Hebertt Sira-Ramírez, Carlos García Rodríguez, John Cortés Romero, Alberto Luviano Juarez
Algebraic Identification and Estimation Methods in Feedback Control Systems (eBook, ePUB)
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Hebertt Sira-Ramírez, Carlos García Rodríguez, John Cortés Romero, Alberto Luviano Juarez
Algebraic Identification and Estimation Methods in Feedback Control Systems (eBook, ePUB)
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Algebraic Identification and Estimation Methods in Feedback Control Systems presents a model-based algebraic approach to online parameter and state estimation in uncertain dynamic feedback control systems. This approach evades the mathematical intricacies of the traditional stochastic approach, proposing a direct model-based scheme with several easy-to-implement computational advantages. The approach can be used with continuous and discrete, linear and nonlinear, mono-variable and multi-variable systems. The estimators based on this approach are not of asymptotic nature, and do not require any…mehr
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Algebraic Identification and Estimation Methods in Feedback Control Systems presents a model-based algebraic approach to online parameter and state estimation in uncertain dynamic feedback control systems. This approach evades the mathematical intricacies of the traditional stochastic approach, proposing a direct model-based scheme with several easy-to-implement computational advantages. The approach can be used with continuous and discrete, linear and nonlinear, mono-variable and multi-variable systems. The estimators based on this approach are not of asymptotic nature, and do not require any statistical knowledge of the corrupting noises to achieve good performance in a noisy environment. These estimators are fast, robust to structured perturbations, and easy to combine with classical or sophisticated control laws. This book uses module theory, differential algebra, and operational calculus in an easy-to-understand manner and also details how to apply these in the context of feedback control systems. A wide variety of examples, including mechanical systems, power converters, electric motors, and chaotic systems, are also included to illustrate the algebraic methodology. Key features: * Presents a radically new approach to online parameter and state estimation. * Enables the reader to master the use and understand the consequences of the highly theoretical differential algebraic viewpoint in control systems theory. * Includes examples in a variety of physical applications with experimental results. * Covers the latest developments and applications. Algebraic Identification and Estimation Methods in Feedback Control Systems is a comprehensive reference for researchers and practitioners working in the area of automatic control, and is also a useful source of information for graduate and undergraduate students.
Produktdetails
- Produktdetails
- Verlag: John Wiley & Sons
- Seitenzahl: 392
- Erscheinungstermin: 13. März 2014
- Englisch
- ISBN-13: 9781118730584
- Artikelnr.: 40615273
- Verlag: John Wiley & Sons
- Seitenzahl: 392
- Erscheinungstermin: 13. März 2014
- Englisch
- ISBN-13: 9781118730584
- Artikelnr.: 40615273
H. Sira-Ramírez obtained an ElectricalEngineer's degree from the Universidad de Los Andes inMérida (Venezuela) in 1970; an MSc in Electrical Engineeringand an Electrical Engineer's degree in 1974, and a PhD inElectrical Engineering in 1977, all from the MassachusettsInstitute of Technology (Cambridge, MA). Dr. Sira-Ramírezworked for 28 years at the Universidad de Los Andes, becoming anEmeritus Professor. Currently, he is a Titular Researcher in theCentro de Investigación y Estudios Avanzados del InstitutoPolitécnico Nacional (Cinvestav-IPN) in Mexico City, Mexico.He is a co-author of five books on automatic control, and theauthor of over 460 technical articles in book chapters, creditedjournals, and international conferences. Dr. Sira-Ramírez isinterested in the theoretical and practical aspects of feedbackregulation of nonlinear systems, with special emphasis on variablestructure feedback control, algebraic methods in automatic control,power electronics, and active disturbance rejection control. C. García-Rodríguez received a B.Eng. degreefrom the Technological Institute of Veracruz, Veracruz, Mexico in2002, and Master's and Doctor of Science degrees from theCenter for Research and Advanced Studies of the NationalPolytechnic Institute, Cinvestav-IPN, Mexico in 2005 and 2011,respectively, all in Electrical Engineering. He was with theTechnological Institute for Higher Studies of Ecatepec, Edo. deMéxico, in 2005. Since 2010, he has been a Professor at theElectronic and Mechatronic Institute, Technological University ofMixteca, Oaxaca, Mexico. He is currently also Coordinator of theMaster's Program in Electronics with Option in AppliedIntelligent Systems of this university. Dr.García-Rodríguez is a candidate member of the NationalSystem of Researchers and a member of the CONACYT Registry ofAccredited Evaluators. His current research and teaching interestsinclude control of electrical machines, power converters forvariable-speed systems, power electronics, robust control, andalgebraic identification. A. Luviano Juárez received a BS degree inMechatronics Engineering from the National Polytechnic Institute(Mexico), an MSc in Automatic Control from the Department ofAutomatic Control at the Center of Research and Advanced Studies ofthe National Polytechnic Institute (Cinvestav-IPN), and a PhD inElectrical Engineering from the Electrical Engineering Departmentat Cinvestav -IPN. Currently, he is a Professor at the NationalPolytechnic Institute - UPIITA in the Research andPostgraduate Section. His teaching and research interests includecontrol of mechatronic systems, algebraic methods in estimation,identification and control, robotics, and related subjects. John Cortés-Romero, PhD is a Research AssociateProfessor in the Department of Electrical and ElectronicEngineering at the National University of Colombia. During histenure at the NationalUniversity, Professor Cortés-Romeroserved as the coordinator of the Industrial AutomationMaster's program. Professor Cortés-Romero received hisBS in Electrical Engineering, MSc in Industrial Automation, and MScin Mathematics from the National University of Colombia in 1995,1999, and 2007, respectively. In 2007, he was selected for theprestigious OAS fellowship program and earned his PhD in ElectricalEngineering from the Centro de Investigación y de EstudiosAvanzados del Instituto Politécnico Nacional (CINVESTAV-IPN),Mexico City, Mexico in 2011. He is the author of over 40 technicalpapers in journals and international conference proceedings. Hismain research areas include nonlinear control applications, activedisturbance rejection control, algebraic identification andestimation methods in feedback control systems, and supervisorycontrol of industrial processes.
