De-risking Carbon Capture and Sequestration with Explainable CO2 Leakage
Detection in Time-lapse Seismic Monitoring Images
- URL: http://arxiv.org/abs/2212.08596v1
- Date: Fri, 16 Dec 2022 17:22:51 GMT
- Title: De-risking Carbon Capture and Sequestration with Explainable CO2 Leakage
Detection in Time-lapse Seismic Monitoring Images
- Authors: Huseyin Tuna Erdinc, Abhinav Prakash Gahlot, Ziyi Yin, Mathias
Louboutin, Felix J. Herrmann
- Abstract summary: We introduce a binary classification of time-lapse seismic images to delineate CO2 plumes (leakage) using state-of-the-art deep learning models.
We also localize the leakage region of CO2 plumes by leveraging Class Activation Mapping methods.
- Score: 2.021175152213487
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: With the growing global deployment of carbon capture and sequestration
technology to combat climate change, monitoring and detection of potential CO2
leakage through existing or storage induced faults are critical to the safe and
long-term viability of the technology. Recent work on time-lapse seismic
monitoring of CO2 storage has shown promising results in its ability to monitor
the growth of the CO2 plume from surface recorded seismic data. However, due to
the low sensitivity of seismic imaging to CO2 concentration, additional
developments are required to efficiently interpret the seismic images for
leakage. In this work, we introduce a binary classification of time-lapse
seismic images to delineate CO2 plumes (leakage) using state-of-the-art deep
learning models. Additionally, we localize the leakage region of CO2 plumes by
leveraging Class Activation Mapping methods.
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