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Computer Research and Modeling, 2023, Volume 15, Issue 6, Pages 1507–1521
DOI: https://doi.org/10.20537/2076-7633-2023-15-6-1507-1521
(Mi crm1132)
 

This article is cited in 1 scientific paper (total in 1 paper)

MODELS IN PHYSICS AND TECHNOLOGY

Multifractal and entropy statistics of seismic noise in Kamchatka in connection with the strongest earthquakes

A. Lyubushina, G. N. Kopylovab, V. A. Kasimovab, L. N. Taranovab

a Institute of Physics of the Earth of the Russian Academy of Sciences, 10/1 Bolshaya Gruzinskaya st., Moscow, 123242, Russia
b Kamchatka Branch, Geophysical Survey, Russian Academy of Sciences, 9 boulevard Piipa, Petropavlovsk-Kamchatskii, 683006, Russia
References:
Abstract: The study of the properties of seismic noise in Kamchatka is based on the idea that noise is an important source of information about the processes preceding strong earthquakes. The hypothesis is considered that an increase in seismic hazard is accompanied by a simplification of the statistical structure of seismic noise and an increase in spatial correlations of its properties. The entropy of the distribution of squared wavelet coefficients, the width of the carrier of the multifractal singularity spectrum, and the Donoho – Johnstone index were used as statistics characterizing noise. The values of these parameters reflect the complexity: if a random signal is close in its properties to white noise, then the entropy is maximum, and the other two parameters are minimum. The statistics used are calculated for 6 station clusters. For each station cluster, daily median noise properties are calculated in successive 1-day time windows, resulting in an 18-dimensional (3 properties and 6 station clusters) time series of properties. To highlight the general properties of changes in noise parameters, a principal component method is used, which is applied for each cluster of stations, as a result of which the information is compressed into a 6-dimensional daily time series of principal components. Spatial noise coherences are estimated as a set of maximum pairwise quadratic coherence spectra between the principal components of station clusters in a sliding time window of 365 days. By calculating histograms of the distribution of cluster numbers in which the minimum and maximum values of noise statistics are achieved in a sliding time window of 365 days in length, the migration of seismic hazard areas was assessed in comparison with strong earthquakes with a magnitude of at least 7.
Keywords: seismic noise, wavelets, entropy, multifractals, multidimensional time series, principal components, coherence
Funding agency Grant number
Ministry of Science and Higher Education of the Russian Federation 075-01271- 23
FMWU-2022-0018
The work was supported by Ministry of Education and Science of Russia, within the framework of state assignments No. 075- 01271-23 and FMWU-2022-0018.
Received: 14.09.2023
Accepted: 25.09.2023
Document Type: Article
UDC: 519.257
Language: Russian
Citation: A. Lyubushin, G. N. Kopylova, V. A. Kasimova, L. N. Taranova, “Multifractal and entropy statistics of seismic noise in Kamchatka in connection with the strongest earthquakes”, Computer Research and Modeling, 15:6 (2023), 1507–1521
Citation in format AMSBIB
\Bibitem{LyuKopKas23}
\by A.~Lyubushin, G.~N.~Kopylova, V.~A.~Kasimova, L.~N.~Taranova
\paper Multifractal and entropy statistics of seismic noise in Kamchatka in connection with the strongest earthquakes
\jour Computer Research and Modeling
\yr 2023
\vol 15
\issue 6
\pages 1507--1521
\mathnet{http://mi.mathnet.ru/crm1132}
\crossref{https://doi.org/10.20537/2076-7633-2023-15-6-1507-1521}
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  • https://www.mathnet.ru/eng/crm/v15/i6/p1507
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