Hwang Hyung Ju, Jang Jin Woo, Jo Hyeontae, Lee Jae Yong
Department of Mathematics, Pohang University of Science and Technology (POSTECH), Pohang 37673, Republic of Korea.
Center for Geometry and Physics, Institute for Basic Science (IBS), Pohang 37673, Republic of Korea.
J Comput Phys. 2020 Oct 15;419:109665. doi: 10.1016/j.jcp.2020.109665. Epub 2020 Jun 10.
The issue of the relaxation to equilibrium has been at the core of the kinetic theory of rarefied gas dynamics. In the paper, we introduce the Deep Neural Network (DNN) approximated solutions to the kinetic Fokker-Planck equation in a bounded interval and study the large-time asymptotic behavior of the solutions and other physically relevant macroscopic quantities. We impose the varied types of boundary conditions including the inflow-type and the reflection-type boundaries as well as the varied diffusion and friction coefficients and study the boundary effects on the asymptotic behaviors. These include the predictions on the large-time behaviors of the pointwise values of the particle distribution and the macroscopic physical quantities including the total kinetic energy, the entropy, and the free energy. We also provide the theoretical supports for the pointwise convergence of the neural network solutions to the analytic solutions. We use the library , the activation function between layers, and the optimizer for the Deep Learning algorithm.
弛豫到平衡的问题一直是稀薄气体动力学动力学理论的核心。在本文中,我们引入了在有界区间内动力学福克 - 普朗克方程的深度神经网络(DNN)近似解,并研究了解的长时间渐近行为以及其他与物理相关的宏观量。我们施加了各种类型的边界条件,包括流入型和反射型边界,以及不同的扩散和摩擦系数,并研究边界对渐近行为的影响。这些包括对粒子分布的逐点值以及宏观物理量(包括总动能、熵和自由能)的长时间行为的预测。我们还为神经网络解到解析解的逐点收敛提供了理论支持。我们使用库 、层间的激活函数 以及深度学习算法的 优化器。