In this paper, we propose a novel conservative formulation for solving kinetic equations via neural networks. More precisely, we formulate the learning problem as a constrained optimization problem with constraints that represent the physical conservation laws. The constraints are relaxed toward the residual loss function by the Lagrangian duality. By imposing physical conservation properties of the solution as constraints of the learning problem, we demonstrate far more accurate approximations of the solutions in terms of errors and the conservation laws, for the kinetic Fokker-Planck equation and the homogeneous Boltzmann equation.
翻译:在本文中,我们提出了一个通过神经网络解决动能方程式的新保守的提法。更确切地说,我们把学习问题描述成一个限制性的优化问题,其限制因素代表了物理保护法。 限制被拉格朗加两重性限制为剩余损失功能。 通过将实际保护特性作为解决学习问题的限制,我们用错误和保存法、动能Fokker-Planck方程式和同质的波尔茨曼方程式来展示出更准确的解决方案近似值。