Series Preface xiii Preface xv 1 Introduction 1 1.1 Feedback Control of
Dynamic Systems 2 1.1.1 Feedback 2 1.1.2 Why Do We Need Feedback? 3 1.2 The
Parameter Identification Problem 3 1.2.1 Identifying a System 4 1.3 A Brief
Survey on Parameter Identification 4 1.4 The State Estimation Problem 5
1.4.1 Observers 6 1.4.2 Reconstructing the State via Time Derivative
Estimation 7 1.5 Algebraic Methods in Control Theory: Differences from
Existing Methodologies 8 1.6 Outline of the Book 9 References 12 2
Algebraic Parameter Identification in Linear Systems 15 2.1 Introduction 15
2.1.1 The Parameter-Estimation Problem in Linear Systems 16 2.2
Introductory Examples 17 2.2.1 Dragging an Unknown Mass in Open Loop 17
2.2.2 A Perturbed First-Order System 24 2.2.3 The Visual Servoing Problem
30 2.2.4 Balancing of the Plane Rotor 35 2.2.5 On the Control of the Linear
Motor 38 2.2.6 Double-Bridge Buck Converter 42 2.2.7 Closed-Loop Behavior
43 2.2.8 Control of an unknown variable gain motor 47 2.2.9 Identifying
Classical Controller Parameters 50 2.3 A Case Study Introducing a
"Sentinel" Criterion 53 2.3.1 A Suspension System Model 54 2.4 Remarks 67
References 68 3 Algebraic Parameter Identification in Nonlinear Systems 71
3.1 Introduction 71 3.2 Algebraic Parameter Identification for Nonlinear
Systems 72 3.2.1 Controlling an Uncertain Pendulum 74 3.2.2 A Block-Driving
Problem 80 3.2.3 The Fully Actuated Rigid Body 84 3.2.4 Parameter
Identification Under Sliding Motions 90 3.2.5 Control of an Uncertain
Inverted Pendulum Driven by a DC Motor 92 3.2.6 Identification and Control
of a Convey Crane 96 3.2.7 Identification of a Magnetic Levitation System
103 3.3 An Alternative Construction of the System of Linear Equations 105
3.3.1 Genesio-Tesi Chaotic System 107 3.3.2 The Ueda Oscillator 108 3.3.3
Identification and Control of an Uncertain Brushless DC Motor 112 3.3.4
Parameter Identification and Self-tuned Control for the Inertia Wheel
Pendulum 119 3.3.5 Algebraic Parameter Identification for Induction Motors
128 3.3.6 A Criterion to Determine the Estimator Convergence: The Error
Index 136 3.4 Remarks 141 References 141 4 Algebraic Parameter
Identification in Discrete-Time Systems 145 4.1 Introduction 145 4.2
Algebraic Parameter Identification in Discrete-Time Systems 145 4.2.1 Main
Purpose of the Chapter 146 4.2.2 Problem Formulation and Assumptions 147
4.2.3 An Introductory Example 148 4.2.4 Samuelson's Model of the National
Economy 150 4.2.5 Heating of a Slab from Two Boundary Points 155 4.2.6 An
Exact Backward Shift Reconstructor 157 4.3 A Nonlinear Filtering Scheme 160
4.3.1 Hénon System 161 4.3.2 A Hard Disk Drive 164 4.3.3 The Visual Servo
Tracking Problem 166 4.3.4 A Shape Control Problem in a Rolling Mill 170
4.3.5 Algebraic Frequency Identification of a Sinusoidal Signal by Means of
Exact Discretization 175 4.4 Algebraic Identification in Fast-Sampled
Linear Systems 178 4.4.1 The Delta-Operator Approach: A Theoretical
Framework 179 4.4.2 Delta-Transform Properties 181 4.4.3 A DC Motor Example
181 4.5 Remarks 188 References 188 5 State and Parameter Estimation in
Linear Systems 191 5.1 Introduction 191 5.1.1 Signal Time Derivation
Through the "Algebraic Derivative Method" 192 5.1.2 Observability of
Nonlinear Systems 192 5.2 Fast State Estimation 193 5.2.1 An Elementary
Second-Order Example 193 5.2.2 An Elementary Third-Order Example 194 5.2.3
A Control System Example 198 5.2.4 Control of a Perturbed Third-Order
System 201 5.2.5 A Sinusoid Estimation Problem 203 5.2.6 Identification of
Gravitational Wave Parameters 205 5.2.7 A Power Electronics Example 210
5.2.8 A Hydraulic Press 213 5.2.9 Identification and Control of a Plotter
218 5.3 Recovering Chaotically Encrypted Signals 222 5.3.1 State Estimation
for a Lorenz System 227 5.3.2 State Estimation for Chen's System 229 5.3.3
