Physics-aware recurrent convolutional neural networks for modeling multiphase compressible flows

IF 3.6 2区 工程技术 Q1 MECHANICS
Xinlun Cheng , Phong C.H. Nguyen , Pradeep K. Seshadri , Mayank Verma , Zoë J. Gray , Jack T. Beerman , H.S. Udaykumar , Stephen S. Baek
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引用次数: 0

Abstract

Multiphase compressible flow systems can exhibit unsteady and fast-transient dynamics, marked by sharp gradients and discontinuities, and material boundaries that interact with the evolving flow. The transient nature of the dynamics presents challenges to employing artificial intelligence (AI) and data-driven models for predicting flow behaviors. In this study, we explore the potential of physics-aware recurrent convolutional neural networks (PARC) to model the spatiotemporal dynamics of multiphase flows in the presence of shocks and reaction fronts. PARC is a neural network model that incorporates the generic form of the diffusion–advection–reaction equation in its network architecture, which mimics the process of solving the governing equations of fluid flows. In contrast to physics-informed machine learning approaches such as physics-informed neural networks (PINNs) where models are trained to directly minimize the residual of governing equations, PARC takes a dynamical systems viewpoint and does not seek to minimize potentially nonconvex and nonlinear loss terms. To assess the ability of PARC to accurately learn and simulate the physics of multiphase flows, we train and test PARC on various flow simulation problems, including the Burgers’ equation, fluid flow behind a cylindrical cross-section, and unsteady shock interactions with a particle at varying Mach numbers. We analyze PARC’s performance and examine sources of error in its prediction, in terms of differentiation and integration schemes and different weighting strategies for the model update. Based on our observations, we discuss PARC’s capabilities and limitations in multiphase flow applications and propose future research directions.

Abstract Image

Abstract Image

用于多相可压缩流建模的物理感知递归卷积神经网络
多相可压缩流动系统会表现出不稳定和快速瞬态动态,其特征是急剧的梯度和不连续性,以及与不断变化的流动相互作用的材料边界。动力学的瞬态特性给采用人工智能(AI)和数据驱动模型预测流动行为带来了挑战。在本研究中,我们探索了物理感知递归卷积神经网络(PARC)的潜力,以模拟存在冲击和反应锋的多相流的时空动态。PARC 是一种神经网络模型,在其网络结构中纳入了扩散-平流-反应方程的一般形式,模拟了流体流动的管理方程求解过程。与物理信息神经网络(PINNs)等物理信息机器学习方法相比,PARC 从动态系统的角度出发,不寻求最小化潜在的非凸和非线性损失项。为了评估 PARC 准确学习和模拟多相流物理过程的能力,我们在各种流动模拟问题上对 PARC 进行了训练和测试,其中包括布尔格斯方程、圆柱截面后的流体流动以及在不同马赫数下粒子与非定常冲击的相互作用。我们分析了 PARC 的性能,并从微分和积分方案以及模型更新的不同加权策略方面研究了其预测误差的来源。根据观察结果,我们讨论了 PARC 在多相流应用中的能力和局限性,并提出了未来的研究方向。
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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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