杠杆(统计)
计算机科学
计算
热导率
流量(数学)
流体力学
统计物理学
机械
算法
人工智能
物理
热力学
作者
Filippos Sofos,Theodoros E. Karakasidis
出处
期刊:Fluids
[Multidisciplinary Digital Publishing Institute]
日期:2021-03-01
卷期号:6 (3): 96-96
被引量:13
标识
DOI:10.3390/fluids6030096
摘要
Simulations of fluid flows at the nanoscale feature massive data production and machine learning (ML) techniques have been developed during recent years to leverage them, presenting unique results. This work facilitates ML tools to provide an insight on properties among molecular dynamics (MD) simulations, covering missing data points and predicting states not previously located by the simulation. Taking the fluid flow of a simple Lennard-Jones liquid in nanoscale slits as a basis, ML regression-based algorithms are exploited to provide an alternative for the calculation of transport properties of fluids, e.g., the diffusion coefficient, shear viscosity and thermal conductivity and the average velocity across the nanochannels. Through appropriate training and testing, ML-predicted values can be extracted for various input variables, such as the geometrical characteristics of the slits, the interaction parameters between particles and the flow driving force. The proposed technique could act in parallel to simulation as a means of enriching the database of material properties, assisting in coupling between scales, and accelerating data-based scientific computations.
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