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A Universal Machine Learning Algorithm for Large-Scale Screening of Materials

机译:用于材料大规模筛选的通用机器学习算法

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Application of machine learning (ML) methods for the determination of the gas adsorption capacities of nanomateri-als, such as metal—organic frameworks (MOF), has been extensively investigated over the past few years as a computationally efficient alternative to time-consuming and computationally demanding molecular simulations. Depending on the thermodynamic conditions and the adsorbed gas, ML has been found to provide very accurate results. In this work, we go one step further and we introduce chemical intuition in our descriptors by using the "type" of the atoms in the structure, instead of the previously used building blocks, to account for the chemical character of the MOF. ML predictions for the methane and carbon dioxide adsorption capacities of several tens of thousands of hypothetical MOFs are evaluated at various thermodynamic conditions using the random forest algorithm. For all cases examined, the use of atom types instead of building blocks leads to significantly more accurate predictions, while the number of MOFs needed for the training of the ML algorithm in order to achieve a specified accuracy can be reduced by an order of magnitude. More importandy, since practically there are an unlimited number of building blocks that materials can be made of but a limited number of atom types, the proposed approach is more general and can be considered as universal. The universality and transferability was proved by predicting the adsorption properties of a completely different family of materials after the training of the ML algorithm in MOFs.
机译:机器学习(ML)方法在确定诸如金属有机骨架(MOF)之类的纳米材料的气体吸附能力方面的应用已在过去的几年中进行了广泛的研究,作为计算效率高的替代耗时的方法。计算要求很高的分子模拟。根据热力学条件和吸附的气体,发现ML可提供非常准确的结果。在这项工作中,我们进一步走了一步,我们通过使用结构中原子的“类型”(而不是先前使用的构建基块)来说明MOF的化学特征,从而在描述符中引入了化学直觉。使用随机森林算法在各种热力学条件下评估了成千上万个假设MOF的甲烷和二氧化碳吸附能力的ML预测。对于所有检查的情况,使用原子类型代替构造块都可以显着提高预测的准确性,而训练ML算法以达到指定的准确性所需的MOF数量可以减少一个数量级。更重要的是,由于实际上可以制造材料的材料数量不限,但是原子类型的数量却有限,因此所提出的方法更为通用,可以被认为是通用的。在MOF中训练ML算法后,通过预测完全不同的材料族的吸附特性证明了通用性和可转移性。

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    《Journal of the American Chemical Society》 |2020年第8期|3814-3822|共9页
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  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);美国《化学文摘》(CA);
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  • 正文语种 eng
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