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Grid refinement and scaling for distributed parameter estimation problems

机译:网格优化和缩放以解决分布式参数估计问题

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摘要

This paper considers problems of distributed parameter estimation from data measurements on solutions of differential equations. A nonlinear least squares functional is minimized to approximately recover the sought parameter function (i.e. the model). This functional consists of a data fitting term, involving the solution of a finite volume or finite element discretization of the forward differential equation, and a Tikhonov-type regularization term, involving the discretization of a mix of model derivatives. The resulting nonlinear optimization problems can be very large and costly to solve. Thus, we seek way to solve as much of the problem as possible on coarse grids. We propose to search for the regularization parameter first on a coarse grid. Then, a gradual refinement technique to find both the forward and inverse solutions on finer grids is developed. The grid spacing of the model discretization, as well a the relative weight of the entire regularization term, affect the sort of regularization achieved and the algorithm for gradual grid refinement. We thus investigate a number of questions which arise regarding their relationship, including the correct scaling of the regularization matrix. For nonuniform grids we rigorously associate the practice of using unscaled regularization matrices with approximations of a weighted regularization functional. We also discuss interpolation for grid refinement. Our results are demonstrated numerically using synthetic examples in one and three dimensions.
机译:本文从微分方程解的数据测量中考虑了分布参数估计的问题。非线性最小二乘函数被最小化以近似地恢复所寻找的参数函数(即模型)。该函数由一个数据拟合项和一个Tikhonov型正则项组成,其中数据拟合项涉及正向微分方程的有限体积或有限元离散化,而Tikhonov型正则化项涉及对模型导数混合的离散化。由此产生的非线性优化问题可能非常大,而且解决成本很高。因此,我们寻求在粗网格上解决尽可能多的问题的方法。我们建议先在粗糙网格上搜索正则化参数。然后,开发了一种渐进的精化技术,可以找到更精细的网格上的正解和逆解。模型离散化的网格间距,以及整个正则化项的相对权重,都会影响所实现的正则化的种类以及渐进式网格细化的算法。因此,我们调查了有关它们之间关系的许多问题,包括正则化矩阵的正确缩放。对于非均匀网格,我们将使用非缩放正则化矩阵的做法与加权正则化函数的逼近严格关联。我们还将讨论用于网格细化的插值。我们的结果通过一维和三维综合实例进行了数值验证。

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