各向异性
流离失所(心理学)
电子
衍射
电子衍射
金属
计算机科学
材料科学
结晶学
化学
物理
光学
量子力学
心理学
冶金
心理治疗师
作者
Laura Samperisi,Xiaodong Zou,Zhehao Huang
出处
期刊:IUCrJ
[International Union of Crystallography]
日期:2022-06-08
卷期号:9 (4): 480-491
被引量:3
标识
DOI:10.1107/s2052252522005632
摘要
Three-dimensional electron diffraction (3D ED) has been used for ab initio structure determination of various types of nanocrystals, such as metal–organic frameworks (MOFs), zeolites, metal oxides and organic crystals. These crystals are often obtained as polycrystalline powders, which are too small for single-crystal X-ray diffraction (SCXRD). While it is now possible to obtain accurate atomic positions of nanocrystals by adopting kinematical refinement against 3D ED data, most new structures are refined with isotropic displacement parameters ( U eq ), which limits the detection of possible structure disorders and atomic motions. Anisotropic displacement parameters (ADPs, U ij ) obtained by anisotropic structure refinement, on the other hand, provide information about the average displacements of atoms from their mean positions in a crystal, which can provide insights with respect to displacive disorder and flexibility. Although ADPs have been obtained from some 3D ED studies of MOFs, they are seldom mentioned or discussed in detail. We report here a detailed study and interpretation of structure models refined anisotropically against 3D ED data. Three MOF samples with different structural complexity and symmetry, namely ZIF-EC1, MIL-140C and Ga(OH)(1,4-ndc) (1,4-ndcH 2 is naphthalene-1,4-dicarboxylic acid), were chosen for the studies. We compare the ADPs refined against individual data sets and how they are affected by different data-merging strategies. Based on our results and analysis, we propose strategies for obtaining accurate structure models with interpretable ADPs based on kinematical refinement against 3D ED data. The ADPs of the obtained structure models provide clear and unambiguous information about linker motions in the MOFs.
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