Unveiling the unexpected sinking and embedding dynamics of surface supported Mo/S clusters on 2D MoS2 with active machine learning

Luneng Zhao, Yanhan Ren, Xiaoran Shi, Hongsheng Liu, Zhigen Yu, Junfeng Gao, Jijun Zhao
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Abstract

Surface-supported clusters forming by aggregation of excessive adatoms could be the main defects of 2D materials after chemical vapor deposition. They will significantly impact the electronic/magnetic properties. Moreover, surface supported atoms are also widely explored for high active and selecting catalysts. Severe deformation, even dipping into the surface, of these clusters can be expected because of the very active edge of clusters and strong interaction between supported clusters and surfaces. However, most models of these clusters are supposed to simply float on the top of the surface because ab initio simulations cannot afford the complex reconstructions. Here, we develop an accurate graph neural network machine learning potential (MLP) from ab initio data by active learning architecture through fine-tuning pre-trained models, and then employ the MLP into Monte Carlo to explore the structural evolutions of Mo and S clusters (1–8 atoms) on perfect and various defective MoS2 monolayers. Interestingly, Mo clusters can always sink and embed themselves into MoS2 layers. In contrast, S clusters float on perfect surfaces. On the defective surface, a few S atoms will fill the vacancy and rest S clusters float on the top. Such significant structural reconstructions should be carefully taken into account.

Abstract Image

用主动式机器学习揭示二维 MoS2 上表面支持的 Mo/S 簇意外下沉和嵌入动力学
由过多金刚原子聚集形成的表面支撑团簇可能是化学气相沉积后二维材料的主要缺陷。它们会严重影响电子/磁性能。此外,表面支撑原子也被广泛用于高活性和选择性催化剂。由于原子团簇边缘非常活跃,而且支撑原子团簇与表面之间存在强烈的相互作用,因此可以预计这些原子团簇会发生严重变形,甚至浸入表面。然而,由于ab initio 模拟无法进行复杂的重构,因此这些团簇的大多数模型都是简单地漂浮在表面顶端。在这里,我们通过微调预训练模型的主动学习架构,从ab initio数据中开发出精确的图神经网络机器学习势(MLP),然后将MLP应用到蒙特卡洛中,探索完美和各种缺陷MoS2单层上Mo和S团簇(1-8个原子)的结构演变。有趣的是,Mo 团簇总是可以下沉并嵌入 MoS2 层中。相反,S 团簇则漂浮在完美的表面上。在有缺陷的表面上,一些 S 原子会填补空缺,其余的 S 团簇则漂浮在上面。这种重要的结构重构应仔细考虑。
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