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Energy-based descriptors to rapidly predict hydrogen storage in metal-organic frameworks?

机译:能源为基础描述符快速预测储氢在有机框架?

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摘要

The low volumetric density of hydrogen is a major limitation to its use as a transportation fuel. Filling a fuel tank with nanoporous materials, such as metal-organic frameworks (MOFs), could greatly improve the de- liverable capacity of these tanks if appropriate materials could be found. However, since MOFs can be made from many combinations of metal nodes, organic linkers, and functional groups, the design space of possible MOFs is enormous. Experimental characterization of thousands of MOFs is infeasible, and even conventional molecular simulations can be prohibitively expensive for large databases. In this work, we have developed a data-driven approach to accelerate materials screening and learn structure-property re- lationships. We report new descriptors for gas adsorption in MOFs derived from the energetics of MOF- guest interactions. Using the bins of an energy histogram as features, we trained a sparse regression model to predict gas uptake in multiple MOF databases to an accuracy within 3 g L~(?1) . The interpretable model pa- rameters indicate that a somewhat weak attraction between hydrogen and the framework is ideal for cryo- genic storage and release. Our machine learning method is more than three orders of magnitude faster than conventional molecular simulations, enabling rapid exploration of large numbers of MOFs. As a case study, we applied the method to screen a database of more than 50000 experimental MOF structures. We experimentally validated one of the top candidates identified from the accelerated screening, MFU-4 . This material exhibited a hydrogen deliverable capacity of 47 g L~(?1) (54 g L~(?1) simulated) when operating at stor- age conditions of 77 K, 100 bar and delivery at 160 K, 5 bar.
机译:氢是一个主要的体积密度低限制它的使用作为运输燃料。填补油箱与纳米多孔材料,如有机框架(mof)大大提高de - liverable能力这些坦克如果合适材料发现。金属的组合节点,有机基团、和官能团,设计空间的可能财政部是巨大的。成千上万的mof是不可行的,甚至传统的分子模拟昂贵的大型数据库。这项工作,我们开发出了一种数据驱动的方法筛选和加速材料学习组织性能re -现状。新报告描述符mof的气体吸附来自财政部的能量——客人交互。直方图作为特征,我们训练的稀疏回归模型预测气体吸收在3 g多个MOF数据库的准确性L ~(? 1)。表明一种弱之间的吸引力氢和框架非常适合低温-基因的存储和释放。方法三个数量级以上速度比传统的分子模拟使大量的快速勘探财政部。屏幕上的数据库超过50000个实验财政部的结构。的热门候选人确认加速筛查,MFU-4。表现出一个氢47 g交付能力L ~ (? 1) (54 g L ~(? 1)模拟)操作时大的- 77 K的年龄条件,100酒吧交付在160 K, 5条。

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