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首页> 外文期刊>Carbon: An International Journal Sponsored by the American Carbon Society >In silico synthesis of carbon molecular sieves for high-performance air separation
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In silico synthesis of carbon molecular sieves for high-performance air separation

机译:在碳分子筛的硅合成中的高性能空气分离

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We performed nonequilibrium molecular dynamics simulations of the chemical vapor deposition (CVD) of hydrocarbons on a precursor-activated carbon model with a slit-like pore (in silico CVD simulation) to explore design guidelines for the synthesis of high-performance carbon molecular sieves (CMSs) for airseparation purposes. The dependence of the CVD process on gas species was investigated using "unitedatom" hydrocarbons mimicking ethylene, benzene, toluene, and mesitylene. The obtained CMS models were then used to evaluation the diffusion rate constants of O-2 and N-2 using the transition state theory. We also constructed idealized carbon pore structures that extracted the characteristics of the CMS models obtained via the in silico CVD simulations to understand the relation between the size and geometry of pore mouths, diffusion rate constants, and kinetic O-2 selectivity. We found that most of the simulated results were supported by experimental evidence. Furthermore, we conclude that a high-performance CMS for air separation requires the development of thin amorphous carbon at the pore mouths of the precursor-activated carbon by CVD, which provides a single energy barrier for O-2 diffusion and effectively prevents the formation of multiple energy barriers. (C) 2018 Elsevier Ltd. All rights reserved.
机译:我们在前体活性炭模型(在硅CVD仿真中)对碳氢化合物的化学气相沉积(CVD)的化学气相沉积(CVD)进行了非正式分子动力学模拟,以探索合成高性能碳分子筛的设计指南(用于空调目的的CMS。使用“面包”碳氢化合物模仿乙烯,苯,甲苯和乙烯,研究了CVD方法对气体物种的依赖性。然后使用所获得的CMS模型来评估使用过渡状态理论的O-2和N-2的扩散速率常数。我们还构造了理想化的碳孔结构,其提取通过硅CVD模拟中获得的CMS模型的特性,以了解孔口,扩散速率常数和动力学O-2选择性之间的尺寸和几何形状之间的关系。我们发现大多数模拟结果得到了实验证据的支持。此外,我们得出结论,空气分离的高性能CMS需要通过CVD在前体活性炭的孔口处开发薄无定形碳,这为O-2扩散提供了单一能量屏障,有效地防止了形成多种能量障碍。 (c)2018年elestvier有限公司保留所有权利。

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