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    SYSTEM IDENTIFICATION with MATLAB. Linear Models

    Posted By: AlenMiler
    SYSTEM IDENTIFICATION with MATLAB. Linear Models

    SYSTEM IDENTIFICATION with MATLAB. Linear Models by Marvin L.
    English | 23 Oct. 2016 | ISBN: 1539691896 | 267 Pages | PDF | 2.79 MB

    In System Identification Toolbox software, MATLAB represents linear systems as model objects. Model objects are specialized data containers that encapsulate model data and other attributes in a structured way. Model objects allow you to manipulate linear systems as single entities rather than keeping track of multiple data vectors, matrices, or cell arrays. Model objects can represent single-input, single-output (SISO) systems or multiple-input, multiple-output (MIMO) systems. You can represent both continuous- and discrete-time linear systems. The toolbox provides several linear and nonlinear black-box model structures, which have traditionally been useful for representing dynamic systems.

    This book develops the next tasks with linear models:

    • “Black-Box Modeling”
    • “Identifying Frequency-Response Models”
    • “Identifying Impulse-Response Models”
    • “Identifying Process Models”
    • “Identifying Input-Output Polynomial Models”
    • “Identifying State-Space Models”
    • “Identifying Transfer Function Models”
    • “Refining Linear Parametric Models”
    • “Refine ARMAX Model with Initial Parameter Guesses at Command Line”
    • “Refine Initial ARMAX Model at Command Line”
    • “Extracting Numerical Model Data”
    • “Transforming Between Discrete-Time and Continuous-Time Representations”
    • “Continuous-Discrete Conversion Methods”
    • “Effect of Input Intersample Behavior on Continuous-Time Models”
    • “Transforming Between Linear Model Representations”
    • “Subreferencing Models”
    • “Concatenating Models”
    • “Merging Models”
    • “Building and Estimating Process Models Using System Identification Toolbox
    • “Determining Model Order and Delay”
    • “Model Structure Selection: Determining Model Order and Input Delay”
    • “Frequency Domain Identification: Estimating Models Using Frequency Domain Data”
    • “Building Structured and User-Defined Models Using System Identification Toolbox”