State Estimation for Chua's Circuit 231 5.3.4 State Estimation for
Rossler's System 232 5.3.5 State Estimation for the Hysteretic Circuit 234
5.3.6 Simultaneous Chaotic Encoding-Decoding with Singularity Avoidance 239
5.3.7 Discussion 240 5.4 Remarks 241 References 242 6 Control of Nonlinear
Systems via Output Feedback 245 6.1 Introduction 245 6.2 Time-Derivative
Calculations 246 6.2.1 An Introductory Example 247 6.2.2 Identifying a
Switching Input 253 6.3 The Nonlinear Systems Case 255 6.3.1 Control of a
Synchronous Generator 256 6.3.2 Control of a Multi-variable Nonlinear
System 261 6.3.3 Experimental Results on a Mechanical System 267 6.4
Remarks 278 References 279 7 Miscellaneous Applications 281 7.1
Introduction 281 7.1.1 The Separately Excited DC Motor 282 7.1.2
Justification of the ETEDPOF Controller 285 7.1.3 A Sensorless Scheme Based
on Fast Adaptive Observation 287 7.1.4 Control of the Boost Converter 292
7.2 Alternative Elimination of Initial Conditions 298 7.2.1 A Bounded
Exponential Function 299 7.2.2 Correspondence in the Frequency Domain 300
7.2.3 A System of Second Order 301 7.3 Other Functions of Time for
Parameter Estimation 304 7.3.1 A Mechanical System Example 304 7.3.2 A
Derivative Approach to Demodulation 310 7.3.3 Time Derivatives via
Parameter Identification 312 7.3.4 Example 314 7.4 An Algebraic Denoising
Scheme 318 7.4.1 Example 321 7.4.2 Numerical Results 322 7.5 Remarks 325
References 326 Appendix A Parameter Identification in Linear Continuous
Systems: A Module Approach 329 A.1 Generalities on Linear Systems
Identification 329 A.1.1 Example 330 A.1.2 Some Definitions and Results 330
A.1.3 Linear Identifiability 331 A.1.4 Structured Perturbations 333 A.1.5
The Frequency Domain Alternative 337 References 338 Appendix B Parameter
Identification in Linear Discrete Systems: A Module Approach 339 B.1 A
Short Review of Module Theory over Principal Ideal Rings 339 B.1.1 Systems
340 B.1.2 Perturbations 340 B.1.3 Dynamics and Input-Output Systems 341
B.1.4 Transfer Matrices 341 B.1.5 Identifiability 342 B.1.6 An Algebraic
Setting for Identifiability 342 B.1.7 Linear identifiability of transfer
functions 344 B.1.8 Linear Identification of Perturbed Systems 345 B.1.9
Persistent Trajectories 347 References 348 Appendix C Simultaneous State
and Parameter Estimation: An Algebraic Approach 349 C.1 Rings, Fields and
Extensions 349 C.2 Nonlinear Systems 350 C.2.1 Differential Flatness 351
C.2.2 Observability and Identifiability 352 C.2.3 Observability 352 C.2.4
Identifiable Parameters 352 C.2.5 Determinable Variables 352 C.3 Numerical
Differentiation 353 C.3.1 Polynomial Time Signals 353 C.3.2 Analytic Time
Signals 353 C.3.3 Noisy Signals 354 References 354 Appendix D Generalized
Proportional Integral Control 357 D.1 Generalities on GPI Control 357 D.2
Generalization to MIMO Linear Systems 365 References 368 Index 369
Dynamic Systems 2 1.1.1 Feedback 2 1.1.2 Why Do We Need Feedback? 3 1.2 The
Parameter Identification Problem 3 1.2.1 Identifying a System 4 1.3 A Brief
Survey on Parameter Identification 4 1.4 The State Estimation Problem 5
1.4.1 Observers 6 1.4.2 Reconstructing the State via Time Derivative
Estimation 7 1.5 Algebraic Methods in Control Theory: Differences from
Existing Methodologies 8 1.6 Outline of the Book 9 References 12 2
Algebraic Parameter Identification in Linear Systems 15 2.1 Introduction 15
2.1.1 The Parameter-Estimation Problem in Linear Systems 16 2.2
Introductory Examples 17 2.2.1 Dragging an Unknown Mass in Open Loop 17
2.2.2 A Perturbed First-Order System 24 2.2.3 The Visual Servoing Problem
30 2.2.4 Balancing of the Plane Rotor 35 2.2.5 On the Control of the Linear
Motor 38 2.2.6 Double-Bridge Buck Converter 42 2.2.7 Closed-Loop Behavior
43 2.2.8 Control of an unknown variable gain motor 47 2.2.9 Identifying
