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โœฆ   LIBER   โœฆ

๐Ÿ“

Dynamic Systems Models: New Methods of Parameter and State Estimation

โœ Scribed by Josif A. Boguslavskiy (auth.), Mark Borodovsky (eds.)


Publisher
Springer International Publishing
Year
2016
Tongue
English
Leaves
219
Edition
1
Category
Library

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โœฆ Synopsis


This monograph is an exposition of a novel method for solving inverse problems, a method of parameter estimation for time series data collected from simulations of real experiments. These time series might be generated by measuring the dynamics of aircraft in flight, by the function of a hidden Markov model used in bioinformatics or speech recognition or when analyzing the dynamics of asset pricing provided by the nonlinear models of financial mathematics.
Dynamic Systems Models demonstrates the use of algorithms based on polynomial approximation which have weaker requirements than already-popular iterative methods. Specifically, they do not require a first approximation of a root vector and they allow non-differentiable elements in the vector functions being approximated.
The text covers all the points necessary for the understanding and use of polynomial approximation from the mathematical fundamentals, through algorithm development to the application of the method in, for instance, aeroplane flight dynamics or biological sequence analysis. The technical material is illustrated by the use of worked examples and methods for training the algorithms are included.
Dynamic Systems Models provides researchers in aerospatial engineering, bioinformatics and financial mathematics (as well as computer scientists interested in any of these fields) with a reliable and effective numerical method for nonlinear estimation and solving boundary problems when carrying out control design. It will also be of interest to academic researchers studying inverse problems and their solution.

โœฆ Table of Contents


Front Matter....Pages i-xx
Linear Estimators of a Random Parameter Vector....Pages 1-18
Basis of the Method of Polynomial Approximation....Pages 19-28
Polynomial Approximation and Optimization of Control....Pages 29-44
Polynomial Approximation Technique Applied to Inverse Vector-Function....Pages 45-70
Identification of Parameters of Nonlinear Dynamic Systems; Smoothing, Filtration, Forecasting of State Vectors....Pages 71-108
Estimating Status Vectors from Sight Angles....Pages 109-123
Estimating the Parameters of Stochastic Models....Pages 125-168
Designing Motion Control to a Target Point of Phase Space....Pages 169-186
Inverse Problem of Dynamics: The Algorithm for Identifying the Parameters of an Aircraft....Pages 187-201

โœฆ Subjects


Nonlinear Dynamics;Mathematical Modeling and Industrial Mathematics;Aerospace Technology and Astronautics;Signal, Image and Speech Processing;Quantitative Finance


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