Prediction of Methane Adsorption Isotherms in Metal-Organic Frameworks by Neural Networks: Two-Dimensional Energy Gradient Feature and Masked Learning Mechanism.

IF 2.9 2区 化学 Q3 CHEMISTRY, PHYSICAL
Meng-En Dong, Xuanjun Wu, Weiquan Cai
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引用次数: 0

Abstract

Metal-organic frameworks (MOFs) have shown great application potential in the field of energy gas storage and separation due to their unique tunable porosity and pore environment. Accurate prediction of the methane adsorption isotherms of MOF materials at different temperatures is crucial for optimizing and designing their methane storage and separation processes. In this work, we proposed a novel multioutput neural network (NN) model for rapidly predicting CH4 adsorption isotherms in a large number of MOFs at different temperatures. The model can be trained using a masked learning mechanism, with inputs such as two-dimensional energy gradient feature (2D-EGF) descriptors, geometrical property descriptors and chemical information descriptors of MOFs. Initially, the methane adsorption isotherms for 17,644 MOFs materials at various temperatures (278-338 K) were calculated using classical density functional theory (cDFT), and the parameters of the extended Langmuir equation (3P and 4P) were obtained through nonlinear fitting. The entire data set, comprising 64,092 samples, was split into a training set and a test set at a ratio of 8:2 for the purpose of training and validating a neural network model. The model was constructed with multiple outputs, including methane adsorption capacities at 21 pressure points and the parameters of the extended Langmuir equation (3P and 4P). The results show that both the 4P and 3P models achieve the optimal prediction accuracy when the unmasked probability parameter p was set to 0.6. The SHAP values analysis demonstrates that the geometrical features exhibit the most significant impact on the targets at all pressures, except for temperature variation (TK). The models' transferability was evaluated by comparing their prediction accuracy across three additional scenarios: unseen MOFs at the same temperature, seen MOFs at extended temperatures, and experimental MOFs at room temperature. The model can accurately predict the methane adsorption isotherms of unseen hypothetical MOFs under the same temperature conditions. Additionally, the models' predictions of the methane adsorption isotherms for known MOFs at extended temperatures (268 and 358 K) are essentially consistent with the results of cDFT simulations. However, the model still exhibits significant deviations in its prediction of the methane adsorption isotherms in four experimental MOFs at room temperature when compared to the experimental data. The neural network approach is expected to act as a versatile and precise tool for predicting gas adsorption equilibrium data in MOFs, which is crucial for significant gas separation processes.

基于神经网络的金属-有机骨架中甲烷吸附等温线预测:二维能量梯度特征和掩蔽学习机制。
金属有机骨架材料由于其独特的可调孔隙度和孔隙环境,在能源气体储存和分离领域显示出巨大的应用潜力。准确预测MOF材料在不同温度下的甲烷吸附等温线对于优化和设计MOF材料的甲烷储存和分离工艺至关重要。在这项工作中,我们提出了一种新的多输出神经网络(NN)模型,用于快速预测不同温度下大量mof中CH4的吸附等温线。该模型可以使用一种掩蔽学习机制,输入mof的二维能量梯度特征(2D-EGF)描述符、几何性质描述符和化学信息描述符。首先,利用经典密度泛函理论(cDFT)计算了17644种mof材料在不同温度(278 ~ 338 K)下的甲烷吸附等温线,并通过非线性拟合得到了扩展Langmuir方程(3P和4P)的参数。整个数据集包括64092个样本,按照8:2的比例分成训练集和测试集,用于训练和验证神经网络模型。该模型建立了多个输出,包括21个压力点的甲烷吸附量和扩展的Langmuir方程(3P和4P)参数。结果表明,当揭开概率参数p为0.6时,4P和3P模型的预测精度均达到最佳。SHAP值分析表明,除温度变化(TK)外,几何特征在所有压力下对目标的影响最为显著。通过比较模型在另外三种情况下的预测精度来评估模型的可转移性:相同温度下的未见mof,延长温度下的可见mof和室温下的实验mof。该模型能准确预测未见假想mof在相同温度条件下的甲烷吸附等温线。此外,模型对已知mof在延长温度(268和358 K)下的甲烷吸附等温线的预测与cDFT模拟的结果基本一致。然而,与实验数据相比,该模型对四种实验mof在室温下的甲烷吸附等温线的预测仍存在明显偏差。神经网络方法有望成为预测mof中气体吸附平衡数据的通用和精确工具,这对重要的气体分离过程至关重要。
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来源期刊
CiteScore
5.80
自引率
9.10%
发文量
965
审稿时长
1.6 months
期刊介绍: An essential criterion for acceptance of research articles in the journal is that they provide new physical insight. Please refer to the New Physical Insights virtual issue on what constitutes new physical insight. Manuscripts that are essentially reporting data or applications of data are, in general, not suitable for publication in JPC B.
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