Skip to Main Content
Skip Nav Destination
GEOREF RECORD

Ground-truth-calibrated onshore and offshore subsurface infrastructure image from deep-learning-based 3D inversion of magnetic data

Souvik Mukherjee, Jacques Y. Guigne, Gary N. Young, Santi Adavani, Kevin Kennelley, Dillon Hoffmann, Harshit Shukla, Ronald S. Bell and William N. Barkhouse
Ground-truth-calibrated onshore and offshore subsurface infrastructure image from deep-learning-based 3D inversion of magnetic data (in Near-surface geophysics in the energy transition, Chester J. Weiss (prefacer))
Leading Edge (Tulsa, OK) (March 2025) 44 (3): 187-205

Abstract

In this study, we demonstrate the application of deep-learning-based 3D inversion of magnetic data to image subsurface infrastructure. We highlight results from two case studies: an onshore survey at Texas A&M University's Rellis Campus site and an offshore survey in the northern Gulf of Mexico (GOM), off the coast of Louisiana. The onshore case utilized drone-acquired magnetic data to map buried utilities before construction. The offshore case employed a boat-towed magnetometer approximately 3.5 m above the seafloor to locate oil well conductors disrupted by Hurricane Ivan in 2004 and presently buried under 35 to 45 m of sediment. The inversion results at the Rellis site were validated against excavation data, revealing strong agreement in target location and depth (within 17 cm). In the GOM survey, the artificial intelligence (AI)-driven inversion successfully extended conductor imaging beyond the limits of acoustic methods, providing critical information on conductor geometry near the well conductor bay. This work highlights the effectiveness of AI-driven inversion techniques in enhancing subsurface imaging, offering cost-effective and scalable solutions for applications in utility mapping, environmental monitoring, and hazard assessment. The results demonstrate that AI-based workflows can be adapted to various geophysical settings, providing new opportunities for high-resolution imaging of complex subsurface features in onshore and offshore environments.


ISSN: 1070-485X
EISSN: 1938-3789
Serial Title: Leading Edge (Tulsa, OK)
Serial Volume: 44
Serial Issue: 3
Title: Ground-truth-calibrated onshore and offshore subsurface infrastructure image from deep-learning-based 3D inversion of magnetic data
Title: Near-surface geophysics in the energy transition
Affiliation: EmPact-AI, Houston, TX, United States
Affiliation: Sandia National Laboratories, Geophysics Department, Albuquerque, NM, United States
Pages: 187-205
Published: 202503
Text Language: English
Publisher: Society of Exploration Geophysicists, Tulsa, OK, United States
References: 42
Accession Number: 2025-034071
Categories: Applied geophysics
Document Type: Serial
Bibliographic Level: Analytic
Illustration Description: illus. incl. 2 tables, sketch map
N29°00'00" - N33°00'00", W94°04'60" - W89°00'00"
N18°00'00" - N30°04'00", W98°00'00" - W80°30'00"
Secondary Affiliation: Kraken Robotics, CAN, CanadaTexas A&M Transportation Institute, USA, United StatesS2 Labs, USA, United StatesCouvillion Group, USA, United StatesDrone Geosciences, USA, United States
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

or Create an Account

Close Modal
Close Modal