Nonlinear model order reduction for problems with microstructure using mesh informed neural networks

Vitullo, Piermario, Colombo, Alessio, Franco, Nicola Rares, Manzoni, Andrea, Zunino, Paolo
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Abstract

Many applications in computational physics involve approximating problems with microstructure, characterized by multiple spatial scales in their data. However, these numerical solutions are often computationally expensive due to the need to capture fine details at small scales. As a result, simulating such phenomena becomes unaffordable for many-query applications, such as parametrized systems with multiple scale-dependent features. Traditional projection-based reduced order models (ROMs) fail to resolve these issues, even for second-order elliptic PDEs commonly found in engineering applications. To address this, we propose an alternative nonintrusive strategy to build a ROM, that combines classical proper orthogonal decomposition (POD) with a suitable neural network (NN) model to account for the small scales. Specifically, we employ sparse mesh-informed neural networks (MINNs), which handle both spatial dependencies in the solutions and model parameters simultaneously. We evaluate the performance of this strategy on benchmark problems and then apply it to approximate a real-life problem involving the impact of microcirculation in transport phenomena through the tissue microenvironment.
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基于网格信息神经网络的微结构问题非线性模型降阶
计算物理中的许多应用涉及微观结构的近似问题,其数据具有多个空间尺度的特征。然而,由于需要在小尺度上捕获精细细节,这些数值解决方案通常在计算上很昂贵。因此,对于许多查询应用程序(例如具有多个尺度相关特征的参数化系统)来说,模拟这种现象变得难以承受。传统的基于投影的降阶模型(ROMs)无法解决这些问题,即使对于工程应用中常见的二阶椭圆偏微分方程也是如此。为了解决这个问题,我们提出了一种替代的非侵入性策略来构建ROM,该策略将经典的正交分解(POD)与合适的神经网络(NN)模型相结合,以考虑小尺度。具体来说,我们采用稀疏网格通知神经网络(MINNs),它同时处理解决方案和模型参数中的空间依赖关系。我们评估了该策略在基准问题上的性能,然后将其应用于接近现实生活中的问题,该问题涉及通过组织微环境的运输现象中微循环的影响。
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