Physics-informed neural networks (PINNs) provide a deep learning framework for numerically solving partial differential equations (PDEs), and have been widely used in a variety of PDE problems. However, there still remain some challenges in the application of PINNs: 1) the mechanism of PINNs is unsuitable (at least cannot be directly applied) to exploiting a small size of (usually very few) extra informative samples to refine the networks; and 2) the efficiency of training PINNs often becomes low for some complicated PDEs. In this paper, we propose the generative adversarial physics-informed neural network (GA-PINN), which integrates the generative adversarial (GA) mechanism with the structure of PINNs, to improve the performance of PINNs by exploiting only a small size of exact solutions to the PDEs. Inspired from the weighting strategy of the Adaboost method, we then introduce a point-weighting (PW) method to improve the training efficiency of PINNs, where the weight of each sample point is adaptively updated at each training iteration. The numerical experiments show that GA-PINNs outperform PINNs in many well-known PDEs and the PW method also improves the efficiency of training PINNs and GA-PINNs.
翻译:物理知情神经网络(PINNs)为从数字上解决部分差异方程式提供了一个深层次的学习框架,并被广泛用于各种PDE问题。然而,在应用PINNs方面仍然存在一些挑战:1) PINNs机制不适合(至少不能直接应用)利用少量(通常很少)额外信息样本来完善网络;2)培训PINNs的效率对于一些复杂的PDEs来说往往较低。在本文件中,我们提议了将GA-PINN(GA-PINN)机制与PINNs结构相结合的GA(GA)机制,以提高PINNs的性能,仅利用少量(通常很少)额外信息样本来完善网络;以及2)培训PINNS的效率往往较低。我们建议采用一个点加权(PW)方法来提高PINNS的训练效率,在每次培训中都对每个样本的重量进行了调整更新,在PINNPNS培训中也提高了数字性PIN方法。