Yang Wei-Hua, Yu Fang-Qi, Guo Zi-Wen, Huang Rao, Chen Jun-Ren, Gao Feng-Qiang, Shao Gui-Fang, Liu Tun-Dong, Wen Yu-Hua
Department of Physics, Xiamen University, Xiamen 361005, China.
Institute of Artificial Intelligence, Xiamen University, Xiamen 361005, China.
Nanoscale. 2024 Sep 26;16(37):17537-17548. doi: 10.1039/d4nr02431a.
Theoretically determining the lowest-energy structure of a cluster has been a persistent challenge due to the inherent difficulty in accurate description of its potential energy surface (PES) and the exponentially increasing number of local minima on the PES with the cluster size. In this work, density-functional theory (DFT) calculations of Co clusters were performed to construct a dataset for training deep neural networks to deduce a deep potential (DP) model with near-DFT accuracy while significantly reducing computational consumption comparable to classic empirical potentials. Leveraging the DP model, a high-efficiency hybrid differential evolution (HDE) algorithm was employed to search for the lowest-energy structures of Co ( = 11-50) clusters. Our results revealed 38 of these clusters superior to those recorded in the Cambridge Cluster Database and identified diverse architectures of the clusters, evolving from layered structures for = 11-27 to Marks decahedron-like structures for = 28-42 and to icosahedron-like structures for = 43-50. Subsequent analyses of the atomic arrangement, structural similarity, and growth pattern further verified their hierarchical structures. Meanwhile, several highly stable clusters, , Co, Co, Co, Co, and Co, were discovered by the energetic analyses. Furthermore, the magnetic stability of the clusters was verified, and a competition between the coordination number and bond length in affecting the magnetic moment was observed. Our study provides high-accuracy and high-efficiency prediction of the optimal structures of clusters and sheds light on the growth trend of Co clusters containing tens of atoms, contributing to advancing the global optimization algorithms for effective determination of cluster structures.
从理论上确定团簇的最低能量结构一直是一项持久的挑战,这是由于准确描述其势能面(PES)存在固有困难,且随着团簇尺寸的增加,PES上局部极小值的数量呈指数增长。在这项工作中,对钴团簇进行了密度泛函理论(DFT)计算,以构建一个数据集来训练深度神经网络,从而推导出一个具有接近DFT精度的深度势能(DP)模型,同时显著降低与经典经验势能相当的计算量。利用DP模型,采用了一种高效混合差分进化(HDE)算法来搜索钴((n = 11 - 50))团簇的最低能量结构。我们的结果表明,其中38个团簇优于剑桥团簇数据库中记录的团簇,并确定了团簇的多种结构,从(n = 11 - 27)时的层状结构演变为(n = 28 - 42)时的马克斯十面体状结构,再到(n = 43 - 50)时的二十面体状结构。随后对原子排列、结构相似性和生长模式的分析进一步验证了它们的层次结构。同时,通过能量分析发现了几个高度稳定的团簇,如(Co_{13})、(Co_{19})、(Co_{23})、(Co_{29})、(Co_{35})和(Co_{41})。此外,验证了团簇的磁稳定性,并观察到配位数和键长在影响磁矩方面的竞争关系。我们的研究为团簇的最优结构提供了高精度和高效率的预测,并揭示了含数十个原子的钴团簇的生长趋势,有助于推进用于有效确定团簇结构的全局优化算法。