Physics-informed Neural Networks (PINNs) often have, in their loss functions, terms based on physical equations and derivatives. In order to evaluate these terms, the output solution is sampled using a distribution of collocation points. However, density-based strategies, in which the number of collocation points over the domain increases throughout the training period, do not scale well to multiple spatial dimensions. To remedy this issue, we present here a curriculum-training-based method for lightweight collocation point distributions during network training. We apply this method to a PINN which recovers a full two-dimensional magnetohydrodynamic (MHD) solution from a partial sample taken from a baseline MHD simulation. We find that the curriculum collocation point strategy leads to a significant decrease in training time and simultaneously enhances the quality of the reconstructed solution.
翻译:物理知情神经网络(PINNs)在其损失功能中往往具有基于物理方程式和衍生物的术语。为了评估这些术语,使用同地点分布法对产出解决方案进行抽样评估。然而,基于密度的战略,即整个培训期间全域同地点数增加的同地点数不及多个空间层面。为解决这一问题,我们在此提出一个基于课程的培训方法,用于网络培训中轻量同地点分布。我们将这种方法应用到一个PINN,该方法从一个基线的MHD模拟中的一部分样本中回收出一个完整的二维磁力流体动力(MHD)解决方案。我们发现,课程同地点战略导致培训时间大幅减少,同时提高重建解决方案的质量。