Classical Controller Parameters 50 2.3 A Case Study Introducing a
"Sentinel" Criterion 53 2.3.1 A Suspension System Model 54 2.4 Remarks 67
References 68 3 Algebraic Parameter Identification in Nonlinear Systems 71
3.1 Introduction 71 3.2 Algebraic Parameter Identification for Nonlinear
Systems 72 3.2.1 Controlling an Uncertain Pendulum 74 3.2.2 A Block-Driving
Problem 80 3.2.3 The Fully Actuated Rigid Body 84 3.2.4 Parameter
Identification Under Sliding Motions 90 3.2.5 Control of an Uncertain
Inverted Pendulum Driven by a DC Motor 92 3.2.6 Identification and Control
of a Convey Crane 96 3.2.7 Identification of a Magnetic Levitation System
103 3.3 An Alternative Construction of the System of Linear Equations 105
3.3.1 Genesio-Tesi Chaotic System 107 3.3.2 The Ueda Oscillator 108 3.3.3
Identification and Control of an Uncertain Brushless DC Motor 112 3.3.4
Parameter Identification and Self-tuned Control for the Inertia Wheel
Pendulum 119 3.3.5 Algebraic Parameter Identification for Induction Motors
128 3.3.6 A Criterion to Determine the Estimator Convergence: The Error
Index 136 3.4 Remarks 141 References 141 4 Algebraic Parameter
Identification in Discrete-Time Systems 145 4.1 Introduction 145 4.2
Algebraic Parameter Identification in Discrete-Time Systems 145 4.2.1 Main
Purpose of the Chapter 146 4.2.2 Problem Formulation and Assumptions 147
4.2.3 An Introductory Example 148 4.2.4 Samuelson's Model of the National
Economy 150 4.2.5 Heating of a Slab from Two Boundary Points 155 4.2.6 An
Exact Backward Shift Reconstructor 157 4.3 A Nonlinear Filtering Scheme 160
4.3.1 Hénon System 161 4.3.2 A Hard Disk Drive 164 4.3.3 The Visual Servo
Tracking Problem 166 4.3.4 A Shape Control Problem in a Rolling Mill 170
4.3.5 Algebraic Frequency Identification of a Sinusoidal Signal by Means of
Exact Discretization 175 4.4 Algebraic Identification in Fast-Sampled
Linear Systems 178 4.4.1 The Delta-Operator Approach: A Theoretical
Framework 179 4.4.2 Delta-Transform Properties 181 4.4.3 A DC Motor Example
181 4.5 Remarks 188 References 188 5 State and Parameter Estimation in
Linear Systems 191 5.1 Introduction 191 5.1.1 Signal Time Derivation
Through the "Algebraic Derivative Method" 192 5.1.2 Observability of
Nonlinear Systems 192 5.2 Fast State Estimation 193 5.2.1 An Elementary
Second-Order Example 193 5.2.2 An Elementary Third-Order Example 194 5.2.3
A Control System Example 198 5.2.4 Control of a Perturbed Third-Order
System 201 5.2.5 A Sinusoid Estimation Problem 203 5.2.6 Identification of
Gravitational Wave Parameters 205 5.2.7 A Power Electronics Example 210
5.2.8 A Hydraulic Press 213 5.2.9 Identification and Control of a Plotter
218 5.3 Recovering Chaotically Encrypted Signals 222 5.3.1 State Estimation
for a Lorenz System 227 5.3.2 State Estimation for Chen's System 229 5.3.3
State Estimation for Chua's Circuit 231 5.3.4 State Estimation for
Rossler's System 232 5.3.5 State Estimation for the Hysteretic Circuit 234
5.3.6 Simultaneous Chaotic Encoding-Decoding with Singularity Avoidance 239
5.3.7 Discussion 240 5.4 Remarks 241 References 242 6 Control of Nonlinear
Systems via Output Feedback 245 6.1 Introduction 245 6.2 Time-Derivative
Calculations 246 6.2.1 An Introductory Example 247 6.2.2 Identifying a
Switching Input 253 6.3 The Nonlinear Systems Case 255 6.3.1 Control of a
Synchronous Generator 256 6.3.2 Control of a Multi-variable Nonlinear
System 261 6.3.3 Experimental Results on a Mechanical System 267 6.4
Remarks 278 References 279 7 Miscellaneous Applications 281 7.1
Introduction 281 7.1.1 The Separately Excited DC Motor 282 7.1.2
Justification of the ETEDPOF Controller 285 7.1.3 A Sensorless Scheme Based
on Fast Adaptive Observation 287 7.1.4 Control of the Boost Converter 292
7.2 Alternative Elimination of Initial Conditions 298 7.2.1 A Bounded
