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Reduced Order Modeling of Dynamical Systems Using Artificial Neural Networks Applied to Water Circulation

机译:使用人工神经网络应用于水循环的动态系统阶数模拟

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General circulation models are essential tools in weather and hydrodynamic simulation. They solve discretized, complex physical equations in order to compute evolutionary states of dynamical systems, such as the hydrodynamics of a lake. However, high-resolution numerical solutions using such models are extremely computational and time consuming, often requiring a high performance computing architecture to be executed satisfactorily. Machine learning (ML)-based low-dimensional surrogate models are a promising alternative to speed up these simulations without undermining the quality of predictions. In this work, we develop two examples of fast, reliable, low-dimensional surrogate models to produce a 36 h forecast of the depth-averaged hydrodynamics at Lake George NY, USA. Our ML approach uses two widespread artificial neural network (ANN) architectures: fully connected neural networks and long short-term memory. These ANN architectures are first validated in the deterministic and chaotic regimes of the Lorenz system and then combined with proper orthogonal decomposition (to reduce the dimensionality of the incoming input data) to emulate the depth-averaged hydrodynamics of a flow simulator called SUNTANS. Results show the ANN-based reduced order models have promising accuracy levels (within 6% of the prediction range) and advocate for further investigation into hydrodynamic applications.
机译:一般循环模型是天气和流体动力学模拟中的必备工具。它们解决了离散化的复杂物理方程,以计算动态系统的进化状态,例如湖泊的流体动力学。然而,使用这种模型的高分辨率数值解决方案是极其计算和耗时的,通常需要令人满意地执行高性能计算架构。基于机器学习(ML)的低维代理模型是一个有前途的替代方案,可以加快这些模拟,而不会破坏预测的质量。在这项工作中,我们制定了两个快速,可靠,低维代理模型的例子,以产生美国湖乔治·纽约湖的深度平均流体动力学的36小时预测。我们的ML方法采用了两个广泛的人工神经网络(ANN)架构:完全连接的神经网络和长短短期内存。首先在Lorenz系统的确定性和混沌制度中验证这些ANN架构,然后与适当的正交分解组合(以降低输入数据的维度),以模拟流动模拟器的深度平均流体动力学称为Suntans。结果表明,基于安的秩序模型具有有希望的精度水平(在预测范围的6%以内),并倡导进一步调查流体动力学应用。

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