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Basis norm rescaling for nonlinear parameter estimation

机译:非线性参数估计的基础范数重定标度

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摘要

We consider the ill-posed, nonlinear problem of recovering the diffusion function in a one-dimensional elliptic equation. Previous work has revealed a correlation between high nonlinearity, low sensitivity, and short scale for this problem. It was noted that representing the unknown function by the multiscale Haar basis gave faster convergence than use of a local basis. The superior performance of the Haar basis was found to be related to the norms of the individual basis elements of this basis not being equal. The norm decreases with decreasing scale, enhancing the influence of parameters associated with low nonlinearity. Also, a hierarchical scale-by-scale approach was suggested to utilize the correlation between nonlinearity, scale, and sensitivity to increase the convergence speed of the parameter estimation. Through numerical experiments, we consider the effect of a systematic rescaling of the norms of the basis elements on the efficiency of the Broydon-Fletcher -Goldfarb-Shanno (BFGS) quasi-Newton minimization procedure. Norm rescaling is considered both for estimation of all parameters simultaneously, and for hierarchical scale-by-scale optimization. [References: 20]
机译:我们考虑一维椭圆方程中恢复扩散函数的不适定非线性问题。先前的工作揭示了此问题的高非线性,低灵敏度和小范围之间的相关性。值得注意的是,用多尺度Haar基表示未知函数可以比使用局部基更快地收敛。发现Haar基础的优越性能与该基础的各个基础元素的规范不相等有关。范数随着尺度的减小而减小,从而增强了与低非线性相关的参数的影响。此外,提出了一种按比例缩放的方法,以利用非线性,比例和灵敏度之间的相关性来提高参数估计的收敛速度。通过数值实验,我们考虑了对基本元素规范进行系统重定比例对Broydon-Fletcher-Goldfarb-Shanno(BFGS)拟牛顿最小化过程效率的影响。范数重定标既可用于同时估计所有参数,又可用于逐级逐级优化。 [参考:20]

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