Exponential Function 299 7.2.2 Correspondence in the Frequency Domain 300
7.2.3 A System of Second Order 301 7.3 Other Functions of Time for
Parameter Estimation 304 7.3.1 A Mechanical System Example 304 7.3.2 A
Derivative Approach to Demodulation 310 7.3.3 Time Derivatives via
Parameter Identification 312 7.3.4 Example 314 7.4 An Algebraic Denoising
Scheme 318 7.4.1 Example 321 7.4.2 Numerical Results 322 7.5 Remarks 325
References 326 Appendix A Parameter Identification in Linear Continuous
Systems: A Module Approach 329 A.1 Generalities on Linear Systems
Identification 329 A.1.1 Example 330 A.1.2 Some Definitions and Results 330
A.1.3 Linear Identifiability 331 A.1.4 Structured Perturbations 333 A.1.5
The Frequency Domain Alternative 337 References 338 Appendix B Parameter
Identification in Linear Discrete Systems: A Module Approach 339 B.1 A
Short Review of Module Theory over Principal Ideal Rings 339 B.1.1 Systems
340 B.1.2 Perturbations 340 B.1.3 Dynamics and Input-Output Systems 341
B.1.4 Transfer Matrices 341 B.1.5 Identifiability 342 B.1.6 An Algebraic
Setting for Identifiability 342 B.1.7 Linear identifiability of transfer
functions 344 B.1.8 Linear Identification of Perturbed Systems 345 B.1.9
Persistent Trajectories 347 References 348 Appendix C Simultaneous State
and Parameter Estimation: An Algebraic Approach 349 C.1 Rings, Fields and
Extensions 349 C.2 Nonlinear Systems 350 C.2.1 Differential Flatness 351
C.2.2 Observability and Identifiability 352 C.2.3 Observability 352 C.2.4
Identifiable Parameters 352 C.2.5 Determinable Variables 352 C.3 Numerical
Differentiation 353 C.3.1 Polynomial Time Signals 353 C.3.2 Analytic Time
Signals 353 C.3.3 Noisy Signals 354 References 354 Appendix D Generalized
Proportional Integral Control 357 D.1 Generalities on GPI Control 357 D.2
Generalization to MIMO Linear Systems 365 References 368 Index 369
Series Preface xiii Preface xv 1 Introduction 1 1.1 Feedback Control of
Dynamic Systems 2 1.1.1 Feedback 2 1.1.2 Why Do We Need Feedback? 3 1.2 The
Parameter Identification Problem 3 1.2.1 Identifying a System 4 1.3 A Brief
Survey on Parameter Identification 4 1.4 The State Estimation Problem 5
1.4.1 Observers 6 1.4.2 Reconstructing the State via Time Derivative
Estimation 7 1.5 Algebraic Methods in Control Theory: Differences from
Existing Methodologies 8 1.6 Outline of the Book 9 References 12 2
Algebraic Parameter Identification in Linear Systems 15 2.1 Introduction 15
2.1.1 The Parameter-Estimation Problem in Linear Systems 16 2.2
Introductory Examples 17 2.2.1 Dragging an Unknown Mass in Open Loop 17
2.2.2 A Perturbed First-Order System 24 2.2.3 The Visual Servoing Problem
30 2.2.4 Balancing of the Plane Rotor 35 2.2.5 On the Control of the Linear
Motor 38 2.2.6 Double-Bridge Buck Converter 42 2.2.7 Closed-Loop Behavior
43 2.2.8 Control of an unknown variable gain motor 47 2.2.9 Identifying
Classical Controller Parameters 50 2.3 A Case Study Introducing a
"Sentinel" Criterion 53 2.3.1 A Suspension System Model 54 2.4 Remarks 67
References 68 3 Algebraic Parameter Identification in Nonlinear Systems 71
3.1 Introduction 71 3.2 Algebraic Parameter Identification for Nonlinear
Systems 72 3.2.1 Controlling an Uncertain Pendulum 74 3.2.2 A Block-Driving
Problem 80 3.2.3 The Fully Actuated Rigid Body 84 3.2.4 Parameter
Identification Under Sliding Motions 90 3.2.5 Control of an Uncertain
Inverted Pendulum Driven by a DC Motor 92 3.2.6 Identification and Control
of a Convey Crane 96 3.2.7 Identification of a Magnetic Levitation System
103 3.3 An Alternative Construction of the System of Linear Equations 105
3.3.1 Genesio-Tesi Chaotic System 107 3.3.2 The Ueda Oscillator 108 3.3.3
Identification and Control of an Uncertain Brushless DC Motor 112 3.3.4
