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Evaluating machine learning-predicted subsurface properties via seismic data reconstruction

Tao Zhao, Haibin Di and Aria Abubakar
Evaluating machine learning-predicted subsurface properties via seismic data reconstruction
Geophysics (December 2024) 89 (6): R509-R519

Abstract

In recent years, machine-learning (ML) approaches have gained significant attention in seismic-based subsurface property estimation problems. However, because of the data-driven nature of these methods, it is challenging to evaluate the quality of the estimated properties in regions without ground-truth data. In this paper, we discuss evaluating the quality of ML-predicted subsurface properties through ML-based seismic data reconstruction. We use a deep-learning workflow to reconstruct the poststack seismic data, then use the misfit between the measured data and the reconstructed data as a proxy for the quality of ML-predicted subsurface properties. We also use self-supervised learning to improve the model generalization when training the deep-learning model for reconstruction. Our method is particularly valuable for subsurface properties without direct physical relation to seismic data. We provide synthetic and field data examples to demonstrate the consistency of our method.


ISSN: 0016-8033
EISSN: 1942-2156
Coden: GPYSA7
Serial Title: Geophysics
Serial Volume: 89
Serial Issue: 6
Title: Evaluating machine learning-predicted subsurface properties via seismic data reconstruction
Affiliation: SLB, Houston, TX, United States
Pages: R509-R519
Published: 202412
Text Language: English
Publisher: Society of Exploration Geophysicists, Tulsa, OK, United States
References: 27
Accession Number: 2024-076595
Categories: Economic geology, geology of energy sourcesApplied geophysics
Document Type: Serial
Bibliographic Level: Analytic
Illustration Description: illus. incl. 2 tables, sects.
N53°04'60" - N54°00'00", E06°19'60" - E07°04'60"
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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