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Inverse design of porous materials using artificial neural networks

机译:使用人工神经网络的多孔材料逆设计

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Generating optimal nanomaterials using artificial neural networks can potentially lead to a notable 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. Here, we have implemented a generative adversarial network that uses a training set of 31,713 known zeolites to produce 121 crystalline porous materials. Our neural network takes in inputs in the form of energy and material dimensions, and we show that zeolites with a user-desired range of 4 kJ/mol methane heat of adsorption can be reliably produced using our neural network. The fine-tuning of user-desired capability can potentially accelerate materials development as it demonstrates a successful case of inverse design of porous materials.
机译:使用人工神经网络产生最佳纳米材料可能导致未来材料设计中的显着革命。尽管在创造小而简单的分子方面取得了进展,但是使用任何神经网络尚未产生诸如结晶多孔材料的复杂材料。在这里,我们已经实施了一种生成的对抗网络,其使用31,713个已知的沸石的训练组以产生121个结晶多孔材料。我们的神经网络采用能量和材料尺寸形式的输入,并且我们表明,使用我们的神经网络可以可靠地生产具有用户所需的4kJ / mol甲烷热吸附的沸石。用户所需能力的微调可以潜在地加速材料开发,因为它表明了多孔材料逆设计的成功案例。

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