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M2^{2}2M: Learning controllable Multi of experts and multi-scale operators are the Partial Differential Equations need

1 October 2024
Aoming Liang
Zhaoyang Mu
Pengxiao Lin
Cong Wang
Mingming Ge
Ling Shao
Dixia Fan
Hao Tang
    AI4CE
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Abstract

Learning the evolutionary dynamics of Partial Differential Equations (PDEs) is critical in understanding dynamic systems, yet current methods insufficiently learn their representations. This is largely due to the multi-scale nature of the solution, where certain regions exhibit rapid oscillations while others evolve more slowly. This paper introduces a framework of multi-scale and multi-expert (M2^22M) neural operators designed to simulate and learn PDEs efficiently. We employ a divide-and-conquer strategy to train a multi-expert gated network for the dynamic router policy. Our method incorporates a controllable prior gating mechanism that determines the selection rights of experts, enhancing the model's efficiency. To optimize the learning process, we have implemented a PI (Proportional, Integral) control strategy to adjust the allocation rules precisely. This universal controllable approach allows the model to achieve greater accuracy. We test our approach on benchmark 2D Navier-Stokes equations and provide a custom multi-scale dataset. M2^22M can achieve higher simulation accuracy and offer improved interpretability compared to baseline methods.

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