星团(航天器)
催化作用
材料科学
吸收(声学)
活动站点
吸收光谱法
氧烷
光谱学
化学物理
谱线
丙烷
簇大小
选择性
X射线光谱学
X射线光电子能谱
结晶学
电子结构
计算化学
化学
计算机科学
物理
热力学
光学
核磁共振
有机化学
天文
程序设计语言
量子力学
复合材料
作者
Yang Liu,Avik Halder,Söenke Seifert,Nicholas Marcella,Štefan Vajda,Anatoly I. Frenkel
标识
DOI:10.1021/acsami.1c06714
摘要
Size-selected clusters are important model catalysts because of their narrow size and compositional distributions, as well as enhanced activity and selectivity in many reactions. Still, their structure–activity relationships are, in general, elusive. The main reason is the difficulty in identifying and quantitatively characterizing the catalytic active site in the clusters when it is confined within subnanometric dimensions and under the continuous structural changes the clusters can undergo in reaction conditions. Using machine learning approaches for analysis of the operando X-ray absorption near-edge structure spectra, we obtained accurate speciation of the CuxPdy cluster types during the propane oxidation reaction and the structural information about each type. As a result, we elucidated the information about active species and relative roles of Cu and Pd in the clusters.
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