摘要
High-angle annular dark field(HAADF)imaging in scanning transmission electron microscopy(STEM)has become an indispensable tool in materials science due to its ability to offer sub-°A resolution and provide chemical information through Z-contrast.This study leverages large language models(LLMs)to conduct a comprehensive bibliometric analysis of a large amount of HAADF-related literature(more than 41000 papers).By using LLMs,specifically ChatGPT,we were able to extract detailed information on applications,sample preparation methods,instruments used,and study conclusions.The findings highlight the capability of LLMs to provide a new perspective into HAADF imaging,underscoring its increasingly important role in materials science.Moreover,the rich information extracted from these publications can be harnessed to develop AI models that enhance the automation and intelligence of electron microscopes.
作者
Wenhao Yuan
Cheng Peng
Qian He
袁文浩;彭程;何迁(Department of Material Science and Engineering,College of Design and Engineering,National University of Singapore,9 Engineering Drive 1,EA#03-09,117575,Singapore;Centre for Hydrogen Innovations,National University of Singapore,E8,1 Engineering Drive 3,117580,Singapore)
基金
National Research Foundation(NRF)Singapore,under its NRF Fellowship(Grant No.NRFNRFF11-2019-0002).