论文标题

纳米催化剂活性位点的原子级鉴定

Atomic-scale identification of the active sites of nanocatalysts

论文作者

Yang, Yao, Zhou, Jihan, Zhao, Zipeng, Sun, Geng, Moniri, Saman, Ophus, Colin, Yang, Yongsoo, Wei, Ziyang, Yuan, Yakun, Zhu, Cheng, Sun, Qiang, Jia, Qingying, Heinz, Hendrik, Ciston, Jim, Ercius, Peter, Sautet, Philippe, Huang, Yu, Miao, Jianwei

论文摘要

合金纳米催化剂发现,从燃料电池到催化转化器以及氢化反应的广泛应用。尽管进行了广泛的研究,但由于局部原子环境的异质性,识别纳米催化剂的活跃部位仍然是一个重大挑战。在这里,我们推进原子电子断层扫描,以确定PTNI和MO掺杂的PTNI纳米催化剂的3D局部原子结构,表面形态和化学组成。使用通过密度功能理论计算训练的机器学习,我们确定了实验3D原子坐标的氧气还原反应的催化活性位点,这些反应通过电化学测量得到了证实。通过量化结构活性关系,我们发现了一个局部环境描述符,以解释和预测原子水平的催化活性位点。预计确定3D原子结构和化学物质以及机器学习的能力将扩大我们对广泛的纳米催化剂的基本了解。

Alloy nanocatalysts have found broad applications ranging from fuel cells to catalytic converters and hydrogenation reactions. Despite extensive studies, identifying the active sites of nanocatalysts remains a major challenge due to the heterogeneity of the local atomic environment. Here, we advance atomic electron tomography to determine the 3D local atomic structure, surface morphology and chemical composition of PtNi and Mo-doped PtNi nanocatalysts. Using machine learning trained by density functional theory calculations, we identify the catalytic active sites for the oxygen reduction reaction from experimental 3D atomic coordinates, which are corroborated by electrochemical measurements. By quantifying the structure-activity relationship, we discover a local environment descriptor to explain and predict the catalytic active sites at the atomic level. The ability to determine the 3D atomic structure and chemical species coupled with machine learning is expected to expand our fundamental understanding of a wide range of nanocatalysts.

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