Fr. 318.00

Hilbert-Huang Transform & Its App...(V5)

English · Hardback

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The Hilbert?Huang Transform (HHT) represents a desperate attempt to break the suffocating hold on the field of data analysis by the twin assumptions of linearity and stationarity. Unlike spectrograms, wavelet analysis, or the Wigner?Ville Distribution, HHT is truly a time-frequency analysis, but it does not require an a priori functional basis and, therefore, the convolution computation of frequency. The method provides a magnifying glass to examine the data, and also offers a different view of data from nonlinear processes, with the results no longer shackled by spurious harmonics ? the artifacts of imposing a linearity property on a nonlinear system or of limiting by the uncertainty principle, and a consequence of Fourier transform pairs in data analysis. This is the first HHT book containing papers covering a wide variety of interests. The chapters are divided into mathematical aspects and applications, with the applications further grouped into geophysics, structural safety and vis


Product details

Authors Huang Norden E, Huang Norden E, Norden E Huang & Samuel S P Shen
Assisted by Norden E Huang (Editor), Norden E. Huang (Editor), Samuel S P Shen (Editor), Samuel S. P. Shen (Editor)
Publisher World Scientific
 
Languages English
Product format Hardback
Released 31.12.2019
 
EAN 9789812563767
ISBN 978-981-256-376-7
No. of pages 324
Dimensions 175 mm x 250 mm x 22 mm
Weight 740 g
Series Interdisciplinary Mathematical
Interdisciplinary Mathematical Sciences
Subject Natural sciences, medicine, IT, technology > Mathematics > Miscellaneous

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