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首页> 外文期刊>Frontiers in Materials >Machine-Learning Informed Representations for Grain Boundary Structures
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Machine-Learning Informed Representations for Grain Boundary Structures

机译:机器学习的晶界结构的信息表示

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The atomic structure of grain boundaries plays a defining but poorly understood role in the properties they exhibit. Due to the complex nature of these structures, machine learning is a natural tool for extracting meaningful relationships and new physical insight. We apply a new structural representation, called the scattering transform, that uses wavelet-based convolutional neural networks to characterize the complete three-dimensional atomic structure of a grain boundary. The machine learning to predict GB energy, mobility, and shear coupling using the scattering transform representation is compared and contrasted with learning using a smooth overlap of atomic positions (SOAP) based representation. While predictions using the scattering transform are not as good as those of SOAP, other factors suggest that the scattering transform may yet play an important role in GB structure learning. These factors include the ability of the scattering transform to learn well on larger datasets, in a process similar to deep learning, as well as their ability to provide physically interpretable information about what aspects of the GB structure contribute to the learning through an inverse scattering transform.
机译:谷物边界的原子结构在他们所展示的性质中起着一个定义但明显理解的作用。由于这些结构的复杂性,机器学习是提取有意义的关系和新的身体洞察力的自然工具。我们应用了一种称为散射变换的新结构表示,它使用基于小波的卷积神经网络来表征晶界的完整三维原子结构。使用基于原子位置(SOAP)的光滑重叠的学习,比较和使用散射变换表示来预测GB能量,移动性和剪切耦合来预测GB能量,移动性和剪切耦合。虽然使用散射变换的预测不如肥皂那么好,但其他因素表明散射变换可能在GB结构学习中发挥着重要作用。这些因素包括散射变换在较大的数据集中学习的能力,在类似于深度学习的过程中,以及他们提供关于GB结构的有关GB结构的哪些方面的物理解释信息的能力,通过逆散射变换有助于学习。

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