A Robust Machine Learning Algorithm for the Prediction of Methane Adsorption in Nanoporous Materials

被引:59
|
作者
Fanourgakis, George S. [1 ]
Gkagkas, Konstantinos [3 ]
Tylianakis, Emmanuel [2 ]
Klontzas, Emmanuel [1 ,4 ]
Froudakis, George [1 ]
机构
[1] Univ Crete, Dept Chem, Voutes Campus, GR-70013 Iraklion, Greece
[2] Univ Crete, Dept Mat Sci & Technol, Voutes Campus, GR-70013 Iraklion, Greece
[3] Toyota Motor Europe NV SA, Tech Ctr, Adv Technol Div, Hoge Wei 33B, B-1930 Zaventem, Belgium
[4] Natl Hellen Res Fdn, Theoret & Phys Chem Inst, Vass Constantinou 48, GR-11635 Athens, Greece
来源
JOURNAL OF PHYSICAL CHEMISTRY A | 2019年 / 123卷 / 28期
关键词
METAL-ORGANIC FRAMEWORKS; STORAGE; TOOLS;
D O I
10.1021/acs.jpca.9b03290
中图分类号
O64 [物理化学(理论化学)、化学物理学];
学科分类号
070304 ; 081704 ;
摘要
In the present study, we propose a new set of descriptors that, along with a few structural features of nanoporous materials, can be used by machine learning algorithms for accurate predictions of the gas uptake capacities of these materials. All new descriptors closely resemble the helium atom void fraction of the material framework. However, instead of a helium atom, a particle with an appropriately defined van der Waals radius is used. The set of void fractions of a small number of these particles is found to be sufficient to characterize uniquely the structure of each material and to account for the most important topological features. We assess the accuracy of our approach by examining the predictions of the random forest algorithm in the relative small dataset of the computation-ready, experimental (CoRE) MOFs (similar to 4700 structures) that have been experimentally synthesized and whose geometrical/structural features have been accurately calculated before. We first performed grand canonical Monte Carlo simulations to accurately determine their methane uptake capacities at two different temperatures (280 and 298 K) and three different pressures (1, 5.8, and 65 bar). Despite the high chemical and structural diversity of the CoRE MOFs, it was found that the use of the proposed descriptors significantly improves the accuracy of the machine learning algorithm, particularly at low pressures, compared to the predictions made based solely on the rest structural features. More importantly, the algorithm can be easily adapted for other types of nanoporous materials beyond MOFs. Convergence of the predictions was reached even for small training set sizes compared to what was found in previous works using the hypothetical MOF database.
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页码:6080 / 6087
页数:8
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