微观结构
材料科学
磁滞
表征(材料科学)
扫描探针显微镜
纳米技术
光伏
显微镜
晶界
光学显微镜
卤化物
光电子学
扫描电子显微镜
光学
化学
复合材料
电气工程
凝聚态物理
物理
光伏系统
无机化学
工程类
作者
Yongtao Liu,Jonghee Yang,Rama K. Vasudevan,Kyle P. Kelley,Maxim Ziatdinov,Sergei V. Kalinin,Mahshid Ahmadi
标识
DOI:10.1021/acs.jpclett.3c00223
摘要
Electronic transport and hysteresis in metal halide perovskites (MHPs) are key to the applications in photovoltaics, light emitting devices, and light and chemical sensors. These phenomena are strongly affected by the materials microstructure including grain boundaries, ferroic domain walls, and secondary phase inclusions. Here, we demonstrate an active machine learning framework for "driving" an automated scanning probe microscope (SPM) to discover the microstructures responsible for specific aspects of transport behavior in MHPs. In our setup, the microscope can discover the microstructural elements that maximize the onset of conduction, hysteresis, or any other characteristic that can be derived from a set of current-voltage spectra. This approach opens new opportunities for exploring the origins of materials functionality in complex materials by SPM and can be integrated with other characterization techniques either before (prior knowledge) or after (identification of locations of interest for detail studies) functional probing.
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