论文标题
深hyromnet:基于深度学习的操作员近似非线性参数化PDE
Deep-HyROMnet: A deep learning-based operator approximation for hyper-reduction of nonlinear parametrized PDEs
论文作者
论文摘要
为了加快解决参数差异问题的解决方案,多年来已经开发了降低的订单模型(ROM),包括基于投影的ROM,例如减少基础方法(RB)方法,基于深度学习的ROM以及通过机器学习方法获得的代孕模型。由于其基于物理的结构,通过将完整订单模型(FOM)的Galerkin投影在线性低维子空间上使用确保,RB方法产生的近似值可以满足手头物理问题。但是,为了使ROM独立于FOM维度的组装,通常需要进行侵入性和昂贵的超还原阶段,例如离散的经验插值方法(DEIM),因此该策略对于以高阶多项式或非多分解性)非线性为特征的问题不那么可行。为了克服这种瓶颈,我们提出了一种使用深神经网络(DNNS)学习非线性ROM操作员的新策略。由深层神经网络增强了所得的超降低订单模型,我们将其称为深hyromnet,然后是一种基于物理的模型,仍然依靠RB方法方法,但是一旦执行了Galerkin投影,采用DNN架构来近似降低残留媒介和Jacobian矩阵。在非线性结构力学中涉及快速模拟的数值结果表明,深嗜蜂窝的数量级比Pod-Galerkin-Deim-ROM快,保持了相同的准确性。
To speed-up the solution to parametrized differential problems, reduced order models (ROMs) have been developed over the years, including projection-based ROMs such as the reduced-basis (RB) method, deep learning-based ROMs, as well as surrogate models obtained via a machine learning approach. Thanks to its physics-based structure, ensured by the use of a Galerkin projection of the full order model (FOM) onto a linear low-dimensional subspace, RB methods yield approximations that fulfill the physical problem at hand. However, to make the assembling of a ROM independent of the FOM dimension, intrusive and expensive hyper-reduction stages are usually required, such as the discrete empirical interpolation method (DEIM), thus making this strategy less feasible for problems characterized by (high-order polynomial or nonpolynomial) nonlinearities. To overcome this bottleneck, we propose a novel strategy for learning nonlinear ROM operators using deep neural networks (DNNs). The resulting hyper-reduced order model enhanced by deep neural networks, to which we refer to as Deep-HyROMnet, is then a physics-based model, still relying on the RB method approach, however employing a DNN architecture to approximate reduced residual vectors and Jacobian matrices once a Galerkin projection has been performed. Numerical results dealing with fast simulations in nonlinear structural mechanics show that Deep-HyROMnets are orders of magnitude faster than POD-Galerkin-DEIM ROMs, keeping the same level of accuracy.