High-resolution imaging of subsurface infrastructure using deep learning artificial intelligence on drone magnetometry

Author:

Mukherjee Souvik1,Bell Ronald S.2,Barkhouse William N.3,Adavani Santi4,Lelièvre Peter G.5,Farquharson Colin G.6

Affiliation:

1. EmPact-AI, Houston, Texas, USA..

2. Drone Geoscience, Denver, Colorado, USA..

3. Drone Geoscience, Houston, Texas, USA..

4. RocketML, Portland, Oregon, USA..

5. Mount Allison University, New Brunswick, Canada..

6. Memorial University of Newfoundland, St. John's, Newfoundland and Labrador, Canada..

Abstract

The use of drones fo r geophysical data acquisition and artificial intelligence (AI) for geophysical data processing, imaging, and interpretation are active focus areas in current industry and academic applications. Unlocking their cumulative potential in single-focus applications can have a transformative impact, possibly leading to dramatic cost reductions in key use cases and new application areas for enhanced actionable business intelligence. We present field study results from Texas and California that show the potential for imaging pipelines and other subsurface infrastructure by using AI-based methods on high-resolution aboveground magnetic data. The superior resolution and interpretability over conventional geophysical inversion is demonstrated. The method has the potential to provide actionable intelligence in several business-use cases for detecting and characterizing pipelines, crossing zones for multiple pipes, etc. at dramatically reduced costs. The advanced algorithms and workflows used resulted in a 100-fold increase in efficiency and delivered results in two days compared to what could take several months using generally available open-source deep learning AI workflows and software. Future direction of development is to validate against excavation-/drill-bit-/inline-tool-based ground truth and further extend and develop this process to deliver near real-time results. The techniques used are general and can be applied to other geophysical data including seismic, electromagnetic, and gravity at various scales and resolution.

Publisher

Society of Exploration Geophysicists

Subject

Geology,Geophysics

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4. Bell, R. S., 2018, Using drones for exploration geoscience — Will it really make a difference? http://pttc.mines.edu/drones.pdf, accessed 26 May 2022.

5. Bell, R. S., 2021, geoDRONEology, https://www.dronegeosci.com/, accessed 26 May 2022.

Cited by 2 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Application of the transfer learning method in multisource geophysical data fusion;Journal of Geophysics and Engineering;2023-02-28

2. A Review on Multirotor UAV-based Magnetic Surveys for Near-Surface Targets;Journal of the Korean Society of Mineral and Energy Resources Engineers;2022-10-31

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