In the present work, a multi-scale framework for neural network enhanced methods is proposed for approximation of function and solution of partial differential equations (PDEs). By introducing the multi-scale concept, the total solution of the target problem could be decomposed into two parts, i.e. the coarse scale solution and the fine scale solution. In the coarse scale, the conventional numerical methods (e.g. finite element methods) are applied and the coarse scale solution could be obtained. In the fine scale, the neural networks is introduced to formulate the solution. The custom loss functions are developed by taking into account the governing equations and boundary conditions of PDEs, the constraints and the interaction from coarse scale. The proposed methods are illustrated and examined by various of testing cases.
翻译:在目前的工作中,提出了神经网络强化方法的多尺度框架,以近似功能和部分差异方程式的解决方案。通过引入多尺度概念,目标问题的总体解决方案可以分为两个部分,即粗体比例解决方案和微量比例解决方案。在粗体比例中,采用常规数字方法(如有限元素方法),并获得粗体比例解决方案。在精细规模中,引入神经网络以制定解决方案。习惯损失功能的开发,要考虑到PDE的方程式和边界条件、制约因素和粗体规模的相互作用。拟议方法由各种测试案例加以说明和审查。