In this paper, a shallow Ritz-type neural network for solving elliptic equations with delta function singular sources on an interface is developed. There are three novel features in the present work; namely, (i) the delta function singularity is naturally removed, (ii) level set function is introduced as a feature input, (iii) it is completely shallow, comprising only one hidden layer. We first introduce the energy functional of the problem and then transform the contribution of singular sources to a regular surface integral along the interface. In such a way, the delta function singularity can be naturally removed without introducing a discrete one that is commonly used in traditional regularization methods, such as the well-known immersed boundary method. The original problem is then reformulated as a minimization problem. We propose a shallow Ritz-type neural network with one hidden layer to approximate the global minimizer of the energy functional. As a result, the network is trained by minimizing the loss function that is a discrete version of the energy. In addition, we include the level set function of the interface as a feature input of the network and find that it significantly improves the training efficiency and accuracy. We perform a series of numerical tests to show the accuracy of the present method and its capability for problems in irregular domains and higher dimensions.
翻译:在本文中,开发了一个浅的 Ritz 类型神经网络,用于在界面上解决具有三角形函数单一源的椭圆方程式。当前工作有三个新特点,即:(一) 三角形函数单点自然去除,(二) 将水平设定函数作为特性输入引入,(三) 完全浅,只包含一个隐藏层。我们首先引入问题的能源功能,然后将单源的贡献转化为介质的正常表面部分。这样,三角形函数单点可以自然地去除,而不引入传统正规化方法中常用的离散功能,例如众所周知的浸透边界方法。最初的问题随后被重新确定为最小化问题。我们提出了一个浅的 Ritz 型神经网络,其中有一个隐藏层,以接近能源功能的全球最小化。因此,我们培训该网络的方法是将损失功能最小化,这是能源的离散版本。此外,我们还将接口的定级功能作为网络的特征输入,并发现它大大改进了当前培训效率和准确度领域。我们提出一个不定期的测试序列,以显示其数字能力的准确度。