Lee Juhyeok, Jeong Chaehwa, Yang Yongsoo
Department of Physics, Korea Advanced Institute of Science and Technology (KAIST), Daejeon, Korea.
Nat Commun. 2021 Mar 30;12(1):1962. doi: 10.1038/s41467-021-22204-1.
Functional properties of nanomaterials strongly depend on their surface atomic structures, but they often become largely different from their bulk structures, exhibiting surface reconstructions and relaxations. However, most of the surface characterization methods are either limited to 2D measurements or not reaching to true 3D atomic-scale resolution, and single-atom level determination of the 3D surface atomic structure for general 3D nanomaterials still remains elusive. Here we demonstrate the measurement of 3D atomic structure at 15 pm precision using a Pt nanoparticle as a model system. Aided by a deep learning-based missing data retrieval combined with atomic electron tomography, the surface atomic structure was reliably measured. We found that <[Formula: see text]> and <[Formula: see text]> facets contribute differently to the surface strain, resulting in anisotropic strain distribution as well as compressive support boundary effect. The capability of single-atom level surface characterization will not only deepen our understanding of the functional properties of nanomaterials but also open a new door for fine tailoring of their performance.
纳米材料的功能特性很大程度上取决于其表面原子结构,但它们往往与体相结构有很大不同,表现出表面重构和弛豫。然而,大多数表面表征方法要么限于二维测量,要么无法达到真正的三维原子尺度分辨率,对于一般三维纳米材料的三维表面原子结构进行单原子水平的测定仍然难以实现。在此,我们以铂纳米颗粒作为模型系统,展示了精度为15皮米的三维原子结构测量。借助基于深度学习的缺失数据检索并结合原子电子断层扫描,可靠地测量了表面原子结构。我们发现<[公式:见正文]>面和<[公式:见正文]>面对表面应变的贡献不同,导致各向异性的应变分布以及压缩支撑边界效应。单原子水平表面表征的能力不仅将加深我们对纳米材料功能特性的理解,也为精细调整其性能打开了一扇新的大门。