论文标题
Ginns:多尺理物理的图形信息网络
GINNs: Graph-Informed Neural Networks for Multiscale Physics
论文作者
论文摘要
我们介绍了图形信息神经网络(GINN)的概念,这是一种混合方法,将深度学习与概率图形模型(PGM)结合起来,该模型(PGMS)充当了基于物理学的多尺度和多物理系统的替代形式。 Ginns解决了基于物理学模型中固有的计算瓶颈的双重挑战,并生成了具有高度置信度的概率分布(QOIS)的大型数据集。 PGM的选择及其监督的学习/预测的选择及其监督的学习/预测都由PGM告知,其中包括为可调控制变量(CVS)的结构化PRIORS提出,以说明其相互关联并确保物理声音CV和QOI分布。 Ginns加速了基于模拟的决策必不可少的QOI的预测,在模拟决策中,仅使用基于物理的模型生成足够的样本数据通常非常昂贵。我们使用基于超级电容器的能源存储的现实世界应用,描述了用于超级电容器动力学的贝叶斯网络固定化模型的ginns的构建,并证明了它们产生相关非高斯的内核密度估算的能力,并与置信区间紧密相关。
We introduce the concept of a Graph-Informed Neural Network (GINN), a hybrid approach combining deep learning with probabilistic graphical models (PGMs) that acts as a surrogate for physics-based representations of multiscale and multiphysics systems. GINNs address the twin challenges of removing intrinsic computational bottlenecks in physics-based models and generating large data sets for estimating probability distributions of quantities of interest (QoIs) with a high degree of confidence. Both the selection of the complex physics learned by the NN and its supervised learning/prediction are informed by the PGM, which includes the formulation of structured priors for tunable control variables (CVs) to account for their mutual correlations and ensure physically sound CV and QoI distributions. GINNs accelerate the prediction of QoIs essential for simulation-based decision-making where generating sufficient sample data using physics-based models alone is often prohibitively expensive. Using a real-world application grounded in supercapacitor-based energy storage, we describe the construction of GINNs from a Bayesian network-embedded homogenized model for supercapacitor dynamics, and demonstrate their ability to produce kernel density estimates of relevant non-Gaussian, skewed QoIs with tight confidence intervals.