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基于粒子群优化算法评估石墨炔的碳捕获性能

On assessing the carbon capture performance of graphynes with particle swarm optimization.

作者信息

Rajeevan Megha, John Chris, Swathi Rotti Srinivasamurthy

机构信息

School of Chemistry, Indian Institute of Science Education and Research Thiruvananthapuram (IISER TVM), Thiruvananthapuram 695 551, India.

出版信息

Phys Chem Chem Phys. 2024 Sep 11;26(35):23152-23167. doi: 10.1039/d4cp02843k.

DOI:10.1039/d4cp02843k
PMID:39189330
Abstract

Tackling climate change is one of the greatest challenges of current times and therefore the development of efficient technologies to limit anthropogenic emissions is of utmost urgency. Recent research towards this goal has alluded to the use of carbon-based solid sorbents for carbon capture. Graphynes (GYs), an interesting class of porous carbon membranes, have recently proven their potential as excellent membranes for gas adsorption and separation. Herein, we explored the CO and N adsorption characteristics and CO/N selectivities of a class of GYs, namely γ-GY-1, γ-GY-2 and γ-GY-4. We investigated the putative global minimum geometries of adsorbed unary ( = 2-10) and binary ( : ; , ∈ [1, 8]) clusters of CO and N by employing a stochastic global optimization method called particle swarm optimization in conjunction with empirical intermolecular force field formulations. The intervening interactions are modeled using various pairwise potentials, including Lennard-Jones potential, improved Lennard-Jones potential, Buckingham potential and Coulombic potential. The binding energies for both unary and binary clusters are highest for adsorption on γ-GY-1, followed by γ-GY-2. The putative global minimum geometries suggested that N molecules preferred binding over the pore centres while CO molecules showed higher clustering propensity than any binding site preference. The predicted interaction energies suggested higher selectivity for CO over N for all the three γ-GYs.

摘要

应对气候变化是当今时代最大的挑战之一,因此开发高效技术以限制人为排放迫在眉睫。近期针对这一目标的研究提到了使用碳基固体吸附剂进行碳捕获。石墨炔(GYs)是一类有趣的多孔碳膜,最近已证明其作为气体吸附和分离的优异膜材料的潜力。在此,我们探究了一类石墨炔,即γ-GY-1、γ-GY-2和γ-GY-4的CO和N吸附特性以及CO/N选择性。我们通过采用一种名为粒子群优化的随机全局优化方法并结合经验分子间力场公式,研究了吸附的一元( = 2 - 10)和二元( : ; , ∈ [1, 8])CO和N团簇的假定全局最小几何结构。中间相互作用使用各种成对势进行建模,包括 Lennard-Jones 势、改进的 Lennard-Jones 势、Buckingham 势和库仑势。对于γ-GY-1上的吸附,一元和二元团簇的结合能最高,其次是γ-GY-2。假定的全局最小几何结构表明,N分子更倾向于在孔中心结合,而CO分子表现出比任何结合位点偏好更高的聚集倾向。预测的相互作用能表明,对于所有三种γ-GY,CO对N具有更高的选择性。

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