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Simulation of long-term Heart Rate Variability records with Gaussian distribution functions

Published:07 October 2021Publication History

ABSTRACT

The work presents an algorithm for mathematical modeling long-term Heart Rate Variability data using Gaussian distribution functions. The representation of the cardiac series in time domain is performed using an inverse wavelet transform. The transform is implemented with different Daubechies wavelet bases and is compared with the implementation of the algorithm with the classical Fourier transform. The created time sequences are analyzed in terms of the wavelet bases (Db4, Db6, Db8, Db12, Db20) used and the required CPU time for implementation of the program procedure. The obtained results show higher IT efficiency of the presented algorithm, realized with Daubechies transform.

References

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  1. Simulation of long-term Heart Rate Variability records with Gaussian distribution functions

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      cover image ACM Other conferences
      CompSysTech '21: Proceedings of the 22nd International Conference on Computer Systems and Technologies
      June 2021
      230 pages
      ISBN:9781450389822
      DOI:10.1145/3472410

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      Publication History

      • Published: 7 October 2021

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