Low-Pass Filtering Method for Poisson Data Time Series

Author:

Getmanov Victor,Chinkin Vladislav,Sidorov RomanORCID,Gvishiani Alexei,Dobrovolsky Mikhail,Soloviev AnatolyORCID,Dmitrieva Anna,Kovylyaeva Anna,Osetrova Nataliya,Yashin Igor

Abstract

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.

Funder

Russian Science Foundation

Publisher

MDPI AG

Subject

Fluid Flow and Transfer Processes,Computer Science Applications,Process Chemistry and Technology,General Engineering,Instrumentation,General Materials Science

Reference20 articles.

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4. Digital Signal Processing: Textbook;Sergienko,2011

5. Digital Signal Processing;Getmanov,2010

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