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Modeling Aggregation Processes of Lennard-Jones particles Via Stochastic Networks

机译:通过随机网络建模Lennard-Jones粒子的聚合过程

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We model an isothermal aggregation process of particles/atoms interacting according to the Lennard-Jones pair potential by mapping the energy landscapes of each cluster size N onto stochastic networks, computing transition probabilities from the network for an N-particle cluster to the one for , and connecting these networks into a single joint network. The attachment rate is a control parameter. The resulting network representing the aggregation of up to 14 particles contains 6427 vertices. It is not only time-irreversible but also reducible. To analyze its transient dynamics, we introduce the sequence of the expected initial and pre-attachment distributions and compute them for a wide range of attachment rates and three values of temperature. As a result, we find the configurations most likely to be observed in the process of aggregation for each cluster size. We examine the attachment process and conduct a structural analysis of the sets of local energy minima for every cluster size. We show that both processes taking place in the network, attachment and relaxation, lead to the dominance of icosahedral packing in small (up to 14 atom) clusters.
机译:我们通过将每个簇大小N的能量景观映射到随机网络,从leennard-jones对电位模拟粒子/原子的等温聚合过程,通过将每个簇大小n的能量景观映射到随机网络,从而计算从网络的转换概率为n粒子簇,并将这些网络连接到单个联合网络中。附件是控制参数。由此产生多达14个粒子的聚合的得到的网络包含6427个顶点。这不仅是时间 - 不可逆转,还可以减少。为了分析其瞬态动态,我们介绍了预期的初始和预附件分布的顺序,并计算它们的各种附件和三个温度值。因此,我们发现最有可能在每个簇大小的聚合过程中观察到的配置。我们检查附件过程并对每个簇大小进行局部能量最小值组的结构分析。我们表明,在网络中发生的这两个过程,附着和放松,导致ICOSAHEDRAL填料的优势(最多14个原子)簇。

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