Fr. 135.00

Practical Time Series Analysis in Natural Sciences

Inglese · Tascabile

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni



This book presents an easy-to-use tool for time series analysis and allows the user to concentrate upon studying time series properties rather than upon how to calculate the necessary estimates. The two attached programs provide, in one run of the program, a time and frequency domain description of scalar or multivariate time series approximated with a sequence of autoregressive models of increasing orders. The optimal orders are chosen by five order selection criteria. The results for scalar time series include time domain stochastic difference equations, spectral density estimates, predictability properties, and a forecast of scalar time series based upon the Kolmogorov-Wiener theory. For the bivariate and trivariate time series, the results contain a time domain description with multivariate stochastic difference equations, statistical predictability criterion, and information for calculating feedback and Granger causality properties in the bivariate case. The frequency domain information includes spectral densities, ordinary, multiple, and partial coherence functions, ordinary and multiple coherent spectra, gain, phase, and time lag factors. The programs seem to be unique and using them does not require professional knowledge of theory of random processes. The book contains many examples including three from engineering.

Sommario

Chapter 1. Introduction.- Chapter 2. Scalar time series.- Chapter 3. Bivariate time series analysis.- Chapter 4. Analysis of trivariate time series.- Chapter 5. Conclusions and recommendations.

Riassunto


This book presents an easy-to-use tool for time series analysis and allows the user to concentrate upon studying time series properties rather than upon how to calculate the necessary estimates. The two attached programs provide, in one run of the program, a time and frequency domain description of scalar or multivariate time series approximated with a sequence of autoregressive models of increasing orders. The optimal orders are chosen by five order selection criteria. The results for scalar time series include time domain stochastic difference equations, spectral density estimates, predictability properties, and a forecast of scalar time series based upon the Kolmogorov-Wiener theory. For the bivariate and trivariate time series, the results contain a time domain description with multivariate stochastic difference equations, statistical predictability criterion, and information for calculating feedback and Granger causality properties in the bivariate case. The frequency domain information includes spectral densities, ordinary, multiple, and partial coherence functions, ordinary and multiple coherent spectra, gain, phase, and time lag factors. The programs seem to be unique and using them does not require professional knowledge of theory of random processes. The book contains many examples including three from engineering.

Dettagli sul prodotto

Autori Victor Privalsky
Editore Springer, Berlin
 
Lingue Inglese
Formato Tascabile
Pubblicazione 10.03.2024
 
EAN 9783031168932
ISBN 978-3-0-3116893-2
Pagine 199
Dimensioni 155 mm x 11 mm x 235 mm
Peso 330 g
Illustrazioni XI, 199 p. 97 illus.
Serie Progress in Geophysics
Categorie Scienze naturali, medicina, informatica, tecnica > Geoscienze > Geologia

Sonnensystem: Sonne und Planeten, Wahrscheinlichkeitsrechnung und Statistik, Geophysics, Planetary Science, Applied Statistics, Stochastic Difference Equation, Kolmogorov-Wiener theory, Autoregressive, Singular and Multivariate, Time and Frequency Domain Analysis

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