Liu Yongtao, Yang Jonghee, Vasudevan Rama K, Kelley Kyle P, Ziatdinov Maxim, Kalinin Sergei V, Ahmadi Mahshid
Center for Nanophase Materials Sciences, Oak Ridge National Laboratory, Oak Ridge, Tennessee 37830, United States.
Department of Materials Science and Engineering, University of Tennessee, Knoxville, Tennessee 37996, United States.
J Phys Chem Lett. 2023 Apr 6;14(13):3352-3359. doi: 10.1021/acs.jpclett.3c00223. Epub 2023 Mar 30.
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.
金属卤化物钙钛矿(MHP)中的电子输运和滞后现象是其在光伏、发光器件以及光传感器和化学传感器应用中的关键。这些现象受到包括晶界、铁电畴壁和第二相夹杂物在内的材料微观结构的强烈影响。在此,我们展示了一个主动式机器学习框架,用于 “驱动” 自动扫描探针显微镜(SPM)来发现导致MHP中输运行为特定方面的微观结构。在我们的装置中,显微镜能够发现使传导起始、滞后或任何可从一组电流 - 电压谱中得出的其他特性最大化的微观结构元素。这种方法为通过SPM探索复杂材料中材料功能的起源开辟了新机会,并且可以在功能探测之前(先验知识)或之后(确定详细研究的感兴趣位置)与其他表征技术相结合。