核心概念
The author introduces the Separable Physics-Informed Neural Networks (SPINNs) method to efficiently solve the BGK model of the Boltzmann equation by reducing computational costs and enhancing accuracy.
摘要
The study introduces SPINNs to address challenges in solving the BGK model efficiently. By leveraging separable neural networks, the method reduces computational expenses and improves accuracy in approximating macroscopic moments. The results demonstrate strong agreement between SPINN predictions and reference solutions across various Knudsen numbers, showcasing the effectiveness of the approach.
統計資料
For each descent step, collocation points were sampled in the size of (Nt, Nx, Nv) = (12, 16, 123).
The entire computation was completed in approximately 4 minutes.
The optimization process involved 100K gradient descent steps.
In each iteration of the process, we randomly sample points in the configuration (Nt, Nx, Nvx, Nvy, Nvz) = (12, 32, 32, 12, 12).