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金属有机骨架中气体混合物吸附的密度泛函理论。

Density functional theory for adsorption of gas mixtures in metal-organic frameworks.

机构信息

State Key Laboratory of Chemical Engineering and Department of Chemistry, East China University of Science and Technology, Shanghai 200237, China.

出版信息

J Phys Chem B. 2010 Mar 4;114(8):2820-7. doi: 10.1021/jp9104932.

Abstract

In this work, a recently developed density functional theory in three-dimensional space was extended to the adsorption of gas mixtures. Weighted density approximations to the excess free energy with different weighting functions were adopted for both repulsive and attractive contributions. An equation of state for hard-sphere mixtures and a modified Benedict-Webb-Rubin equation for Lennard-Jones mixtures were used to estimate the excess free energy of a uniform fluid. The theory was applied to the adsorption of CO(2)/CH(4) and CO(2)/N(2) mixtures in two metal-organic frameworks: ZIF-8 and Zn(2)(BDC)(2)(ted). To validate the theoretical predictions, grand canonical Monte Carlo simulations were also conducted. The predicted adsorption and selectivity from DFT were found to agree well with the simulation results. CO(2) has stronger adsorption than CH(4) and N(2), particularly in Zn(2)(BDC)(2)(ted). The selectivity of CO(2) over CH(4) or N(2) increases with increasing pressure as attributed to the cooperative interactions of adsorbed CO(2) molecules. The composition of the gas mixture exhibits a significant effect on adsorption but not on selectivity.

摘要

在这项工作中,我们将最近开发的三维空间密度泛函理论扩展到了混合气体的吸附研究中。我们采用了不同权函数的加权密度近似方法来处理排斥和吸引贡献。硬球混合物的状态方程和修正后的 Lennard-Jones 混合物的 Benedict-Webb-Rubin 方程被用来估计均匀流体的超额自由能。我们将该理论应用于二氧化碳/甲烷和二氧化碳/氮气在两种金属有机骨架材料:ZIF-8 和 Zn(2)(BDC)(2)(ted)中的吸附研究。为了验证理论预测,我们还进行了巨正则蒙特卡罗模拟。结果表明,DFT 预测的吸附和选择性与模拟结果吻合良好。与甲烷和氮气相比,二氧化碳在两种材料中的吸附更强,尤其是在 Zn(2)(BDC)(2)(ted)中。随着压力的增加,二氧化碳相对于甲烷或氮气的选择性增加,这归因于吸附二氧化碳分子的协同相互作用。混合气组成对吸附有显著影响,但对选择性没有影响。

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