求解梯度多孔介质中参数化双域Darcy-Brinkman流动的物理信息神经网络

IF 2.9 3区 工程技术 Q1 ENGINEERING, MULTIDISCIPLINARY
Haoyun Xing, Guice Yao, Hang Yuan, Jin Zhao, Dongsheng Wen
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引用次数: 0

摘要

求解参数化偏微分方程的能力对于提高工程设计效率至关重要,随着机器学习技术的进步,物理信息神经网络(pinn)提供了一条有前途的途径。本文建立了梯度多孔介质的耦合双域Darcy-Brinkman流动模型。在此基础上,利用能够处理多物理场问题的trunk-branch (TB)-net PINN框架对特定孔隙度配置场景进行预测,并考察了不同数据配置策略的性能。在此之后,实现了参数化流的探索,在两种随机选择的条件下展示了显著的准确性。这是已知的第一个类似pnas的方法用于处理复杂的参数化双域Darcy-Brinkman流的应用,为工程设计和效率优化提供了宝贵的经验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Physics-Informed Neural Networks for Solving Parameterized Dual-Domain Darcy–Brinkman Flows in Gradient Porous Mediums

The ability to solve parameterized partial differential equations is pivotal to improving engineering design efficiency, and with the advancement of machine learning technologies, physics-informed neural networks (PINNs) provide a promising avenue. In this work, a coupled dual-domain Darcy–Brinkman flow model for gradient porous media is established. Building upon this, the trunk-branch (TB)-net PINN framework, which is capable of dealing with multi-physical field issues, is utilized to conduct predictions for a specific porosity configuration scenario, and the performance of different data collocation strategies is examined. Following this, explorations for parameterized flows are implemented, demonstrating remarkable accuracy in two randomly chosen conditions. This is the first known application of PINNs-like methods to handle such complex parameterized dual-domain Darcy–Brinkman flows, yielding invaluable experience pertinent to engineering design and efficiency optimization.

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来源期刊
CiteScore
5.70
自引率
6.90%
发文量
276
审稿时长
5.3 months
期刊介绍: The International Journal for Numerical Methods in Engineering publishes original papers describing significant, novel developments in numerical methods that are applicable to engineering problems. The Journal is known for welcoming contributions in a wide range of areas in computational engineering, including computational issues in model reduction, uncertainty quantification, verification and validation, inverse analysis and stochastic methods, optimisation, element technology, solution techniques and parallel computing, damage and fracture, mechanics at micro and nano-scales, low-speed fluid dynamics, fluid-structure interaction, electromagnetics, coupled diffusion phenomena, and error estimation and mesh generation. It is emphasized that this is by no means an exhaustive list, and particularly papers on multi-scale, multi-physics or multi-disciplinary problems, and on new, emerging topics are welcome.
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