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A Universal 3D Voxel Descriptor for Solid-State Material Informatics with Deep Convolutional Neural Networks

机译:具有深度卷积神经网络的固态材料信息学的通用3D体素描述符

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Material informatics (MI) is a promising approach to liberate us from the time-consuming Edisonian (trial and error) process for material discoveries, driven by machine-learning algorithms. Several descriptors, which are encoded material features to feed computers, were proposed in the last few decades. Especially to solid systems, however, their insufficient representations of three dimensionality of field quantities such as electron distributions and local potentials have critically hindered broad and practical successes of the solid-state MI. We develop a simple, generic 3D voxel descriptor that compacts any field quantities, in such a suitable way to implement convolutional neural networks (CNNs). We examine the 3D voxel descriptor encoded from the electron distribution by a regression test with 680 oxides data. The present scheme outperforms other existing descriptors in the prediction of Hartree energies that are significantly relevant to the long-wavelength distribution of the valence electrons. The results indicate that this scheme can forecast any functionals of field quantities just by learning sufficient amount of data, if there is an explicit correlation between the target properties and field quantities. This 3D descriptor opens a way to import prominent CNNs-based algorithms of supervised, semi-supervised and reinforcement learnings into the solid-state MI.
机译:材料信息学(MI)是一种有希望从机器学习算法驱动的耗时的Edisonian(试验和错误)过程中解放我们的有希望的方法。在过去的几十年中提出了几个用于馈送计算机的材料特征的描述符。然而,尤其是固体系统,它们的诸如电子分布和局部电位的三维​​度的不足表示具有严重阻碍固态Mi的广泛和实际的成功。我们开发了一种简单的通用3D体素描述符,以实现任何字段数量,以实现卷积神经网络(CNN)的合适方法。我们通过带有680个氧化物数据的回归测试检查从电子分布编码的3D体素描述符。本方案在预测与价电子的长波长分布显着相关的Hartree能量中的其他现有描述符。结果表明,如果目标属性与字段数量之间存在明确相关性,则该方案可以通过学习足够的数据预测现场数量的任何功能。该3D描述符开辟了一种进口基于CNNS的基于CNNS的算法的监督,半监督和强化学习的方法,进入固态MI。

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