Kolmogorov-Arnold PointNet:用于预测不规则几何图形上流体场的深度学习

Ali Kashefi
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摘要

我们提出的 Kolmogorov-Arnold PointNet(KA-PointNet)是一种新颖的监督深度学习框架,用于预测不规则域中不可压缩的稳态流场,其中预测的流场是域的几何形状的函数。在 KA-PointNet 中,我们在 PointNet 架构的分割分支中实现了共享的科尔莫格罗夫-阿诺德网络(KAN)。我们利用雅可比多项式构建共享 KAN。我们研究了不同度数的雅可比多项式以及雅可比多项式的特例(如 Legendre 多项式、第一种和第二种切比雪夫多项式以及格根鲍尔多项式)在训练计算成本和测试集预测精度方面的性能。此外,我们还比较了共享 KAN 的 PointNet(即 KA-PointNet)和共享多层感知器(MLP)的 PointNet 的性能。我们发现,当可训练参数的数量大致相同时,共享 KAN 的 PointNet(即 KA-PointNet)优于共享 MLP 的 PointNet。
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Kolmogorov-Arnold PointNet: Deep learning for prediction of fluid fields on irregular geometries
We present Kolmogorov-Arnold PointNet (KA-PointNet) as a novel supervised deep learning framework for the prediction of incompressible steady-state fluid flow fields in irregular domains, where the predicted fields are a function of the geometry of the domains. In KA-PointNet, we implement shared Kolmogorov-Arnold Networks (KANs) in the segmentation branch of the PointNet architecture. We utilize Jacobi polynomials to construct shared KANs. As a benchmark test case, we consider incompressible laminar steady-state flow over a cylinder, where the geometry of its cross-section varies over the data set. We investigate the performance of Jacobi polynomials with different degrees as well as special cases of Jacobi polynomials such as Legendre polynomials, Chebyshev polynomials of the first and second kinds, and Gegenbauer polynomials, in terms of the computational cost of training and accuracy of prediction of the test set. Additionally, we compare the performance of PointNet with shared KANs (i.e., KA-PointNet) and PointNet with shared Multilayer Perceptrons (MLPs). It is observed that when the number of trainable parameters is approximately equal, PointNet with shared KANs (i.e., KA-PointNet) outperforms PointNet with shared MLPs.
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