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Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals

Piersanti, M. et al · American Geophysical Union · 2017

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Many real-life signals and, in particular, in the space physics domain, exhibit variations acrossdifferent temporal scales. Hence, their statistical momenta may depend on the time scale at which the signal is studied. To identify and quantify such variations, a time-frequency analysis has to be performed on these signals. The dependence of the statistical properties of a signal fluctuation on the space and time scales is the distinctive character of systems with nonlinear couplings among different modes. Hence, assessing how the statistics of signal fluctuations vary with scale will be of help in understanding the corresponding multiscale statistics of such dynamics. This paper presents a new multiscale data analysis technique, the adaptive local iterative filtering (ALIF), which allows to describe the multiscale nature of the geophysical signal studied better than via Fourier transform, and improves scale resolution with respect to discrete wavelet transform. The example of geophysical signal, to which ALIF has been applied, is ionospheric radio power scintillation on L band. ALIF appears to be a promising technique to study the small-scale structures of radio scintillation due to ionospheric turbulence.
Fil: Piersanti, M.. University Of L Aquila, L Aquila, Italy; Italia
Fil: Materassi, M.. National Research Council, Rome, Italy; Italia

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APA 7

Piersanti, M. E. A. (2017). Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals. http://hdl.handle.net/11336/66165

MLA

Piersanti, M. et al. "Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals." 2017. http://hdl.handle.net/11336/66165.

Chicago

Piersanti, M. et al. 2017. "Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals.". http://hdl.handle.net/11336/66165.

Harvard

Piersanti, M. E. A. 2017, Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals, American Geophysical Union, available at: http://hdl.handle.net/11336/66165 [Accessed 25 Jun. 2026].

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Título
Adaptive local iterative filtering: A promising technique for the analysis of nonstationary signals
Autor / colaboradores
Piersanti, M. et al
Editorial
American Geophysical Union
Año de publicación
2017
ISSN
1031-1046
ISSN
1031-1046
Idioma
eng

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