This study used a multigrid-based convolutional neural network architecture known as MgNet in operator learning to solve numerical partial differential equations (PDEs). Given the property of smoothing iterations in multigrid methods where low-frequency errors decay slowly, we introduced a low-frequency correction structure for residuals to enhance the standard V-cycle MgNet. The enhanced MgNet model can capture the low-frequency features of solutions considerably better than the standard V-cycle MgNet. The numerical results obtained using some standard operator learning tasks are better than those obtained using many state-of-the-art methods, demonstrating the efficiency of our model.Moreover, numerically, our new model is more robust in case of low- and high-resolution data during training and testing, respectively.
翻译:这项研究在操作员学习数字部分差异方程式(PDEs)时使用了多电网-共变神经网络结构,称为MgNet。鉴于在低频错误缓慢衰减的多电网方法中平滑迭代的特性,我们为残余物引入了低频校正结构,以加强标准V-循环MgNet。强化的MgNet模型可以比标准V-周期MgNet更好地捕捉解决方案的低频特征。使用一些标准操作员学习任务获得的数字结果比使用许多最先进的方法获得的数字结果要好,显示了我们模型的效率。此外,从数字上看,我们的新模型在培训和测试期间的低分辨率和高分辨率数据方面分别更为可靠。