论文标题

缩小大规模河流模型的圣人方程的物理信息神经网络

Physics-informed neural networks of the Saint-Venant equations for downscaling a large-scale river model

论文作者

Feng, Dongyu, Tan, Zeli, He, QiZhi

论文摘要

大规模的河流模型正在沿海地区进行完善,以改善对沿海过程,危害和对气候变化的反应的科学理解。然而,潮汐河的物理表示的粗糙网状分辨率和近似值限制了这种模型在解决复杂的流动动力学方面,尤其是河流界面附近的性能,从而导致不准确的洪水淹没模拟。在这项研究中,我们提出了一个基于最新物理信息的神经网络(PINN)的机器学习(ML)框架,以模拟以亚网格量表的缩写流量。首先,我们证明Pinn能够吸收对各种类型的观察结果,并直接求解一维(1-d)圣人方程(SVE)。在几个综合案例研究中,我们对洪泛区和开放通道进行流动模拟。针对分析解决方案和数值模型评估PINN性能。我们的结果表明,水深的PINN溶液具有令人满意的精度,而观察结果有限。在风暴潮和潮汐引起的洪水传播的情况下,提出了一种新的神经网络架构,它基于傅立叶特征嵌入,无缝编码Pinn的配方中的周期性潮汐边界条件。此外,我们表明,基于PINN的降尺度可以通过吸收观察数据来产生沿通道水深的更合理的亚网格溶液。 PINN解决方案优于简单的线性插值,以解决亚网格量表的地形和动态流程度。这项研究为提高大规模模型的仿真能力提供了一种有希望的途径,以表征精细的沿海过程。

Large-scale river models are being refined over coastal regions to improve the scientific understanding of coastal processes, hazards and responses to climate change. However, coarse mesh resolutions and approximations in physical representations of tidal rivers limit the performance of such models at resolving the complex flow dynamics especially near the river-ocean interface, resulting in inaccurate simulations of flood inundation. In this research, we propose a machine learning (ML) framework based on the state-of-the-art physics-informed neural network (PINN) to simulate the downscaled flow at the subgrid scale. First, we demonstrate that PINN is able to assimilate observations of various types and solve the one-dimensional (1-D) Saint-Venant equations (SVE) directly. We perform the flow simulations over a floodplain and along an open channel in several synthetic case studies. The PINN performance is evaluated against analytical solutions and numerical models. Our results indicate that the PINN solutions of water depth have satisfactory accuracy with limited observations assimilated. In the case of flood wave propagation induced by storm surge and tide, a new neural network architecture is proposed based on Fourier feature embeddings that seamlessly encodes the periodic tidal boundary condition in the PINN's formulation. Furthermore, we show that the PINN-based downscaling can produce more reasonable subgrid solutions of the along-channel water depth by assimilating observational data. The PINN solution outperforms the simple linear interpolation in resolving the topography and dynamic flow regimes at the subgrid scale. This study provides a promising path towards improving emulation capabilities in large-scale models to characterize fine-scale coastal processes.

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