We propose a hybrid framework opPINN: physics-informed neural network (PINN) with operator learning for approximating the solution to the Fokker-Planck-Landau (FPL) equation. The opPINN framework is divided into two steps: Step 1 and Step 2. After the operator surrogate models are trained during Step 1, PINN can effectively approximate the solution to the FPL equation during Step 2 by using the pre-trained surrogate models. The operator surrogate models greatly reduce the computational cost and boost PINN by approximating the complex Landau collision integral in the FPL equation. The operator surrogate models can also be combined with the traditional numerical schemes. It provides a high efficiency in computational time when the number of velocity modes becomes larger. Using the opPINN framework, we provide the neural network solutions for the FPL equation under the various types of initial conditions, and interaction models in two and three dimensions. Furthermore, based on the theoretical properties of the FPL equation, we show that the approximated neural network solution converges to the a priori classical solution of the FPL equation as the pre-defined loss function is reduced.
翻译:我们提议了一个混合框架POPINN:物理信息化神经网络(PINN),操作者学习如何接近Fokker-Planck-Landau(FPL)等式的解决方案。POPNN框架分为两步:步骤1和步骤2,操作者代用模型在步骤1期间接受培训后,PINN可以使用预先培训的代用模型,在步骤2期间有效地接近FPL方程式的解决方案。操作者代用模型通过接近FPL方方方程式中构成的复杂的Landau碰撞来大大降低计算成本和促进PINN。操作者代用模型也可以与传统的数字方案相结合。当速度模式数量增加时,它提供了较高的计算时间。我们使用OPINNN框架为各种类型的初始条件下的FPL方程式提供神经网络解决方案,并在两个和三个层面的互动模型中提供。此外,根据FPL方程式的理论特性,我们表明,近似的神经网络解决方案与FPL方程式先前的经典解决方案相融合,作为确定的损失前函数。