We develop an error estimator for neural network approximations of PDEs. The proposed approach is based on dual weighted residual estimator (DWR). It is destined to serve as a stopping criterion that guarantees the accuracy of the solution independently of the design of the neural network training. The result is equipped with computational examples for Laplace and Stokes problems.
翻译:我们为PDEs神经网络近似值开发了误差估计器。 提议的方法基于双加权剩余估计器(DWR ), 注定要作为一个停止标准, 保证解决方案的准确性, 独立于神经网络培训的设计。 其结果为 Laplace 和 Stokes 问题提供了计算示例 。