Section 01
CGMPINN: An Innovative PINN Method Integrating GMM and Curriculum Learning
The team from Xi'an Jiaotong University proposed CGMPINN (Curriculum-Guided Gaussian Mixture Physics-Informed Neural Network), which models the PDE residual distribution using a Gaussian Mixture Model to implement a spatially adaptive curriculum learning strategy, reducing the relative L2 error by up to 97.8% on six benchmark PDE problems.