based General
Type-2 FLCs 315 A.1 Introduction 315 A.2 FLC for Right-Edge Following 315
A.3 Type-1 FLC Software 316 A.3.1 Define and Set Up T1 FLC Inputs 316 A.3.2
Define T1 FSs That Quantify Each Variable 316 A.3.3 Define Logical
Antecedents and Consequents for the FL Rules 318 A.3.4 Define Rule Base of
T1 FLC 318 A.4 Interval T2 FLC Software 321 A.4.1 Define and Set Up FLC
Inputs 323 A.4.2 Define IT2 FSs That Quantify Each Variable 323 A.4.3
Define Logical Antecedents and Consequents for the FL Rules 323 A.4.4
Define Rule Base of the IT2 FLC 323 A.5 zSlices-Based General Type-2 FLC
Software 327 A.5.1 Define and Set Up FLC Inputs 327 A.5.2 Define
zSlices-Based GT2 FSs That Quantify Each Variable 327 A.5.3 Define Logical
Antecedents and Consequents for the FL Rules 335 A.5.4 Define Rule Base of
the GT2 FLC 335 References 338 Index 347