Low-Pass Filtering Method for Poisson Data Time Series

Problems of digital processing of Poisson-distributed data time series from various counters of radiation particles, photons, slow neutrons etc. are relevant for experimental physics and measuring technology. A low-pass filtering method for normalized Poisson-distributed data time series is proposed...

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Veröffentlicht in:Applied sciences 2021-05, Vol.11 (10), p.4524
Hauptverfasser: Getmanov, Victor, Chinkin, Vladislav, Sidorov, Roman, Gvishiani, Alexei, Dobrovolsky, Mikhail, Soloviev, Anatoly, Dmitrieva, Anna, Kovylyaeva, Anna, Osetrova, Nataliya, Yashin, Igor
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Sprache:eng
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Zusammenfassung:Problems of digital processing of Poisson-distributed data time series from various counters of radiation particles, photons, slow neutrons etc. are relevant for experimental physics and measuring technology. A low-pass filtering method for normalized Poisson-distributed data time series is proposed. A digital quasi-Gaussian filter is designed, with a finite impulse response and non-negative weights. The quasi-Gaussian filter synthesis is implemented using the technology of stochastic global minimization and modification of the annealing simulation algorithm. The results of testing the filtering method and the quasi-Gaussian filter on model and experimental normalized Poisson data from the URAGAN muon hodoscope, that have confirmed their effectiveness, are presented.
ISSN:2076-3417
2076-3417
DOI:10.3390/app11104524