Simulating fluid flows in different virtual scenarios is of key importance in engineering applications. However, high-fidelity, full-order models relying, e.g., on the finite element method, are unaffordable whenever fluid flows must be simulated in almost real-time. Reduced order models (ROMs) relying, e.g., on proper orthogonal decomposition (POD) provide reliable approximations to parameter-dependent fluid dynamics problems in rapid times. However, they might require expensive hyper-reduction strategies for handling parameterized nonlinear terms, and enriched reduced spaces (or Petrov-Galerkin projections) if a mixed velocity-pressure formulation is considered, possibly hampering the evaluation of reliable solutions in real-time. Dealing with fluid-structure interactions entails even higher difficulties. The proposed deep learning (DL)-based ROMs overcome all these limitations by learning in a non-intrusive way both the nonlinear trial manifold and the reduced dynamics. To do so, they rely on deep neural networks, after performing a former dimensionality reduction through POD enhancing their training times substantially. The resulting POD-DL-ROMs are shown to provide accurate results in almost real-time for the flow around a cylinder benchmark, the fluid-structure interaction between an elastic beam attached to a fixed, rigid block and a laminar incompressible flow, and the blood flow in a cerebral aneurysm.
翻译:不同虚拟情景中的模拟流体流是工程应用的关键。然而,如果考虑采用混合速度压力的配方,那么在几乎实时地模拟流体流时,高纤维、全序模型(例如有限元素法)是无法承受的,只要几乎实时地模拟流体流体流体流体流体流体流体流体流体流体流体流体流体流体流体流体流体(ROMs)依赖正方正方正方正方正方正方正方正方正方正方正方位的深度学习(DL)模型(PODL),通过快速地以非线性试验和减弱的动态性能问题提供可靠的近似点,从而克服所有这些限制。然而,如果考虑采用混合速度压力的配制,则需要花费昂贵的超强度战略来处理参数化非线性能的非线性液体动态,并需要大量减少空间(或Petrovev-Galkin预测),从而可能妨碍实时地对可靠解决方案的评估。处理流体结构的相互作用甚至将硬质-BRODDMRal-RO-RO-ROMal-ROmasal-lamal-lamal-las在实际的固定的流体流体流体流体流体流体流体流体流体流体流体流体流体向上显示一个精确的流体流体流体流体流体流体流体流体流体流体流体流体流体向。