Machine learning accelerates high throughput design and screening of MOF mixed-matrix membranes towards He separation

Jiasheng Wu, Yanan Guo, Guozhen Liu, Gongping Liu, Wanqin Jin

科研成果: 期刊稿件文章同行评审

摘要

Helium (He) is a non-renewable resource and membrane technology shows great potential for separating He from natural gas. Mixed matrix membrane (MMM) is a promising candidate for He separation, while the design of MMMs is still in the stage of “trial and error” due to the wide variety of fillers and complex membrane structures. In this work, we report machine learning accelerated high throughput design and screening of mixed matrix membranes. High throughput grand canonical Monte Carlo calculations and molecular dynamics simulations were performed to calculate the reliable structure and performance features of thousands of MOFs fillers. The high throughput computational data were combined with experimental data of polymer membranes to construct a big dataset of 456,872 MMMs. Four machine learning regression models were trained to predict the permeation and the separation performances and to reveal the underlying structure-performance relationships of MMMs. Our studies show that the XGBoost model has the best performance indicated by high R2 value and lower RMSE and MAE values compared with the other models. The thorough data-driven model interpretation quantitatively revealed the key properties and structural parameters for fabricating MMMs with high He/CH4 separation performance: for polymer matrices, S1He/CH4 > 900, P1He > 1600 Barrer and P1CH4 as low as possible; meanwhile for MOF fillers, porosity (ɸ) > 0.5 and 2.6 Å < PLD <3.2 Å. The XGBoost model shows good transferability on the dataset constructed from the hypothetical MOFs. This work provides guidance for designing He separation membranes.

源语言英语
文章编号123612
期刊Journal of Membrane Science
717
DOI
出版状态已出版 - 2月 2025

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