加速度
扩散
分子动力学
计算机科学
航程(航空)
统计物理学
聚合物
阿累尼乌斯方程
材料科学
可靠性(半导体)
机械
生物系统
玻尔兹曼常数
热力学
常量(计算机编程)
格子Boltzmann方法
形状因子
模拟
系统动力学
复杂系统
标准差
作者
Saeed Momeni Bashusqeh,Manisha Dhillayan,Florian Muller-Plathe
标识
DOI:10.1021/acs.jctc.5c00998
摘要
A predictive model is proposed for the mobility acceleration factor, defined as ratio of the coarse-grained (CG) diffusion coefficient to the all-atom (AA) diffusion coefficient, in polymer melt systems. To this end, a number of polymers are selected for AA simulations at 450 K, followed by Iterative Boltzmann Inversion (IBI) coarse-graining and subsequent CG simulations to compute the AA and CG diffusion coefficients. After identifying the key parameters influencing the mobility acceleration factor, a functional form for predicting the acceleration is proposed based on these effective parameters. A fitting procedure is then carried out to determine the unknown constants associated with the model. As the next step, the developed model is applied to predict the mobility acceleration factor across various systems at different temperatures, which exposes the need to refine the model by incorporating temperature as an additional influential parameter. Inspired by the Arrhenius equation, the predictive model is revised to incorporate temperature, resulting in a formulation capable of predicting the mobility acceleration factor in polymer melts across a range of temperatures. Thus, the final model predicts the artificial mobility increase in coarse-grained systems using three parameters characterizing the local environment of the monomers and temperature. The model shows an average absolute deviation of 5.6 from the true values, demonstrating its reliability and predictive capability.
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