Repeatedly solving the parameterized optimal mass transport (pOMT) problem is a frequent task in applications such as image registration and adaptive grid generation. It is thus critical to develop a highly efficient reduced solver that is equally accurate as the full order model. In this paper, we propose such a machine learning-like method for pOMT by adapting a new reduced basis (RB) technique specifically designed for nonlinear equations, the reduced residual reduced over-collocation (R2-ROC) approach, to the parameterized Monge-Amp$\grave{\rm e}$re equation. It builds on top of a narrow-stencil finite different method (FDM), a so-called truth solver, which we propose in this paper for the Monge-Amp$\grave{\rm e}$re equation with a transport boundary. Together with the R2-ROC approach, it allows us to handle the strong and unique nonlinearity pertaining to the Monge-Amp$\grave{\rm e}$re equation achieving online efficiency without resorting to any direct approximation of the nonlinearity. Several challenging numerical tests demonstrate the accuracy and high efficiency of our method for solving the Monge-Amp$\grave{\rm e}$re equation with various parametric boundary conditions.
翻译:在图像登记和适应性电网生成等应用中,反复解决参数化最佳大众运输(POMT)问题是一项常见的任务,因此,开发一个高效的、与全顺序模型同样准确的高效减缩解答器至关重要。在本文中,我们建议对POMT采用一种类似机器学习的方法,即对非线性方程专门设计的新的减缩基础(RB)技术进行修改,减少残留的超水平分配(R2-ROC)方法,对以蒙-安普$\grave=rm e为参数化的超水平分配(R2-ROC)方法进行减缩(R2-ROC),对蒙-安普\grave\rm e 等值的减量性(R2-ROC)方法进行减量性减量性超线性(R2-ROC),对蒙-安格-Ample$\grave_rm e美元进行等价实现在线效率而无需直接接近非线性美元的不同方法(FMMDM),即所谓的真相解答器,我们在本文中为蒙-A具有挑战性数字方程方法的精确性和高效率。