On the Reduced Noise Sensitivity of a New Fourier Transformation Algorithm

In this study, a new inversion method is presented for performing one-dimensional Fourier transform, which shows highly robust behavior against noises. As the Fourier transformation is linear, the data noise is also transformed to the frequency domain making the operation noise sensitive especially...

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Veröffentlicht in:Mathematical geosciences 2015-08, Vol.47 (6), p.679-697
Hauptverfasser: Dobróka, Mihály, Szegedi, Hajnalka, Molnár, Judit Somogyi, Szűcs, Péter
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creator Dobróka, Mihály
Szegedi, Hajnalka
Molnár, Judit Somogyi
Szűcs, Péter
description In this study, a new inversion method is presented for performing one-dimensional Fourier transform, which shows highly robust behavior against noises. As the Fourier transformation is linear, the data noise is also transformed to the frequency domain making the operation noise sensitive especially in case of non-Gaussian noise distribution. In the field of inverse problem theory it is well known that there are numerous procedures for noise rejection, so if the Fourier transformation is formulated as an inverse problem these tools can be used to reduce the noise sensitivity. It was demonstrated in many case studies that the method of most frequent value provides useful weights to increase the noise rejection capability of geophysical inversion methods. Following the basis of the latter method the Fourier transform is formulated as an iteratively reweighted least squares problem using Steiner’s weights. Series expansion was applied to the discretization of the continuous functions of the complex spectrum. It is shown that the Jacobian matrix of the inverse problem can be calculated as the inverse Fourier transform of the basis functions used in the series expansion. To avoid the calculation of the complex integral a set of basis functions being eigenfunctions of the inverse Fourier transform is produced. This procedure leads to the modified Hermite functions and results in quick and robust inversion-based Fourier transformation method. The numerical tests of the procedure show that the noise sensitivity can be reduced around an order of magnitude compared to the traditional discrete Fourier transform.
doi_str_mv 10.1007/s11004-014-9570-x
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1874-8953
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subjects Algorithms
Chemistry and Earth Sciences
Computer Science
Earth and Environmental Science
Earth Sciences
Fourier transformation
Fourier transforms
Geophysics
Geotechnical Engineering & Applied Earth Sciences
Hydrogeology
Inversions
Mathematical analysis
Mathematical models
Noise
Noise reduction
Noise sensitivity
Physics
Series expansion
Statistics for Engineering
title On the Reduced Noise Sensitivity of a New Fourier Transformation Algorithm
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