In this paper, we study adaptive neuron enhancement (ANE) method for solving self-adjoint second-order elliptic partial differential equations (PDEs). The ANE method is a self-adaptive method generating a two-layer spline NN and a numerical integration mesh such that the approximation accuracy is within the prescribed tolerance. Moreover, the ANE method provides a natural process for obtaining a good initialization which is crucial for training nonlinear optimization problem. The underlying PDE is discretized by the Ritz method using a two-layer spline neural network based on either the primal or dual formulations that minimize the respective energy or complimentary functionals. Essential boundary conditions are imposed weakly through the functionals with proper norms. It is proved that the Ritz approximation is the best approximation in the energy norm; moreover, effect of numerical integration for the Ritz approximation is analyzed as well. Two estimators for adaptive neuron enhancement method are introduced, one is the so-called recovery estimator and the other is the least-squares estimator. Finally, numerical results for diffusion problems with either corner or intersecting interface singularities are presented.
翻译:在本文中,我们研究适应性神经元增强(ANE)方法,以解决自我联合的二阶等离子部分等分方程(PDEs)。ANE方法是一种自适应方法,产生双层样条线NN和数字整合网格,使近似精确度在规定的容忍度范围内。此外,ANE方法为获得良好的初始化提供了一个自然过程,这对培训非线性优化问题至关重要。根基PDE由Ritz方法使用双层样条线神经网络分解,其基础是将各自的能量或补充功能降到最低的初线或双层神经网络。基本边界条件通过功能和适当规范来弱化。事实证明,Ritz近似是能源规范中的最佳近似值;此外,还对Ritz近距离数字整合的效果进行了分析。引入了适应性神经增强方法的两个估计器,一个是所谓的恢复估计器,另一个是最小的估量器。最后,介于角或截面界面的传播问题的数字结果是最小的缩图。