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.

Useful for Both Theory and Practice

The book presents the foundational pillars of identification, namely, the theory of discrete-time LTI systems, the basics of signal processing, the theory of random processes, and estimation theory. It explains the core theoretical concepts of building (linear) dynamic models from experimental data, as well as the experimental and practical aspects of identification. The author offers glimpses of modern developments in this area, and provides numerical and simulation-based examples, case studies, end-of-chapter problems, and other ample references to code for illustration and training.

Comprising 26 chapters, and ideal for coursework and self-study, this extensive text:

  • Provides the essential concepts of identification
  • Lays down the foundations of mathematical descriptions of systems, random processes, and estimation in the context of identification
  • Discusses the theory pertaining to non-parametric and parametric models for deterministic-plus-stochastic LTI systems in detail
  • Demonstrates the concepts and methods of identification on different case-studies
  • Presents a gradual development of state-space identification and grey-box modeling
  • Offers an overview of advanced topics of identification namely the linear time-varying (LTV), non-linear, and closed-loop identification
  • Discusses a multivariable approach to identification using the iterative principal component analysis
  • Embeds MATLAB® codes for illustrated examples in the text at the respective points

Principles of System Identification: Theory and Practice presents a formal base in LTI deterministic and stochastic systems modeling and estimation theory; it is a one-stop reference for introductory to moderately advanced courses on system identification, as well as introductory courses on stochastic signal processing or time-series analysis.The MATLAB scripts and SIMULINK models used as examples and case studies in the book are also available on the author's website: https://arunkt.wix.com/homepage#!textbook/c397

part |1 pages

Part I: Introduction to Identification and Models for Linear Deterministic Systems

chapter 1|29 pages

Introduction

chapter 2|25 pages

A Journey into Identification

chapter 4|41 pages

Models for Discrete-Time LTI Systems

chapter 6|21 pages

Sampling and Discretization

part |1 pages

Part II: Models for Random Processes

chapter 7|35 pages

Random Processes

chapter 9|34 pages

Models for Linear Stationary Processes

chapter 11|34 pages

Spectral Representations of Random Processes

part |1 pages

Part III: Estimation Methods

chapter 12|12 pages

Introduction to Estimation

chapter 13|33 pages

Goodness of Estimators

chapter 14|50 pages

Estimation Methods: Part I

chapter 15|19 pages

Estimation Methods: Part II

chapter 16|59 pages

Estimation of Signal Properties

part |1 pages

Part IV: Identification of Dynamic Models - Concepts and Principles

chapter 18|21 pages

Predictions

chapter 23|62 pages

Identification of State-Space Models

chapter 24|36 pages

Case Studies

part |1 pages

Part V: Advanced Concepts

chapter 25|35 pages

Advanced Topics in SISO Identification

chapter 26|24 pages

Linear Multivariable Identification