Connect the Dots: In Situ 4D Seismic Monitoring of CO2 Storage with Spatio-temporal CNNs
Shihang Feng, Xitong Zhang, Brendt Wohlberg, Neill Symons, Youzuo, Lin

TL;DR
This paper introduces spatio-temporal CNN models that interpolate and extrapolate 4D seismic data for CO2 storage monitoring, enabling real-time insights despite sparse data collection.
Contribution
The authors develop novel neural network models combining autoencoders, LSTMs, and optical flow regularization to improve seismic data interpolation and forecasting.
Findings
Models outperform baseline approaches in accuracy.
Expert evaluations favor the proposed models.
High-quality seismic images can be generated efficiently.
Abstract
4D seismic imaging has been widely used in CO sequestration projects to monitor the fluid flow in the volumetric subsurface region that is not sampled by wells. Ideally, real-time monitoring and near-future forecasting would provide site operators with great insights to understand the dynamics of the subsurface reservoir and assess any potential risks. However, due to obstacles such as high deployment cost, availability of acquisition equipment, exclusion zones around surface structures, only very sparse seismic imaging data can be obtained during monitoring. That leads to an unavoidable and growing knowledge gap over time. The operator needs to understand the fluid flow throughout the project lifetime and the seismic data are only available at a limited number of times. This is insufficient for understanding the reservoir behavior. To overcome those challenges, we have developed…
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