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A multiscale framework combining pore-level thermodynamics and process simulation via Bayesian-informed deep learning for CO2 adsorption

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Figshare2026-01-12 更新2026-04-28 收录
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https://figshare.com/articles/dataset/A_multiscale_framework_combining_pore-level_thermodynamics_and_process_simulation_via_Bayesian-informed_deep_learning_for_CO_sub_2_sub_adsorption/31047504
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Accurate modeling of carbon dioxide (CO2) adsorption units under high-pressure conditions requires the integration of mass, energy, and momentum balances with a rigorous thermodynamic description of adsorption equilibrium. In this context, this work proposes a multiscale framework in which pore-level thermodynamics are provided by an extended Peng–Robinson equation of state for confined fluids (PR-C), supported by high-pressure adsorption data experimentally obtained using a Magnetic Suspension Balance (MSB). The PR-C confinement parameters are estimated through Bayesian inference, enabling the quantification of uncertainty and the generation of statistically significant adsorption equilibrium datasets. These datasets are then used to train a Deep Neural Network (DNN) surrogate model that preserves the physical behavior captured by the PR-C formulation while introducing uncertainty quantification through dropout-based neural networks within macroscopic fixed-bed simulations. The proposed framework achieved good agreement with experimental isotherms and benchmark breakthrough data, reaching a coefficient of determination (R2) of 0.9986 across cross-validation folds. Simulation results highlight the influence of operating conditions, such as pressure, temperature, and feed composition on adsorption equilibrium and system dynamics. Overall, the methodology offers a robust and efficient platform for adsorption process modeling, with direct applicability to process optimization, risk assessment, and the development of CO2 capture technologies.
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2026-01-12
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