Parameter Identification and Self-tuned Control for the Inertia Wheel
Pendulum 119 3.3.5 Algebraic Parameter Identification for Induction Motors
128 3.3.6 A Criterion to Determine the Estimator Convergence: The Error
Index 136 3.4 Remarks 141 References 141 4 Algebraic Parameter
Identification in Discrete-Time Systems 145 4.1 Introduction 145 4.2
Algebraic Parameter Identification in Discrete-Time Systems 145 4.2.1 Main
Purpose of the Chapter 146 4.2.2 Problem Formulation and Assumptions 147
4.2.3 An Introductory Example 148 4.2.4 Samuelson's Model of the National
Economy 150 4.2.5 Heating of a Slab from Two Boundary Points 155 4.2.6 An
Exact Backward Shift Reconstructor 157 4.3 A Nonlinear Filtering Scheme 160
4.3.1 Hénon System 161 4.3.2 A Hard Disk Drive 164 4.3.3 The Visual Servo
Tracking Problem 166 4.3.4 A Shape Control Problem in a Rolling Mill 170
4.3.5 Algebraic Frequency Identification of a Sinusoidal Signal by Means of
Exact Discretization 175 4.4 Algebraic Identification in Fast-Sampled
Linear Systems 178 4.4.1 The Delta-Operator Approach: A Theoretical
Framework 179 4.4.2 Delta-Transform Properties 181 4.4.3 A DC Motor Example
181 4.5 Remarks 188 References 188 5 State and Parameter Estimation in
Linear Systems 191 5.1 Introduction 191 5.1.1 Signal Time Derivation
Through the "Algebraic Derivative Method" 192 5.1.2 Observability of
Nonlinear Systems 192 5.2 Fast State Estimation 193 5.2.1 An Elementary
Second-Order Example 193 5.2.2 An Elementary Third-Order Example 194 5.2.3
A Control System Example 198 5.2.4 Control of a Perturbed Third-Order
System 201 5.2.5 A Sinusoid Estimation Problem 203 5.2.6 Identification of
Gravitational Wave Parameters 205 5.2.7 A Power Electronics Example 210
5.2.8 A Hydraulic Press 213 5.2.9 Identification and Control of a Plotter
218 5.3 Recovering Chaotically Encrypted Signals 222 5.3.1 State Estimation
for a Lorenz System 227 5.3.2 State Estimation for Chen's System 229 5.3.3
State Estimation for Chua's Circuit 231 5.3.4 State Estimation for
Rossler's System 232 5.3.5 State Estimation for the Hysteretic Circuit 234
5.3.6 Simultaneous Chaotic Encoding-Decoding with Singularity Avoidance 239
5.3.7 Discussion 240 5.4 Remarks 241 References 242 6 Control of Nonlinear
Systems via Output Feedback 245 6.1 Introduction 245 6.2 Time-Derivative
Calculations 246 6.2.1 An Introductory Example 247 6.2.2 Identifying a
Switching Input 253 6.3 The Nonlinear Systems Case 255 6.3.1 Control of a
Synchronous Generator 256 6.3.2 Control of a Multi-variable Nonlinear
System 261 6.3.3 Experimental Results on a Mechanical System 267 6.4
Remarks 278 References 279 7 Miscellaneous Applications 281 7.1
Introduction 281 7.1.1 The Separately Excited DC Motor 282 7.1.2
Justification of the ETEDPOF Controller 285 7.1.3 A Sensorless Scheme Based
on Fast Adaptive Observation 287 7.1.4 Control of the Boost Converter 292
7.2 Alternative Elimination of Initial Conditions 298 7.2.1 A Bounded
Exponential Function 299 7.2.2 Correspondence in the Frequency Domain 300
7.2.3 A System of Second Order 301 7.3 Other Functions of Time for
Parameter Estimation 304 7.3.1 A Mechanical System Example 304 7.3.2 A
Derivative Approach to Demodulation 310 7.3.3 Time Derivatives via
Parameter Identification 312 7.3.4 Example 314 7.4 An Algebraic Denoising
Scheme 318 7.4.1 Example 321 7.4.2 Numerical Results 322 7.5 Remarks 325
References 326 Appendix A Parameter Identification in Linear Continuous
Systems: A Module Approach 329 A.1 Generalities on Linear Systems
Identification 329 A.1.1 Example 330 A.1.2 Some Definitions and Results 330
A.1.3 Linear Identifiability 331 A.1.4 Structured Perturbations 333 A.1.5
The Frequency Domain Alternative 337 References 338 Appendix B Parameter
Identification in Linear Discrete Systems: A Module Approach 339 B.1 A
