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Investigation of potential parameters effect on stable structures of Pt-Pd alloy nanoparticles by particle swarm algorithm

机译:粒子群算法研究潜在参数对Pt-Pd合金纳米粒子稳定结构的影响

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Because the structure determines the chemical and physical properties, atomic-level understanding of structural features of bimetallic nanoparticles (NPs) is of great importance to their syntheses and applications. In this work, we propose an improved discrete particle swarm optimization (PSO) algorithm to predict the stable structures of bimetallic NPs. In this algorithm, the variable pair of 0 and 1 (which relatively represent the two atoms) is introduced to enhance the speed of searching optimization in the initial stages, and the simulated annealing operator is added to avoid premature convergence and trapping into local optimal solution. Tetrahexahedral (THH) Pt-Pd bimetallic NPs containing 3285 atoms are used to test the effectiveness of the proposed algorithm. Furthermore, the proposed method is employed to investigate and compare the stable structures of the NPs by changing some parameters of the Gupta potentials. The results have demonstrated the superior convergence of the proposed PSO algorithm in structural prediction of bimetallic NPs. The comparison of the stable structures based on three groups of the parameters in Gupta potentials shows that for the parameter I, the structure is in best agreement with the experimental result, while for the parameter III, the Pt-Pd bimetallic NPs is most stable.
机译:由于结构决定了化学和物理性质,因此对双金属纳米颗粒(NPs)的结构特征进行原子级的理解对于其合成和应用非常重要。在这项工作中,我们提出了一种改进的离散粒子群优化(PSO)算法来预测双金属NP的稳定结构。在该算法中,引入变量对0和1(相对表示两个原子)以提高初始阶段的搜索优化速度,并添加了模拟退火算子以避免过早收敛并陷入局部最优解中。包含3285个原子的四面体(THH)Pt-Pd双金属NP用于测试该算法的有效性。此外,通过改变古普塔电位的一些参数,该方法被用来研究和比较纳米粒子的稳定结构。结果表明,所提出的PSO算法在双金属NPs的结构预测中具有优越的收敛性。根据古普塔电位的三组参数对稳定结构的比较表明,对于参数I,结构与实验结果最吻合,而对于参数III,Pt-Pd双金属NPs最稳定。

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