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Principles of system identification : theory and practice / by Arun K. Tangirala.

By: Tangirala, Arun K, 1974- [author.].
Contributor(s): Taylor and Francis.
Material type: materialTypeLabelBookPublisher: Boca Raton, FL : CRC Press, an imprint of Taylor and Francis, 2014Edition: First edition.Description: 1 online resource (908 pages) : 219 illustrations.ISBN: 9781315222509.Subject(s): TECHNOLOGY & ENGINEERING / Engineering (General) | Linear systems | Linear systems | System identification | System identification | SCIENCE / System Theory | TECHNOLOGY & ENGINEERING / Operations ResearchAdditional physical formats: Print version: : No titleDDC classification: 003.1 Online resources: Click here to view.
Contents:
part Part I: Introduction to Identification and Models for Linear Deterministic Systems -- chapter 1 Introduction -- chapter 2 A Journey into Identification -- chapter 3 Mathematical Descriptions of Processes: Models -- chapter 4 Models for Discrete-Time LTI Systems -- chapter 5 Transform-Domain Models for Linear TIme-Invariant Systems -- chapter 6 Sampling and Discretization -- part Part II: Models for Random Processes -- chapter 7 Random Processes -- chapter 8 Time-Domain Analysis: Correlation Functions -- chapter 9 Models for Linear Stationary Processes -- chapter 10 Fourier Analysis and Spectral Analysis of Deterministic Signals -- chapter 11 Spectral Representations of Random Processes -- part Part III: Estimation Methods -- chapter 12 Introduction to Estimation -- chapter 13 Goodness of Estimators -- chapter 14 Estimation Methods: Part I -- chapter 15 Estimation Methods: Part II -- chapter 16 Estimation of Signal Properties -- part Part IV: Identification of Dynamic Models - Concepts and Principles -- chapter 17 Non-Parametric and Parametric Models for Identification -- chapter 18 Predictions -- chapter 19 Identification of Parametric Time-Series Models -- chapter 20 Identification of Non-Parametric Input-Output Models -- chapter 21 Identification of Parametric Input-Output Models -- chapter 22 Statistical and Practical Elements of Model Building -- chapter 23 Identification of State-Space Models -- chapter 24 Case Studies -- part Part V: Advanced Concepts -- chapter 25 Advanced Topics in SISO Identification -- chapter 26 Linear Multivariable Identification.
Abstract: Master Techniques and Successfully Build Models Using a Single Resource Vital to all data-driven or measurement-based process operations, system identification is an interface that is based on observational science, and centers on developing mathematical models from observed data. Principles of System Identification: Theory and Practice is an introductory-level book that presents the basic foundations and underlying methods relevant to system identification. The overall scope of the book focuses on system identification with an emphasis on practice, and concentrates most specifically on discrete-time linear system identification.
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part Part I: Introduction to Identification and Models for Linear Deterministic Systems -- chapter 1 Introduction -- chapter 2 A Journey into Identification -- chapter 3 Mathematical Descriptions of Processes: Models -- chapter 4 Models for Discrete-Time LTI Systems -- chapter 5 Transform-Domain Models for Linear TIme-Invariant Systems -- chapter 6 Sampling and Discretization -- part Part II: Models for Random Processes -- chapter 7 Random Processes -- chapter 8 Time-Domain Analysis: Correlation Functions -- chapter 9 Models for Linear Stationary Processes -- chapter 10 Fourier Analysis and Spectral Analysis of Deterministic Signals -- chapter 11 Spectral Representations of Random Processes -- part Part III: Estimation Methods -- chapter 12 Introduction to Estimation -- chapter 13 Goodness of Estimators -- chapter 14 Estimation Methods: Part I -- chapter 15 Estimation Methods: Part II -- chapter 16 Estimation of Signal Properties -- part Part IV: Identification of Dynamic Models - Concepts and Principles -- chapter 17 Non-Parametric and Parametric Models for Identification -- chapter 18 Predictions -- chapter 19 Identification of Parametric Time-Series Models -- chapter 20 Identification of Non-Parametric Input-Output Models -- chapter 21 Identification of Parametric Input-Output Models -- chapter 22 Statistical and Practical Elements of Model Building -- chapter 23 Identification of State-Space Models -- chapter 24 Case Studies -- part Part V: Advanced Concepts -- chapter 25 Advanced Topics in SISO Identification -- chapter 26 Linear Multivariable Identification.

Master Techniques and Successfully Build Models Using a Single Resource Vital to all data-driven or measurement-based process operations, system identification is an interface that is based on observational science, and centers on developing mathematical models from observed data. Principles of System Identification: Theory and Practice is an introductory-level book that presents the basic foundations and underlying methods relevant to system identification. The overall scope of the book focuses on system identification with an emphasis on practice, and concentrates most specifically on discrete-time linear system identification.

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