Yang Wei-Hua, Li Ya-Meng, Bi Jian-Xiang, Huang Rao, Shao Gui-Fang, Fan Tian-E, Liu Tun-Dong, Wen Yu-Hua
Department of Physics, Xiamen University, Xiamen 361005, China.
Department of Automation, Xiamen University, Xiamen 361102, China.
J Chem Inf Model. 2022 May 23;62(10):2398-2408. doi: 10.1021/acs.jcim.1c01570. Epub 2022 May 9.
Global optimization of multicomponent cluster structures is considerably time-consuming due to the existence of a vast number of isomers. In this work, we proposed an improved self-adaptive differential evolution with the neighborhood search (SaNSDE) algorithm and applied it to the global optimization of bimetallic cluster structures. The cross operation was optimized, and an improved basin hopping module was introduced to enhance the searching efficiency of SaNSDE optimization. Taking (PtNi) ( = 38 or 55) bimetallic clusters as examples, their structures were predicted by using this algorithm. The traditional SaNSDE algorithm was carried out for comparison with the improved SaNSDE algorithm. For all the optimized clusters, the excess energy and the second difference of the energy were calculated to examine their relative stabilities. Meanwhile, the bond order parameters were adopted to quantitatively characterize the cluster structures. The results reveal that the improved SaNSDE algorithm possessed significantly higher searching capability and faster convergence speed than the traditional SaNSDE algorithm. Furthermore, the lowest-energy configurations of (PtNi) clusters could be classified as the truncated octahedral and disordered structures. In contrast, all the optimal (PtNi) clusters were approximately icosahedral. Our work fully demonstrates the high efficiency of the improved algorithm and advances the development of global optimization algorithms and the structural prediction of multicomponent clusters.
由于存在大量异构体,多组分团簇结构的全局优化相当耗时。在这项工作中,我们提出了一种带邻域搜索的改进自适应差分进化(SaNSDE)算法,并将其应用于双金属团簇结构的全局优化。对交叉操作进行了优化,并引入了改进的盆地跳跃模块以提高SaNSDE优化的搜索效率。以(PtNi)( = 38或55)双金属团簇为例,使用该算法预测了它们的结构。将传统的SaNSDE算法与改进的SaNSDE算法进行了比较。对于所有优化后的团簇,计算了过剩能量和能量的二阶差分以检验它们的相对稳定性。同时,采用键序参数对团簇结构进行定量表征。结果表明,改进的SaNSDE算法比传统的SaNSDE算法具有显著更高的搜索能力和更快的收敛速度。此外,(PtNi)团簇的最低能量构型可归类为截顶八面体结构和无序结构。相比之下,所有最优的(PtNi)团簇近似为二十面体结构。我们的工作充分证明了改进算法的高效性,推动了全局优化算法的发展以及多组分团簇的结构预测。