2019
DOI: 10.26434/chemrxiv.7987475.v1
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Inverse Design in Porous Materials Using Artificial Neural Networks

Abstract: Generating optimal nanomaterials using artificial neural networks can potentially lead to a significant revolution in future materials design. Although progress has been made in creating small and simple molecules, complex materials such as crystalline porous materials have yet to be generated using any of the neural networks. In this work, we have for the first time implemented a generative adversarial network that uses a training set of 31,713 known zeolites to produce 14 crystalline porous materials. Our ne… Show more

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