论文标题

用于数据驱动的湍流时空学习的自回旋变压器

Autoregressive Transformers for Data-Driven Spatio-Temporal Learning of Turbulent Flows

论文作者

Patil, Aakash, Viquerat, Jonathan, Hachem, Elie

论文摘要

提出了一个基于卷积编码器 - 模型的变压器模型,用于对湍流的时空数据进行自动训练。未来流体流场的预测基于先前预测的流体流场,以确保长期预测而不会发散。卷积神经网络和变压器体系结构的结合用于处理数据的空间和时间维度。为了评估模型的性能,进行了先验评估,并与地面真相数据找到了重要协议。 A后验预测是在大量仿真步骤后生成的,显示了预测的方差。后验状态的自回归训练和预测是为开发更复杂的数据驱动的湍流模型和模拟的关键步骤。湍流的高度非线性和混乱动力学可以通过所提出的模型来处理,并且可以在长期范围内进行准确的预测。总体而言,这种方法证明了使用深度学习技术来提高湍流建模和仿真的准确性和效率的潜力。提出的模型可以进一步优化并扩展,以结合其他物理和边界条件,为更逼真的复杂流体动力学铺平了道路。

A convolutional encoder-decoder-based transformer model is proposed for autoregressively training on spatio-temporal data of turbulent flows. The prediction of future fluid flow fields is based on the previously predicted fluid flow field to ensure long-term predictions without diverging. A combination of convolutional neural networks and transformer architecture is utilized to handle both the spatial and temporal dimensions of the data. To assess the performance of the model, a priori assessments are conducted, and significant agreements are found with the ground truth data. The a posteriori predictions, which are generated after a considerable number of simulation steps, exhibit predicted variances. The autoregressive training and prediction of a posteriori states are deemed crucial steps towards the development of more complex data-driven turbulence models and simulations. The highly nonlinear and chaotic dynamics of turbulent flows can be handled by the proposed model, and accurate predictions over long time horizons can be generated. Overall, the potential of using deep learning techniques to improve the accuracy and efficiency of turbulence modeling and simulation is demonstrated by this approach. The proposed model can be further optimized and extended to incorporate additional physics and boundary conditions, paving the way for more realistic simulations of complex fluid dynamics.

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