Physics-informed radial basis network (PIRBN): A local approximating neural network for solving nonlinear PDEs

Bai, Jinshuai, Liu, Gui-Rong, Gupta, Ashish, Alzubaidi, Laith, Feng, Xi-Qiao, Gu, YuanTong

arXiv.org Artificial Intelligence 

Our recent intensive study has found that physics - informed neural networks (PINN) tend to be local approximators after training . This observation le d to th e development of a novel physics - informed rad ial basis network (PIRBN), which is capable of maintaining the local approximating property throughout the entire training process . Unlike deep neural networks, a PIRBN comprises only one hidden layer and a radial basis " activation " function. Under appropriate conditions, we demonstrated that the training of PIRBNs using gradient descendent methods can converge to Gaussian processes. Besides, we studied the training dynamics of PIRBN via the neural tangent kernel (NTK) theory. In addition, comprehens ive investigations regarding the initialisation strategies of PIRBN were conducted. Based on numerical examples, PIRBN has been demonstrated to be more effective than PINN in solving nonlinear partial differential equation s with high - frequency features and ill - posed computational domains. 2 Moreover, the existing PINN numerical techniques, such as adaptive learning, decomposition and different types of loss functions, are applicable to PIRBN.

Duplicate Docs Excel Report

Title
None found

Similar Docs  Excel Report  more

TitleSimilaritySource
None found