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GEOREF RECORD

Full-wavefield regularization to enhance signal-to-noise ratio in sparse low-fold land data for better reservoir attribute extraction

Emad Tawadros, Saleh Al-Dossary, Ahmed Abu El-Ata and Ahmed El-Bassiony
Full-wavefield regularization to enhance signal-to-noise ratio in sparse low-fold land data for better reservoir attribute extraction (in Reservoir characterization, Heather Bedle (prefacer), Satinder Chopra (prefacer) and Tom Davis (prefacer))
Leading Edge (Tulsa, OK) (December 2024) 43 (12): 816-821

Abstract

Sparse land seismic data, when acquired in areas with sand and detrital materials overlying faster velocity strata, are often marred by intense near-surface noise moving at slow speeds. This noise persists, even with the fine source and receiver spacing of high-channel-count 3D surveys, leading to aliasing issues. Traditional velocity-based filtering, whether in the frequency-wavenumber (f-k) or radon domains, is ineffective at removing this noise during data processing. Addressing the aliasing of slow near-surface noise through proper regularization before denoising can significantly enhance data quality. We introduce a novel approach called full-wavefield regularization and present its application for the first time on a sparse 3D low-fold offshore seismic data set. This technique aims to regularize both the seismic signals and coherent noise wave trains to a spacing where aliasing is not an issue. Consequently, the reflection and surface-wave components can be easily distinguished, and the noise can be eliminated. The results depict a marked improvement in the signal-to-noise ratio. This makes the data set usable and improves the computation of high-quality seismic attributes such as coherence and curvature, which supports better interpretation of the seismic data.


ISSN: 1070-485X
EISSN: 1938-3789
Serial Title: Leading Edge (Tulsa, OK)
Serial Volume: 43
Serial Issue: 12
Title: Full-wavefield regularization to enhance signal-to-noise ratio in sparse low-fold land data for better reservoir attribute extraction
Title: Reservoir characterization
Author(s): Tawadros, EmadAl-Dossary, SalehAbu El-Ata, AhmedEl-Bassiony, Ahmed
Author(s): Bedle, Heatherprefacer
Author(s): Chopra, Satinderprefacer
Author(s): Davis, Tomprefacer
Affiliation: Saudi Aramco, Dhahran, Saudi Arabia
Affiliation: University of Oklahoma, School of Geosciences, Norman, OK, United States
Pages: 816-821
Published: 202412
Text Language: English
Publisher: Society of Exploration Geophysicists, Tulsa, OK, United States
References: 6
Accession Number: 2025-004135
Categories: Applied geophysics
Document Type: Serial
Bibliographic Level: Analytic
Illustration Description: illus. incl. 2 tables, sects.
N17°00'00" - N32°30'00", E34°45'00" - E57°00'00"
Secondary Affiliation: Ain Shams University, EGY, Egypt
Country of Publication: United States
Secondary Affiliation: GeoRef, Copyright 2025, American Geosciences Institute. Reference includes data from GeoScienceWorld, Alexandria, VA, United States. Reference includes data supplied by Society of Exploration Geophysicists, Tulsa, OK, United States
Update Code: 2025
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