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Reduced order modeling of fluid flows: Machine learning, Kolmogorov barrier, closure modeling, and partitioning

机译:减少流体流量的秩序建模:机器学习,kolmogorov屏障,封闭建模和分区

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In this paper, we put forth a long short-term memory (LSTM) nudging framework for the enhancement of reduced order models (ROMs) of fluid flows utilizing noisy measurements. We build on the fact that in a realistic application, there are uncertainties in initial conditions, boundary conditions, model parameters, and/or field measurements. Moreover, conventional nonlinear ROMs based on Galerkin projection (GROMs) suffer from imperfection and solution instabilities due to the modal truncation, especially for advection-dominated flows with slow decay in the Kolmogorov width. In the presented LSTM-Nudge approach, we fuse forecasts from a combination of imperfect GROM and uncertain state estimates, with sparse Eulerian sensor measurements to provide more reliable predictions in a dynamical data assimilation framework. We illustrate the idea with the viscous Burgers problem, as a benchmark test bed with quadratic nonlinearity and Laplacian dissipation. We investigate the effects of measurements noise and state estimate uncertainty on the performance of the LSTM-Nudge behavior. We also demonstrate that it can sufficiently handle different levels of temporal and spatial measurement sparsity. This first step in our assessment of the proposed model shows that the LSTM nudging could represent a viable realtime predictive tool in emerging digital twin systems.
机译:在本文中,我们提出了一种利用噪声测量的流体流量的减少阶模型(ROM)的增强的长短期记忆(LSTM)。我们建立在实际应用中,初始条件,边界条件,模型参数和/或现场测量中存在不确定性。此外,由于模态截断,基于Galerkin投影(Groms)的传统非线性ROM遭受缺陷和解决方案不稳定性,特别是对于在Kolmogorov宽度中具有缓慢衰减的平流主导流动。在呈现的LSTM轻浮的方法中,我们从不完美的Grom和不确定状态估计的组合中融合预测,具有稀疏的欧拉传感器测量,以提供在动态数据同化框架中提供更可靠的预测。我们用粘性汉堡问题来说明了这个想法,作为具有二次非线性和拉普拉斯耗散的基准测试床。我们调查测量噪声和状态估计不确定性对LSTM轻推行为的性能的影响。我们还证明它可以充分处理不同水平的时间和空间测量稀疏性。我们对拟议模型评估的第一步表明,LSTM NUDGENG可以代表新出现的数字双系统中的可行实时预测工具。

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