| Literature DB >> 32519397 |
Bingnan Han1,2, Yuxuan Lin2, Yafang Yang3, Nannan Mao2, Wenyue Li1, Haozhe Wang2, Kenji Yasuda3, Xirui Wang3, Valla Fatemi3, Lin Zhou2, Joel I-Jan Wang4, Qiong Ma3, Yuan Cao3, Daniel Rodan-Legrain3, Ya-Qing Bie3, Efrén Navarro-Moratalla5, Dahlia Klein3, David MacNeill3, Sanfeng Wu3, Hikari Kitadai6, Xi Ling6, Pablo Jarillo-Herrero3, Jing Kong2,4, Jihao Yin1, Tomás Palacios2.
Abstract
Advanced microscopy and/or spectroscopy tools play indispensable roles in nanoscience and nanotechnology research, as they provide rich information about material processes and properties. However, the interpretation of imaging data heavily relies on the "intuition" of experienced researchers. As a result, many of the deep graphical features obtained through these tools are often unused because of difficulties in processing the data and finding the correlations. Such challenges can be well addressed by deep learning. In this work, the optical characterization of 2D materials is used as a case study, and a neural-network-based algorithm is demonstrated for the material and thickness identification of 2D materials with high prediction accuracy and real-time processing capability. Further analysis shows that the trained network can extract deep graphical features such as contrast, color, edges, shapes, flake sizes, and their distributions, based on which an ensemble approach is developed to predict the most relevant physical properties of 2D materials. Finally, a transfer learning technique is applied to adapt the pretrained network to other optical identification applications. This artificial-intelligence-based material characterization approach is a powerful tool that would speed up the preparation, initial characterization of 2D materials and other nanomaterials, and potentially accelerate new material discoveries.Keywords: 2D materials; deep learning; machine learning; material characterization; optical microscopy
Year: 2020 PMID: 32519397 DOI: 10.1002/adma.202000953
Source DB: PubMed Journal: Adv Mater ISSN: 0935-9648 Impact factor: 30.849