We propose a new method to deal with the essential boundary conditions encountered in the deep learning-based numerical solvers for partial differential equations. The trial functions representing by deep neural networks are non-interpolatory, which makes the enforcement of the essential boundary conditions a nontrivial matter. Our method resorts to Nitsche's variational formulation to deal with this difficulty, which is consistent, and does not require significant extra computational costs. We prove the error estimate in the energy norm and illustrate the method on several representative problems posed in at most 100 dimension.
翻译:我们提出一种新的方法,处理深层学习型数字求解器中遇到的局部差异方程式的基本边界条件。深神经网络所代表的试验功能是非内插性的,这使得基本边界条件的执行成为非三重性事项。我们的方法是采用尼采的变式公式来应付这一困难,这是一致的,不需要大量额外的计算费用。我们证明了能源规范中的错误估计,并说明了在最多100维范围内提出的若干代表性问题的方法。