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An artificial neural network framework for reduced order modeling of transient flows

机译:一种人工神经网络框架,用于减少瞬态流量级型造型

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This paper proposes a supervised machine learning framework for the non-intrusive model order reduction of unsteady fluid flows to provide accurate predictions of non-stationary state variables when the control parameter values vary. Our approach utilizes a training process from full-order scale direct numerical simulation data projected on proper orthogonal decomposition (POD) modes to achieve an artificial neural network (ANN) model with reduced memory requirements. This data-driven ANN framework allows for a nonlinear time evolution of the modal coefficients without performing a Galerkin projection. Our POD-ANN framework can thus be considered an equation-free approach for latent space dynamics evolution of nonlinear transient systems and can be applied to a wide range of physical and engineering applications. Within this framework we introduce two architectures, namely sequential network (SN) and residual network (RN), to train the trajectory of modal coefficients. We perform a systematic analysis of the performance of the proposed reduced order modeling approaches on prediction of a nonlinear wave-propagation problem governed by the viscous Burgers equation, a simplified prototype setting for transient flows. We find that the POD-ANN-RN yields stable and accurate results for test problems assessed both within inside and outside of the database range and performs significantly better than the standard intrusive Galerkin projection model. Our results show that the proposed framework provides a non-intrusive alternative to the evolution of transient physics in a POD basis spanned space, and can be used as a robust predictive model order reduction tool for nonlinear dynamical systems. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文提出了一种监督机器学习框架,用于非侵入式流体流量的非侵入式模型顺序减少,以便在控制参数值变化时提供非稳定状态变量的准确预测。我们的方法利用了从全阶规模的直接数值模拟数据中投射到适当的正交分解(POD)模式的直接数值模拟数据,以实现具有降低的内存要求的人工神经网络(ANN)模型。该数据驱动的ANN框架允许模态系数的非线性时间演变而不执行Galerkin投影。因此,我们的POD-ANN框架可以被认为是非线性瞬态系统的潜在空间动态演化的无公式方法,并且可以应用于各种物理和工程应用。在此框架内,我们介绍了两个架构,即顺序网络(SN)和剩余网络(RN),以训练模态系数的轨迹。我们对所提出的降低阶阶建模方法的性能进行系统分析,以预测由粘性汉堡符号的非线性波传播问题的预测,瞬态流动的简化原型设置。我们发现Pod-Ann-RN产生稳定和准确的结果,可以在数据库范围内外进行评估的测试问题,并且表现明显优于标准侵入式Galerkin投影模型。我们的研究结果表明,该框架在田园田径基础上为暂停物理的演变提供了非侵入式替代方案,可用作非线性动力系统的稳健预测模型顺序工具。 (c)2019 Elsevier B.v.保留所有权利。

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