Sobral João Augusto, Obernauer Stefan, Turkel Simon, Pasupathy Abhay N, Scheurer Mathias S
Institute for Theoretical Physics III, University of Stuttgart, 70550, Stuttgart, Germany.
Institute for Theoretical Physics, University of Innsbruck, A-6020, Innsbruck, Austria.
Nat Commun. 2023 Aug 17;14(1):5012. doi: 10.1038/s41467-023-40684-1.
Modern scanning probe techniques, such as scanning tunneling microscopy, provide access to a large amount of data encoding the underlying physics of quantum matter. In this work, we show how convolutional neural networks can be used to learn effective theoretical models from scanning tunneling microscopy data on correlated moiré superlattices. Moiré systems are particularly well suited for this task as their increased lattice constant provides access to intra-unit-cell physics, while their tunability allows for the collection of high-dimensional data sets from a single sample. Using electronic nematic order in twisted double-bilayer graphene as an example, we show that incorporating correlations between the local density of states at different energies allows convolutional neural networks not only to learn the microscopic nematic order parameter, but also to distinguish it from heterostrain. These results demonstrate that neural networks are a powerful method for investigating the microscopic details of correlated phenomena in moiré systems and beyond.
现代扫描探针技术,如扫描隧道显微镜,能够获取大量编码量子物质潜在物理特性的数据。在这项工作中,我们展示了卷积神经网络如何用于从关联莫尔超晶格的扫描隧道显微镜数据中学习有效的理论模型。莫尔系统特别适合这项任务,因为其增大的晶格常数能够揭示晶胞内的物理特性,同时其可调性允许从单个样本中收集高维数据集。以扭曲双层双层石墨烯中的电子向列序为例,我们表明纳入不同能量下局部态密度之间的相关性,不仅能让卷积神经网络学习微观向列序参数,还能将其与异质应变区分开来。这些结果表明,神经网络是研究莫尔系统及其他系统中关联现象微观细节的有力方法。