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Inversion with stratigraphy-guided deep learning

Asmund Heir, Samir Aghayev, Chau Tran and Anicka Molder
Inversion with stratigraphy-guided deep learning
Geophysics (August 2024) 89 (4): R377-R386

Abstract

Property estimation in seismic exploration traditionally relies on seismic inversion, which is an ill-posed problem. However, recent advances in deep learning (DL), specifically supervised neural networks, indicate promise for accuracy improvements. Building upon this, stratigraphy-guided deep learning (SGDL) is a novel method that encodes stratigraphic units as discrete features within the DL model. Our primary objective is to evaluate SGDL in a scenario with available geologic data and field data calibration, such as well tops and horizons. We conduct a case study predicting porosity and acoustic impedance from poststack seismic data. Robustness evaluations demonstrate a 20% average enhancement in the correlation for acoustic impedance across 10 test wells from the Volve data set. We find that SGDL inversion outperforms traditional and other DL methods, reaching a 91% correlation for one benchmark blind well. These results offer compelling evidence that the incorporation of stratigraphic units as features in the DL model contributes to further enhancing the accuracy of property estimation. In summary, SGDL represents a novel approach that integrates DL with geologic data, offering significant enhancements in property estimation accuracy within the field of seismic inversion.


ISSN: 0016-8033
EISSN: 1942-2156
Coden: GPYSA7
Serial Title: Geophysics
Serial Volume: 89
Serial Issue: 4
Title: Inversion with stratigraphy-guided deep learning
Affiliation: Ragnarock Geo, Oslo, Norway
Pages: R377-R386
Published: 202408
Text Language: English
Publisher: Society of Exploration Geophysicists, Tulsa, OK, United States
References: 75
Accession Number: 2024-053460
Categories: Applied geophysicsEconomic geology, geology of energy sources
Document Type: Serial
Bibliographic Level: Analytic
Illustration Description: illus. incl. sects., 3 tables, sketch map
N51°00'00" - N61°10'00", W04°00'00" - E11°00'00"
Secondary Affiliation: Institute for Energy Technology, NOR, Norway
Country of Publication: United States
Secondary Affiliation: GeoRef, Copyright 2024, 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: 2024
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