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Discovering Relationships between OSDAs and Zeolites through Data Mining and Generative Neural Networks

机译:通过数据挖掘和生成神经网络发现OSDAS和Zeolites之间的关系

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Organic structure directing agents (OSDAs) play a crucial role in the synthesis of micro- and mesoporous materials especially in the case of zeolites. Despite the wide use of OSDAs, their interaction with zeolite frameworks is poorly understood, with researchers relying on synthesis heuristics or computationally expensive techniques to predict whether an organic molecule can act as an OSDA for a certain zeolite. In this paper, we undertake a data-driven approach to unearth generalized OSDA–zeolite relationships using a comprehensive database comprising of 5,663 synthesis routes for porous materials. To generate this comprehensive database, we use natural language processing and text mining techniques to extract OSDAs, zeolite phases, and gel chemistry from the scientific literature published between 1966 and 2020. Through structural featurization of the OSDAs using weighted holistic invariant molecular (WHIM) descriptors, we relate OSDAs described in the literature to different types of cage-based, small-pore zeolites. Lastly, we adapt a generative neural network capable of suggesting new molecules as potential OSDAs for a given zeolite structure and gel chemistry. We apply this model to CHA and SFW zeolites generating several alternative OSDA candidates to those currently used in practice. These molecules are further vetted with molecular mechanics simulations to show the model generates physically meaningful predictions. Our model can automatically explore the OSDA space, reducing the amount of simulation or experimentation needed to find new OSDA candidates.
机译:有机结构指导剂(OSDAS)在沸石的情况下在微孔和中孔材料的合成中发挥至关重要的作用。尽管奥斯达斯广泛使用,但它们与沸石框架的互动知之甚少,研究人员依赖于合成启发式或计算昂贵的技术来预测有机分子是否可以用作某种沸石的OSDA。在本文中,我们使用包含5,663个合成途径的多孔材料的综合数据库进行数据驱动的奥达 - 沸石关系。为了产生这种综合数据库,我们使用自然语言处理和文本挖掘技术来提取来自1966年和2020年之间发表的科学文学的OSDAS,沸石阶段和凝胶化学。通过使用加权整体不变分子(WHIM)描述符的OSDAS的结构卵形。 ,我们将文献中描述的OSDAS联系在于不同类型的基于笼,小孔沸石。最后,我们适应一种能够向给定沸石结构和凝胶化学构成潜在OSDA的新分子的生成神经网络。我们将此模型应用于CHA和SFW Zeolites,为目前在实践中使用的候选者生成几个替代的OSDA候选人。这些分子进一步审查了分子力学模拟,以显示模型产生物理上有意义的预测。我们的模型可以自动探索OSDA空间,从而减少查找新OSDA候选所需的模拟或实验量。

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