Author:
Al Marashly Omar,Dobróka Mihály
Abstract
AbstractIn this paper, we introduce the novel Chebyshev Polynomials Least-Squares Fourier Transformation (C-LSQ-FT) and its robust variant with the Iteratively Reweighted Least-Squares technique (C-IRLS-FT). These innovative techniques for Fourier transformation are predicated on the concept of inversion, and the C-LSQ-FT method establishes an overdetermined inverse problem within the realm of Fourier transformation. However, given the LSQ approach’s vulnerability to data outliers, we note the potential for considerable errors and potentially unrepresentative model estimations. To circumvent these shortcomings, we incorporate Steiner’s Most Frequent Value method into our framework, thereby providing a more reliable alternative. The fusion of the Iteratively Reweighted Least-Squares (IRLS) algorithm with Cauchy-Steiner weights enhances the robustness of our Fourier transformation process, culminating in the C-IRLS-FT method. We use Chebyshev polynomials as the basis functions in both methods, leading to the approximation of continuous Fourier spectra through a finite series of Chebyshev polynomials and their corresponding coefficients. The coefficients were obtained by solving an overdetermined non-linear inverse problem. We validated the performance of both the traditional Discrete Fourier Transform (DFT) and the newly developed C-IRLS-FT through numerical tests on synthetic datasets. The results distinctly exhibited the reduced sensitivity of the C-IRLS-FT method to outliers and dispersed noise, in comparison with the traditional DFT. We leveraged the newly proposed (C-IRLS-FT) technique in the application of low-pass filtering in the context of gravity data. The results corroborate the technique’s robustness and adaptability, making it a promising method for future applications in geophysical data processing.
Publisher
Springer Science and Business Media LLC
Reference19 articles.
1. Abdelaziz MI, Dobróka M, Testing the noise rejection capability of the inversion based fourier transformation algorithm applied to 2d synthetic geomagnetic datasets (2020) Geosci Eng 8, 70–82
2. Aggarwal CC (2013) Applications of Outlier analysis. In: Aggarwal CC (ed) Outlier analysis. Springer, New York, NY, pp 373–400. https://doi.org/10.1007/978-1-4614-6396-2_12
3. Askari R, Siahkoohi HR (2008) Ground roll attenuation using the S and x-f-k transforms. Geophys Prospect 56:105–114
4. Barnett V and Lewis T. Outliers in Statistical Data. 3rd edition., Wiley J, Sons XVII (1994) 582 pp. Biom. J. 37, 256–256. https://doi.org/10.1002/bimj.4710370219
5. Butterworth C (1930) Filter approximation theory. Engineer 7:536–541