Optimal Estimation of Parameters

Optimal Estimation of Parameters
Author :
Publisher : Cambridge University Press
Total Pages : 171
Release :
ISBN-10 : 9781107004740
ISBN-13 : 1107004748
Rating : 4/5 (40 Downloads)

Synopsis Optimal Estimation of Parameters by : Jorma Rissanen

A comprehensive and consistent theory of estimation, including a description of a powerful new tool, the generalized maximum capacity estimator.

Classification, Parameter Estimation and State Estimation

Classification, Parameter Estimation and State Estimation
Author :
Publisher : John Wiley & Sons
Total Pages : 440
Release :
ISBN-10 : 9780470090145
ISBN-13 : 0470090146
Rating : 4/5 (45 Downloads)

Synopsis Classification, Parameter Estimation and State Estimation by : Ferdinand van der Heijden

Classification, Parameter Estimation and State Estimation is a practical guide for data analysts and designers of measurement systems and postgraduates students that are interested in advanced measurement systems using MATLAB. 'Prtools' is a powerful MATLAB toolbox for pattern recognition and is written and owned by one of the co-authors, B. Duin of the Delft University of Technology. After an introductory chapter, the book provides the theoretical construction for classification, estimation and state estimation. The book also deals with the skills required to bring the theoretical concepts to practical systems, and how to evaluate these systems. Together with the many examples in the chapters, the book is accompanied by a MATLAB toolbox for pattern recognition and classification. The appendix provides the necessary documentation for this toolbox as well as an overview of the most useful functions from these toolboxes. With its integrated and unified approach to classification, parameter estimation and state estimation, this book is a suitable practical supplement in existing university courses in pattern classification, optimal estimation and data analysis. Covers all contemporary main methods for classification and estimation. Integrated approach to classification, parameter estimation and state estimation Highlights the practical deployment of theoretical issues. Provides a concise and practical approach supported by MATLAB toolbox. Offers exercises at the end of each chapter and numerous worked out examples. PRtools toolbox (MATLAB) and code of worked out examples available from the internet Many examples showing implementations in MATLAB Enables students to practice their skills using a MATLAB environment

Applied Optimal Estimation

Applied Optimal Estimation
Author :
Publisher : MIT Press
Total Pages : 388
Release :
ISBN-10 : 0262570483
ISBN-13 : 9780262570480
Rating : 4/5 (83 Downloads)

Synopsis Applied Optimal Estimation by : The Analytic Sciences Corporation

This is the first book on the optimal estimation that places its major emphasis on practical applications, treating the subject more from an engineering than a mathematical orientation. Even so, theoretical and mathematical concepts are introduced and developed sufficiently to make the book a self-contained source of instruction for readers without prior knowledge of the basic principles of the field. The work is the product of the technical staff of The Analytic Sciences Corporation (TASC), an organization whose success has resulted largely from its applications of optimal estimation techniques to a wide variety of real situations involving large-scale systems. Arthur Gelb writes in the Foreword that "It is our intent throughout to provide a simple and interesting picture of the central issues underlying modern estimation theory and practice. Heuristic, rather than theoretically elegant, arguments are used extensively, with emphasis on physical insights and key questions of practical importance." Numerous illustrative examples, many based on actual applications, have been interspersed throughout the text to lead the student to a concrete understanding of the theoretical material. The inclusion of problems with "built-in" answers at the end of each of the nine chapters further enhances the self-study potential of the text. After a brief historical prelude, the book introduces the mathematics underlying random process theory and state-space characterization of linear dynamic systems. The theory and practice of optimal estimation is them presented, including filtering, smoothing, and prediction. Both linear and non-linear systems, and continuous- and discrete-time cases, are covered in considerable detail. New results are described concerning the application of covariance analysis to non-linear systems and the connection between observers and optimal estimators. The final chapters treat such practical and often pivotal issues as suboptimal structure, and computer loading considerations. This book is an outgrowth of a course given by TASC at a number of US Government facilities. Virtually all of the members of the TASC technical staff have, at one time and in one way or another, contributed to the material contained in the work.

Optimal Parameter Estimation from Near Field Measurements

Optimal Parameter Estimation from Near Field Measurements
Author :
Publisher :
Total Pages : 43
Release :
ISBN-10 : OCLC:7961945
ISBN-13 :
Rating : 4/5 (45 Downloads)

Synopsis Optimal Parameter Estimation from Near Field Measurements by : Donald A. Murphy

The techniques of optimal estimation theory are applied to determining the parameters of an acoustic field using a line array of sensors in the near field. The joint maximum likelihood estimation of point source range, bearing and power spectral density is derived assuming white noise and knowledge of its spatial covariance. Determination of the localization parameter estimates is shown to be independent of the estimation of power. Four methods are evaluated for estimating the noise spatial covariance matrix of a line array in the presence of a known signal. For the case of known signal and noise means two ad hoc schemes are developed. The mean and variance of a far-field power estimate as a function of near field pressure measurements are calculated using a Green's transfer function. The analysis used to derive the optimum processing structure for the two point source resolution problem is extended and generalized for multiple point sources.

Introduction to Optimal Estimation

Introduction to Optimal Estimation
Author :
Publisher : Springer Science & Business Media
Total Pages : 384
Release :
ISBN-10 : 9781447104179
ISBN-13 : 144710417X
Rating : 4/5 (79 Downloads)

Synopsis Introduction to Optimal Estimation by : Edward W. Kamen

A handy technical introduction to the latest theories and techniques of optimal estimation. It provides readers with extensive coverage of Wiener and Kalman filtering along with a development of least squares estimation, maximum likelihood and maximum a posteriori estimation based on discrete-time measurements. Much emphasis is placed on how they interrelate and fit together to form a systematic development of optimal estimation. Examples and exercises refer to MATLAB software.

Optimal Estimation of Dynamic Systems

Optimal Estimation of Dynamic Systems
Author :
Publisher : CRC Press
Total Pages : 606
Release :
ISBN-10 : 9780203509128
ISBN-13 : 0203509129
Rating : 4/5 (28 Downloads)

Synopsis Optimal Estimation of Dynamic Systems by : John L. Crassidis

Most newcomers to the field of linear stochastic estimation go through a difficult process in understanding and applying the theory.This book minimizes the process while introducing the fundamentals of optimal estimation. Optimal Estimation of Dynamic Systems explores topics that are important in the field of control where the signals receiv

Parameter Estimation in Engineering and Science

Parameter Estimation in Engineering and Science
Author :
Publisher : James Beck
Total Pages : 540
Release :
ISBN-10 : 0471061182
ISBN-13 : 9780471061182
Rating : 4/5 (82 Downloads)

Synopsis Parameter Estimation in Engineering and Science by : James Vere Beck

Introduction to and survey of parameter estimation; Probability; Introduction to statistics; Parameter estimation methods; Introduction to linear estimation; Matrix analysis for linear parameter estimation; Minimization of sum of squares functions for models nonlinear in parameters; Design of optimal experiments.