Hyena neural operator for partial differential equations

Saurabh Patil, Zijie Li, Amir Barati Farimani
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Abstract

Numerically solving partial differential equations typically requires fine discretization to resolve necessary spatiotemporal scales, which can be computationally expensive. Recent advances in deep learning have provided a new approach to solving partial differential equations that involves the use of neural operators. Neural operators are neural network architectures that learn mappings between function spaces and have the capability to solve partial differential equations based on data. This study utilizes a novel neural operator called Hyena, which employs a long convolutional filter that is parameterized by a multilayer perceptron. The Hyena operator is an operation that enjoys sub-quadratic complexity and enjoys a global receptive field at the meantime. This mechanism enhances the model’s comprehension of the input’s context and enables data-dependent weight for different partial differential equation instances. To measure how effective the layers are in solving partial differential equations, we conduct experiments on the diffusion–reaction equation and Navier–Stokes equation and compare it with the Fourier neural operator. Our findings indicate that the Hyena neural operator can serve as an efficient and accurate model for learning the partial differential equation solution operator. The data and code used can be found at https://github.com/Saupatil07/Hyena-Neural-Operator.
偏微分方程的鬣狗神经算子
数值求解偏微分方程通常需要精细离散化,以解决必要的时空尺度问题,这可能会导致计算成本高昂。深度学习的最新进展为偏微分方程的求解提供了一种新方法,其中涉及神经算子的使用。神经算子是一种神经网络架构,可以学习函数空间之间的映射,并有能力根据数据求解偏微分方程。本研究采用了一种名为 "Hyena "的新型神经算子,它采用了一个由多层感知器参数化的长卷积滤波器。Hyena 运算器是一种具有亚二次方复杂性的运算,同时具有全局感受野。这种机制增强了模型对输入上下文的理解,并使不同偏微分方程实例的权重与数据相关。为了衡量神经层在求解偏微分方程时的有效性,我们对扩散反应方程和纳维-斯托克斯方程进行了实验,并与傅立叶神经算子进行了比较。我们的研究结果表明,Hyena 神经算子可以作为学习偏微分方程解算子的高效、准确模型。使用的数据和代码可在 https://github.com/Saupatil07/Hyena-Neural-Operator 上找到。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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