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深度学习加速六方氮化硼和石墨烯的结构-性能关系的发展。

Deep Learning to Speed up the Development of Structure-Property Relations For Hexagonal Boron Nitride and Graphene.

机构信息

Department of Civil and Environmental Engineering, Rice University, Houston, TX, 77005, USA.

C-Crete Technologies LLC, Stafford, TX, 77477, USA.

出版信息

Small. 2019 May;15(19):e1900656. doi: 10.1002/smll.201900656. Epub 2019 Apr 10.

DOI:10.1002/smll.201900656
PMID:30968576
Abstract

Structure-property maps play a key role in accelerated materials discovery. The current norm for developing these maps includes computationally expensive physics-based simulations. Here, the capabilities of deep learning agents are explored such as convolutional neural networks (CNNs) and multilayer perceptrons (MLPs) to predict structure-property relations and reduce dependence on simulations. This study contains simulated hexagonal boron nitride (h-BN) microstructures damaged by various levels of radiation and temperature, with the objective to predict their residual strengths from the final atomic positions. By developing low dimensional physical descriptors to statistically describe the defects, these results show that purpose-specific microstructure representation can help in achieving a good prediction accuracy at low computational cost. Furthermore, the adaptability of the trained deep learning agents is explored to predict structure-property maps of other 2D materials using transfer learning. It is shown that in order to achieve good predictions accuracy (≈95% R ), an agent that is training for the first time ("learning from scratch") requires 23-45% of simulated data, whereas an agent adapting to a different material ("transfer learning") requires only about 10% or less. This suggests that transfer learning is a potential game changer in material discovery and characterization approaches.

摘要

结构-性能图谱在加速材料发现中起着关键作用。目前,开发这些图谱的规范包括计算成本高昂的基于物理的模拟。在这里,探索了深度学习代理(如卷积神经网络 (CNN) 和多层感知器 (MLP))的能力,以预测结构-性能关系并减少对模拟的依赖。本研究包含了模拟的六角氮化硼 (h-BN) 微结构,这些微结构受到不同程度的辐射和温度的损伤,目的是从最终的原子位置预测它们的残余强度。通过开发低维物理描述符来统计描述缺陷,这些结果表明,特定于用途的微观结构表示有助于以低计算成本实现良好的预测精度。此外,还探索了经过训练的深度学习代理的适应性,以使用迁移学习来预测其他 2D 材料的结构-性能图谱。结果表明,为了实现良好的预测精度(≈95%R),首次进行训练的代理(“从头开始学习”)需要 23-45%的模拟数据,而适应不同材料的代理(“迁移学习”)仅需要约 10%或更少。这表明迁移学习是材料发现和表征方法的潜在变革者。

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