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Advanced CO2 Sequestration Analysis in Geological Reservoirs
  • +2
  • Yueqian Cao,
  • Zhikai Liang,
  • Meiqin Che,
  • Jieqiong Luo,
  • Youwen Sun
Yueqian Cao
School of Transportation and Civil Engineering, Nantong University
Author Profile
Zhikai Liang
School of Artificial Intelligence and Computing, Nantong University
Meiqin Che
School of Transportation and Civil Engineering, Nantong University
Jieqiong Luo
School of Transportation and Civil Engineering, Nantong University
Youwen Sun
Anhui Institute of Optics and Fine Mechanics, Key Laboratory of Environmental Optics and Technology, HFlPS, Chinese Academy of Sciences

Corresponding Author:

Abstract

Mitigating rising atmospheric CO₂ levels is critical to addressing climate change, and geological carbon storage in saline aquifers is a promising solution. This study develops and evaluates three deep learning modelsdeep neural network (DNN), gated recurrent unit (GRU), and recurrent neural network (RNN)to predict the residual trapping index (RTI) and solubility trapping index (STI) via diverse reservoir datasets. The GRU model outperformed both DNN and RNN, particularly in handling long-term dependencies and minimizing error, while DNN showed robust accuracy through effective modeling of complex nonlinear relationships. In contrast, RNN exhibited challenges with gradient instability, affecting its prediction performance. Sensitivity analysis highlighted the significance of input variables like post injection and injection rate, with DNN showing greater dependence on these features. Excluding these variables reduced predictive accuracy, especially for RTI. These findings suggest that GRU is the most effective for predicting CO₂ trapping, offering a valuable tool for optimizing carbon storage strategies and supporting global carbon reduction efforts.
11 Sep 2024Submitted to ESS Open Archive
17 Sep 2024Published in ESS Open Archive