Short Review of Module Theory over Principal Ideal Rings 339 B.1.1 Systems
340 B.1.2 Perturbations 340 B.1.3 Dynamics and Input-Output Systems 341
B.1.4 Transfer Matrices 341 B.1.5 Identifiability 342 B.1.6 An Algebraic
Setting for Identifiability 342 B.1.7 Linear identifiability of transfer
functions 344 B.1.8 Linear Identification of Perturbed Systems 345 B.1.9
Persistent Trajectories 347 References 348 Appendix C Simultaneous State
and Parameter Estimation: An Algebraic Approach 349 C.1 Rings, Fields and
Extensions 349 C.2 Nonlinear Systems 350 C.2.1 Differential Flatness 351
C.2.2 Observability and Identifiability 352 C.2.3 Observability 352 C.2.4
Identifiable Parameters 352 C.2.5 Determinable Variables 352 C.3 Numerical
Differentiation 353 C.3.1 Polynomial Time Signals 353 C.3.2 Analytic Time
Signals 353 C.3.3 Noisy Signals 354 References 354 Appendix D Generalized
Proportional Integral Control 357 D.1 Generalities on GPI Control 357 D.2
Generalization to MIMO Linear Systems 365 References 368 Index 369
Dynamic Systems 2 1.1.1 Feedback 2 1.1.2 Why Do We Need Feedback? 3 1.2 The
Parameter Identification Problem 3 1.2.1 Identifying a System 4 1.3 A Brief
Survey on Parameter Identification 4 1.4 The State Estimation Problem 5
1.4.1 Observers 6 1.4.2 Reconstructing the State via Time Derivative
Estimation 7 1.5 Algebraic Methods in Control Theory: Differences from
Existing Methodologies 8 1.6 Outline of the Book 9 References 12 2
Algebraic Parameter Identification in Linear Systems 15 2.1 Introduction 15
2.1.1 The Parameter-Estimation Problem in Linear Systems 16 2.2
Introductory Examples 17 2.2.1 Dragging an Unknown Mass in Open Loop 17
2.2.2 A Perturbed First-Order System 24 2.2.3 The Visual Servoing Problem
30 2.2.4 Balancing of the Plane Rotor 35 2.2.5 On the Control of the Linear
Motor 38 2.2.6 Double-Bridge Buck Converter 42 2.2.7 Closed-Loop Behavior
43 2.2.8 Control of an unknown variable gain motor 47 2.2.9 Identifying
Classical Controller Parameters 50 2.3 A Case Study Introducing a
"Sentinel" Criterion 53 2.3.1 A Suspension System Model 54 2.4 Remarks 67
References 68 3 Algebraic Parameter Identification in Nonlinear Systems 71
3.1 Introduction 71 3.2 Algebraic Parameter Identification for Nonlinear
Systems 72 3.2.1 Controlling an Uncertain Pendulum 74 3.2.2 A Block-Driving
Problem 80 3.2.3 The Fully Actuated Rigid Body 84 3.2.4 Parameter
Identification Under Sliding Motions 90 3.2.5 Control of an Uncertain
Inverted Pendulum Driven by a DC Motor 92 3.2.6 Identification and Control
of a Convey Crane 96 3.2.7 Identification of a Magnetic Levitation System
103 3.3 An Alternative Construction of the System of Linear Equations 105
3.3.1 Genesio-Tesi Chaotic System 107 3.3.2 The Ueda Oscillator 108 3.3.3
Identification and Control of an Uncertain Brushless DC Motor 112 3.3.4
Parameter Identification and Self-tuned Control for the Inertia Wheel
Pendulum 119 3.3.5 Algebraic Parameter Identification for Induction Motors
128 3.3.6 A Criterion to Determine the Estimator Convergence: The Error
Index 136 3.4 Remarks 141 References 141 4 Algebraic Parameter
Identification in Discrete-Time Systems 145 4.1 Introduction 145 4.2
Algebraic Parameter Identification in Discrete-Time Systems 145 4.2.1 Main
Purpose of the Chapter 146 4.2.2 Problem Formulation and Assumptions 147
4.2.3 An Introductory Example 148 4.2.4 Samuelson's Model of the National
Economy 150 4.2.5 Heating of a Slab from Two Boundary Points 155 4.2.6 An
Exact Backward Shift Reconstructor 157 4.3 A Nonlinear Filtering Scheme 160
4.3.1 Hénon System 161 4.3.2 A Hard Disk Drive 164 4.3.3 The Visual Servo
Tracking Problem 166 4.3.4 A Shape Control Problem in a Rolling Mill 170
4.3.5 Algebraic Frequency Identification of a Sinusoidal Signal by Means of
Exact Discretization 175 4.4 Algebraic Identification in Fast-Sampled
