We propose a method, based on Artificial Neural Networks, that learns the dependence of the constant in the Poincar\'e inequality on polygonal elements of Voronoi meshes, on some geometrical metrics of the element. The cost of this kind of algorithms mainly resides in the data preprocessing and learning phases, that can be performed offline once and for all, constructing an efficient method for computing the constant, which is needed in the design of a posteriori error estimates in numerical mesh-based schemes for the solution of Partial Differential Equations.
翻译:我们提出了一个基于人工神经网络的方法,以了解Poincar'e不平等常数对Voronoi meshes多边形元素的依赖性,对元素的某些几何测量度值的依赖性。这种算法的成本主要在于数据预处理和学习阶段,可以一劳永逸地从网上进行,建立计算常数的有效方法,这是设计基于数字网格的网格计划,对解决部分差异的后期误差估计中所需的。