Physics-informed neural networks (PINNs) have attracted significant attention for solving partial differential equations (PDEs) in recent years because they alleviate the curse of dimensionality that appears in traditional methods. However, the most disadvantage of PINNs is that one neural network corresponds to one PDE. In practice, we usually need to solve a class of PDEs, not just one. With the explosive growth of deep learning, many useful techniques in general deep learning tasks are also suitable for PINNs. Transfer learning methods may reduce the cost for PINNs in solving a class of PDEs. In this paper, we proposed a transfer learning method of PINNs via keeping singular vectors and optimizing singular values (namely SVD-PINNs). Numerical experiments on high dimensional PDEs (10-d linear parabolic equations and 10-d Allen-Cahn equations) show that SVD-PINNs work for solving a class of PDEs with different but close right-hand-side functions.
翻译:近些年来,物理知情神经网络(PINNs)在解决局部差异方程式(PDEs)方面引起了极大关注,因为它们缓解了传统方法中出现的对维度的诅咒,然而,PINNs的最大缺点是,一个神经网络对应一个PDEs。在实践中,我们通常需要解决一类PDEs,而不仅仅是一个。随着深层次学习的爆炸性增长,许多普通深层次学习任务中的有用技术也适合PINNs。 转让学习方法可能降低PINNs解决某类PDEs的成本。在本文件中,我们建议通过保留单向量和优化单向值(即SVD-PINNs)来转移PINNs学习方法。高维度PDEs(10度线性线性参数方程式和10度Allen-Cahn方程式)的数值实验显示,SVD-PINNs致力于解决具有不同但近端功能的一类PDEs。