cs.AI updates on arXiv.org 07月18日 12:13
Improving physics-informed neural network extrapolation via transfer learning and adaptive activation functions
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本文提出了一种基于迁移学习和自适应激活函数的物理信息神经网络(PINNs)改进方法,有效提升了PINNs在外推域的性能,实现相对L2误差平均降低40%,平均绝对误差降低50%,且计算成本增加不明显。

arXiv:2507.12659v1 Announce Type: cross Abstract: Physics-Informed Neural Networks (PINNs) are deep learning models that incorporate the governing physical laws of a system into the learning process, making them well-suited for solving complex scientific and engineering problems. Recently, PINNs have gained widespread attention as a powerful framework for combining physical principles with data-driven modeling to improve prediction accuracy. Despite their successes, however, PINNs often exhibit poor extrapolation performance outside the training domain and are highly sensitive to the choice of activation functions (AFs). In this paper, we introduce a transfer learning (TL) method to improve the extrapolation capability of PINNs. Our approach applies transfer learning (TL) within an extended training domain, using only a small number of carefully selected collocation points. Additionally, we propose an adaptive AF that takes the form of a linear combination of standard AFs, which improves both the robustness and accuracy of the model. Through a series of experiments, we demonstrate that our method achieves an average of 40% reduction in relative L2 error and an average of 50% reduction in mean absolute error in the extrapolation domain, all without a significant increase in computational cost. The code is available at https://github.com/LiuzLab/PINN-extrapolation .

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物理信息神经网络 迁移学习 自适应激活函数 外推能力 PINNs
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