利用神经算子学习在具有相关波动的多尺度气泡生长动力学中架设桥梁

IF 3.6 2区 工程技术 Q1 MECHANICS
Minglei Lu , Chensen Lin , Martin Maxey , George Em Karniadakis , Zhen Li
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引用次数: 0

摘要

气泡生长动力学过程错综复杂,涉及从气泡形成的微观力学到气泡与周围热流体力学之间的宏观相互作用等广泛的物理现象。传统的气泡动力学模型,包括原子论方法和基于连续体的方法,将气泡动力学划分为不同尺度的特定模型。为了弥合微尺度随机流体模型与基于连续介质的气泡动力学流体模型之间的差距,我们开发了一种复合神经算子模型,通过一种新颖的神经网络架构,将多体耗散粒子动力学(mDPD)模型与基于连续介质的瑞利-普利塞特(RP)模型整合在一起,从而统一分析微尺度和宏观尺度的非线性气泡动力学、它由一个深度算子网络和一个长短期记忆网络组成,前者用于学习压力变化下气泡生长的平均行为,后者用于学习微尺度气泡动力学中相关波动的统计特征。通过对初始气泡半径为 0.1 至 1.5 微米的非线性气泡动力学进行 mDPD 和 RP 模拟,生成了训练和测试数据。结果表明,经过训练的复合神经算子模型可以准确预测不同尺度的气泡动力学,对外部压力变化时气泡半径时间演化的预测准确率达到 99%,同时在微尺度气泡生长动力学中包含正确的尺寸依赖性随机波动。复合神经算子是首个能捕捉微观流体现象中正确随机波动的多尺度气泡生长动力学深度学习代用模型,为未来多尺度流体动力学建模研究指明了新方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Bridging scales in multiscale bubble growth dynamics with correlated fluctuations using neural operator learning

Bridging scales in multiscale bubble growth dynamics with correlated fluctuations using neural operator learning

The intricate process of bubble growth dynamics involves a broad spectrum of physical phenomena from microscale mechanics of bubble formation to macroscale interplay between bubbles and surrounding thermo-hydrodynamics. Traditional bubble dynamics models including atomistic approaches and continuum-based methods segment the bubble dynamics into distinct scale-specific models. To bridge the gap between microscale stochastic fluid models and continuum-based fluid models for bubble dynamics, we develop a composite neural operator model to unify the analysis of nonlinear bubble dynamics across microscale and macroscale regimes by integrating a many-body dissipative particle dynamics (mDPD) model with a continuum-based Rayleigh–Plesset (RP) model through a novel neural network architecture, which consists of a deep operator network for learning the mean behavior of bubble growth subject to pressure variations and a long short-term memory network for learning the statistical features of correlated fluctuations in microscale bubble dynamics. Training and testing data are generated by conducting mDPD and RP simulations for nonlinear bubble dynamics with initial bubble radii ranging from 0.1 to 1.5 micrometers. The results show that the trained composite neural operator model can accurately predict bubble dynamics across scales, with a 99% predictive accuracy for the time evolution of the bubble radius under varying external pressure while containing correct size-dependent stochastic fluctuations in microscale bubble growth dynamics. The composite neural operator is the first deep learning surrogate for multiscale bubble growth dynamics that can capture correct stochastic fluctuations in microscopic fluid phenomena, which sets a new direction for future research in multiscale fluid dynamics modeling.

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来源期刊
CiteScore
7.30
自引率
10.50%
发文量
244
审稿时长
4 months
期刊介绍: The International Journal of Multiphase Flow publishes analytical, numerical and experimental articles of lasting interest. The scope of the journal includes all aspects of mass, momentum and energy exchange phenomena among different phases such as occur in disperse flows, gas–liquid and liquid–liquid flows, flows in porous media, boiling, granular flows and others. The journal publishes full papers, brief communications and conference announcements.
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