Time-lapse seismic data inversion for estimating reservoir parameters using deep learning

Author:

Kaur Harpreet1ORCID,Zhong Zhi2,Sun Alexander3,Fomel Sergey3ORCID

Affiliation:

1. The University of Texas at Austin, Bureau of Economic Geology, John A. and Katherine G. Jackson School of Geosciences, University Station, Box X, Austin, Texas 78713-8924, USA. (corresponding author)

2. China University of Geosciences, Wuhan 430074, China.

3. The University of Texas at Austin, Bureau of Economic Geology, John A. and Katherine G. Jackson School of Geosciences, University Station, Box X, Austin, Texas 78713-8924, USA.

Abstract

Geologic carbon sequestration involves the injection of captured carbon dioxide ([Formula: see text]) into subsurface formations for long-term storage. The movement and fate of the injected [Formula: see text] plume is of great concern to regulators because monitoring helps to identify potential leakage zones and determines the possibility of safe long-term storage. To address this concern, we design a deep-learning framework for [Formula: see text] saturation monitoring to determine the geologic controls on the storage of the injected [Formula: see text]. We use different combinations of porosities and permeabilities for a given reservoir to generate saturation and velocity models. We train the deep-learning model with a few time-lapse seismic images and their corresponding changes in saturation values for a particular [Formula: see text] injection site. The deep-learning model learns the mapping from the change in the time-lapse seismic response to the change in [Formula: see text] saturation during the training phase. We then apply the trained model to data sets comprising different time-lapse seismic image slices (corresponding to different time instances) generated using different porosity and permeability distributions that are not part of the training to estimate the [Formula: see text] saturation values along with the plume extent. Our algorithm provides a deep-learning assisted framework for the direct estimation of [Formula: see text] saturation values and plume migration in heterogeneous formations using the time-lapse seismic data. Our method improves the efficiency of time-lapse inversion by streamlining the large number of intermediate steps in the conventional time-lapse inversion workflow. This method also helps to incorporate the geologic uncertainty for a given reservoir by accounting for the statistical distribution of porosity and permeability during the training phase. Tests on different examples verify the effectiveness of our approach.

Funder

Department of Energy National Energy Technology Laboratory

Publisher

Society of Exploration Geophysicists

Subject

Geology,Geophysics

Cited by 12 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. GeosPIn: A MATLAB library for geostatistical petrophysical inversion;GEOPHYSICS;2024-06-28

2. Time-Lapse One-Step Least-Squares Migration;IEEE Geoscience and Remote Sensing Letters;2024

3. Deep Learning Study on Seismic Data Interpretation Method;Springer Series in Geomechanics and Geoengineering;2024

4. A denoising diffusion probabilistic modeling approach for predicting CO2 plume evolution from seismic shot gathers;Third International Meeting for Applied Geoscience & Energy Expanded Abstracts;2023-12-14

5. Multiparameter Inversion of Reservoirs Based on Deep Learning;SPE Journal;2023-08-04

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