Frontiers in Artificial Intelligence (Jan 2025)

Accelerating computational fluid dynamics simulation of post-combustion carbon capture modeling with MeshGraphNets

  • Bo Lei,
  • Yucheng Fu,
  • Jose Cadena,
  • Amar Saini,
  • Yeping Hu,
  • Jie Bao,
  • Zhijie Xu,
  • Brenda Ng,
  • Phan Nguyen

DOI
https://doi.org/10.3389/frai.2024.1441985
Journal volume & issue
Vol. 7

Abstract

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Packed columns are commonly used in post-combustion processes to capture CO2 emissions by providing enhanced contact area between a CO2-laden gas and CO2-absorbing solvent. To study and optimize solvent-based post-combustion carbon capture systems (CCSs), computational fluid dynamics (CFD) can be used to model the liquid–gas countercurrent flow hydrodynamics in these columns and derive key determinants of CO2-capture efficiency. However, the large design space of these systems hinders the application of CFD for design optimization due to its high computational cost. In contrast, data-driven modeling approaches can produce fast surrogates to study large-scale physics problems. We build our surrogates using MeshGraphNets (MGN), a graph neural network framework that efficiently learns and produces mesh-based simulations. We apply MGN to a random packed column modeled with over 160K graph nodes and a design space consisting of three key input parameters: solvent surface tension, inlet velocity, and contact angle. Our models can adapt to a wide range of these parameters and accurately predict the complex interactions within the system at rates over 1700 times faster than CFD, affirming its practicality in downstream design optimization tasks. This underscores the robustness and versatility of MGN in modeling complex fluid dynamics for large-scale CCS analyses.

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