Kunhuan Liu, Haoyuan Chen, Timur Islamoglu, Andrew S. Rosen, Xijun Wang, Omar K. Farha and Randall Q. Snurr
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引用次数: 0
摘要
金属有机框架(mof)是一种很有前途的可调储氢材料。对于低温操作条件下的应用,由于在体积可交付容量(VDC)和重量可交付容量(GDC)之间进行权衡,过去的工作遇到了性能上限。在这项研究中,我们基于529网计算构建和筛选了105 230个MOF结构,以探索底层拓扑对所得材料储氢性能的影响。基于模拟的氢气吸收,开发了一个机器学习模型,以促进整个数据集的筛选,并成功识别出前10%的材料,其均方根误差约为1 g L−1,随后的大规范蒙特卡罗模拟验证了这一点。我们确定了一种基于tsx拓扑的有前途的结构,其VDC和GDC均高于当前的基准材料MOF-5。我们的数据驱动分析表明,净密度较高的网产生的mof具有增强的体积和重量表面积,从而提高最大VDC,同时将容量权衡转移到更高的GDC。
Computational investigation of the impact of metal–organic framework topology on hydrogen storage capacity†
Metal–organic frameworks (MOFs) are promising, tunable materials for hydrogen storage. For application under cryogenic operating conditions, past work has run into a ceiling on performance due to a trade-off in the volumetric deliverable capacity (VDC) versus the gravimetric deliverable capacity (GDC). In this study, we computationally constructed and screened 105 230 MOF structures based on 529 nets to explore the effect of underlying topology on the hydrogen storage performance of the resulting materials. A machine learning model was developed based on simulated hydrogen uptake to facilitate screening of the entire dataset, and it successfully identified the top 10% of materials with a root-mean-square error of approximately 1 g L−1 as validated by subsequent grand canonical Monte Carlo simulations. We identified a promising structure based on the tsx topology that exhibits both VDC and GDC higher than the current benchmark material, MOF-5. Our data-driven analysis indicates that nets with higher net density yield MOFs with enhanced volumetric and gravimetric surface areas, thereby improving maximum VDC while shifting the capacity trade-off toward higher GDC.
期刊介绍:
Molecular Systems Design & Engineering provides a hub for cutting-edge research into how understanding of molecular properties, behaviour and interactions can be used to design and assemble better materials, systems, and processes to achieve specific functions. These may have applications of technological significance and help address global challenges.