Noise signal as input data in self-organized neural networks

Self-organizing neural networks are used to analyze uncorrelated white noises of different distribution types (normal, triangular, and uniform). The artificially generated noises are analyzed by clustering the measured time signal sequence samples without its preprocessing. Using this approach, we a...

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Veröffentlicht in:Low temperature physics (Woodbury, N.Y.) N.Y.), 2022-06, Vol.48 (6), p.452-458
Hauptverfasser: Kagalovsky, V., Nemirovsky, D., Kravchenko, S. V.
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Sprache:eng
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Zusammenfassung:Self-organizing neural networks are used to analyze uncorrelated white noises of different distribution types (normal, triangular, and uniform). The artificially generated noises are analyzed by clustering the measured time signal sequence samples without its preprocessing. Using this approach, we analyze, for the first time, the current noise produced by a sliding “Wigner-crystal”-like structure in the insulating phase of a 2D electron system in silicon. The possibilities of using the method for analyzing and comparing experimental data obtained by observing various effects in solid-state physics and numerical data simulated using theoretical models are discussed.
ISSN:1063-777X
1090-6517
DOI:10.1063/10.0010439