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A search method for unknown high-frequency oscillators in noisy signals based on the continuous wavelet transform. (English. Russian original) Zbl 1428.94037

Autom. Remote Control 80, No. 7, 1279-1287 (2019); translation from Avtom. Telemekh. 2019, No. 7, 122-133 (2019).
Summary: We propose a method for finding a priori undefined structures of unknown temporal fluctuations for frequency oscillators of various intensities as part of the output signals of synchronized dynamical systems. Unlike traditional approaches, the developed method is based on the continuous wavelet transform of the observed signal and is efficient in cases when frequency characteristics of the desired pattern are close to the noise characteristics of the output signal.

MSC:

94A12 Signal theory (characterization, reconstruction, filtering, etc.)
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