Linear Systems 178 4.4.1 The Delta-Operator Approach: A Theoretical
Framework 179 4.4.2 Delta-Transform Properties 181 4.4.3 A DC Motor Example
181 4.5 Remarks 188 References 188 5 State and Parameter Estimation in
Linear Systems 191 5.1 Introduction 191 5.1.1 Signal Time Derivation
Through the "Algebraic Derivative Method" 192 5.1.2 Observability of
Nonlinear Systems 192 5.2 Fast State Estimation 193 5.2.1 An Elementary
Second-Order Example 193 5.2.2 An Elementary Third-Order Example 194 5.2.3
A Control System Example 198 5.2.4 Control of a Perturbed Third-Order
System 201 5.2.5 A Sinusoid Estimation Problem 203 5.2.6 Identification of
Gravitational Wave Parameters 205 5.2.7 A Power Electronics Example 210
5.2.8 A Hydraulic Press 213 5.2.9 Identification and Control of a Plotter
218 5.3 Recovering Chaotically Encrypted Signals 222 5.3.1 State Estimation
for a Lorenz System 227 5.3.2 State Estimation for Chen's System 229 5.3.3
State Estimation for Chua's Circuit 231 5.3.4 State Estimation for
Rossler's System 232 5.3.5 State Estimation for the Hysteretic Circuit 234
5.3.6 Simultaneous Chaotic Encoding-Decoding with Singularity Avoidance 239
5.3.7 Discussion 240 5.4 Remarks 241 References 242 6 Control of Nonlinear
Systems via Output Feedback 245 6.1 Introduction 245 6.2 Time-Derivative
Calculations 246 6.2.1 An Introductory Example 247 6.2.2 Identifying a
Switching Input 253 6.3 The Nonlinear Systems Case 255 6.3.1 Control of a
Synchronous Generator 256 6.3.2 Control of a Multi-variable Nonlinear
System 261 6.3.3 Experimental Results on a Mechanical System 267 6.4
Remarks 278 References 279 7 Miscellaneous Applications 281 7.1
Introduction 281 7.1.1 The Separately Excited DC Motor 282 7.1.2
Justification of the ETEDPOF Controller 285 7.1.3 A Sensorless Scheme Based
on Fast Adaptive Observation 287 7.1.4 Control of the Boost Converter 292
7.2 Alternative Elimination of Initial Conditions 298 7.2.1 A Bounded
Exponential Function 299 7.2.2 Correspondence in the Frequency Domain 300
7.2.3 A System of Second Order 301 7.3 Other Functions of Time for
Parameter Estimation 304 7.3.1 A Mechanical System Example 304 7.3.2 A
Derivative Approach to Demodulation 310 7.3.3 Time Derivatives via
Parameter Identification 312 7.3.4 Example 314 7.4 An Algebraic Denoising
Scheme 318 7.4.1 Example 321 7.4.2 Numerical Results 322 7.5 Remarks 325
References 326 Appendix A Parameter Identification in Linear Continuous
Systems: A Module Approach 329 A.1 Generalities on Linear Systems
Identification 329 A.1.1 Example 330 A.1.2 Some Definitions and Results 330
A.1.3 Linear Identifiability 331 A.1.4 Structured Perturbations 333 A.1.5
The Frequency Domain Alternative 337 References 338 Appendix B Parameter
Identification in Linear Discrete Systems: A Module Approach 339 B.1 A
Short Review of Module Theory over Principal Ideal Rings 339 B.1.1 Systems
340 B.1.2 Perturbations 340 B.1.3 Dynamics and Input-Output Systems 341
B.1.4 Transfer Matrices 341 B.1.5 Identifiability 342 B.1.6 An Algebraic
Setting for Identifiability 342 B.1.7 Linear identifiability of transfer
functions 344 B.1.8 Linear Identification of Perturbed Systems 345 B.1.9
Persistent Trajectories 347 References 348 Appendix C Simultaneous State
and Parameter Estimation: An Algebraic Approach 349 C.1 Rings, Fields and
Extensions 349 C.2 Nonlinear Systems 350 C.2.1 Differential Flatness 351
C.2.2 Observability and Identifiability 352 C.2.3 Observability 352 C.2.4
Identifiable Parameters 352 C.2.5 Determinable Variables 352 C.3 Numerical
Differentiation 353 C.3.1 Polynomial Time Signals 353 C.3.2 Analytic Time
Signals 353 C.3.3 Noisy Signals 354 References 354 Appendix D Generalized
Proportional Integral Control 357 D.1 Generalities on GPI Control 357 D.2
Generalization to MIMO Linear Systems 365 References 368 Index 369