Wang Jingqi, Liu Jiapeng, Wang Hongshuai, Zhou Musen, Ke Guolin, Zhang Linfeng, Wu Jianzhong, Gao Zhifeng, Lu Diannan
Department of Chemical Engineering, Tsinghua University, Beijing, 100084, China.
DP Technology, Beijing, 100089, China.
Nat Commun. 2024 Mar 1;15(1):1904. doi: 10.1038/s41467-024-46276-x.
Gas separation is crucial for industrial production and environmental protection, with metal-organic frameworks (MOFs) offering a promising solution due to their tunable structural properties and chemical compositions. Traditional simulation approaches, such as molecular dynamics, are complex and computationally demanding. Although feature engineering-based machine learning methods perform better, they are susceptible to overfitting because of limited labeled data. Furthermore, these methods are typically designed for single tasks, such as predicting gas adsorption capacity under specific conditions, which restricts the utilization of comprehensive datasets including all adsorption capacities. To address these challenges, we propose Uni-MOF, an innovative framework for large-scale, three-dimensional MOF representation learning, designed for multi-purpose gas prediction. Specifically, Uni-MOF serves as a versatile gas adsorption estimator for MOF materials, employing pure three-dimensional representations learned from over 631,000 collected MOF and COF structures. Our experimental results show that Uni-MOF can automatically extract structural representations and predict adsorption capacities under various operating conditions using a single model. For simulated data, Uni-MOF exhibits remarkably high predictive accuracy across all datasets. Additionally, the values predicted by Uni-MOF correspond with the outcomes of adsorption experiments. Furthermore, Uni-MOF demonstrates considerable potential for broad applicability in predicting a wide array of other properties.
气体分离对于工业生产和环境保护至关重要,金属有机框架(MOF)因其可调节的结构特性和化学成分而提供了一种有前景的解决方案。传统的模拟方法,如分子动力学,既复杂又对计算要求很高。虽然基于特征工程的机器学习方法表现更好,但由于标记数据有限,它们容易出现过拟合。此外,这些方法通常是为单一任务设计的,比如预测特定条件下的气体吸附容量,这限制了包括所有吸附容量的综合数据集的利用。为应对这些挑战,我们提出了Uni-MOF,这是一个用于大规模三维MOF表示学习的创新框架,专为多用途气体预测而设计。具体而言,Uni-MOF作为一种用于MOF材料的通用气体吸附估计器,采用从超过631,000个收集的MOF和COF结构中学习到的纯三维表示。我们的实验结果表明,Uni-MOF可以自动提取结构表示,并使用单一模型预测各种操作条件下的吸附容量。对于模拟数据,Uni-MOF在所有数据集中都表现出极高的预测准确性。此外,Uni-MOF预测的值与吸附实验的结果相符。此外,Uni-MOF在预测一系列其他属性方面显示出相当大的广泛适用性潜力。