Identification of Continuous-Time Systems: Linear and Robust Parameter Estimation PDF

Identification of Continuous-Time Systems: Linear and Robust Parameter Estimation PDF

Name:
Identification of Continuous-Time Systems: Linear and Robust Parameter Estimation PDF

Published Date:
12/19/2019

Status:
[ Active ]

Description:

Publisher:
CRC Press Books

Document status:
Active

Format:
Electronic (PDF)

Delivery time:
10 minutes

Delivery time (for Russian version):
200 business days

SKU:

Choose Document Language:
$42.9
Need Help?
ISBN: 9781000732627

Models of dynamical systems are required for various purposes in the field of systems and control. The models are handled either in discrete time (DT) or in continuous time (CT). Physical systems give rise to models only in CT because they are based on physical laws which are invariably in CT. In system identification, indirect methods provide DT models which are then converted into CT. Methods of directly identifying CT models are preferred to the indirect methods for various reasons. The direct methods involve a primary stage of signal processing, followed by a secondary stage of parameter estimation. In the primary stage, the measured signals are processed by a general linear dynamic operation—computational or realized through prefilters, to preserve the system parameters in their native CT form—and the literature is rich on this aspect.

In this book: Identification of Continuous-Time Systems-Linear and Robust Parameter Estimation, Allamaraju Subrahmanyam and Ganti Prasada Rao consider CT system models that are linear in their unknown parameters and propose robust methods of estimation. This book complements the existing literature on the identification of CT systems by enhancing the secondary stage through linear and robust estimation.

In this book, the authors

•provide an overview of CT system identification,

•consider Markov-parameter models and time-moment models as simple linear-in-parameters models for CT system identification,

•bring them into mainstream model parameterization via basis functions,

•present a methodology to robustify the recursive least squares algorithm for parameter estimation of linear regression models,

•suggest a simple off-line error quantification scheme to show that it is possible to quantify error even in the absence of informative priors, and

•indicate some directions for further research.

This modest volume is intended to be a useful addition to the literature on identifying CT systems.

Authors: Allamaraju Subrahmanyam, Ganti Prasada Rao


Edition : 1
Number of Pages : 143
Published : 12/19/2019
isbn : 9781000732627

History


Related products

Automated Software Testing with Cypress
Published Date: 04/20/2021
$49.5
Introduction to Cryptography
Published Date: 09/04/2018
$18.3
Spectral Techniques In Proteomics
Published Date: 03/30/2007
$58.8

Best-Selling Products

CanGA 1.1-M81 (1996)
Published Date: 01/01/1981
Domestic Gas Ranges
CanGA 1.10-M94
Published Date: 01/01/1994
Gas Food Service Equipment (Baking and Roasting Ovens)
CanGA 1.6-M95
Published Date: 01/01/1995
Outdoor Cooking Gas Appliances
CanGA 1.6a-M97
Published Date: 12/22/1997
Addenda to CanGA 1.6-M95 - Outdoor Cooking Gas Appliances
CanGA 12.2-M92(R1997)
Published Date: 01/01/1992
Propane Fuel System Components for Use on Highway Vehicles
CanGA 12.3-M95
Published Date: 01/01/1995
Fuel System Components for Natural Gas Powered Vehicles