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A model reduction for highly non-linear problems using wavelets and the Gauss-Newton method

机译:使用小波和高斯 - 牛顿方法的高度非线性问题的模型降低

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A global regularized Gauss-Newton method is proposed to obtain a zero residual for square nonlinear problems on an affine subspace. The affine subspace is characterized by using wavelets which enable us to solve the problem without making simulations before solving it. We pose the problem as a zero-overdetermined nonlinear composite function where the inside function provided the solution we are seeking. A Gauss-Newton method is presented together with its standard Newton's assumptions that guarantee to retain the q-quadratic rate of convergence. To avoid the singularity and the high-nonlinearity a regularized strategy is presented which preserves the fast rate of convergence. A line-search method is included for global convergence. We rediscover that the Petrov-Galerkin (PG) inexact directions for the Newton method are the Gauss-Newton (GN) directions for the composite function. The results obtained in a set of large-scale problems show the capability of the method for reproducing their essential features while reducing the computational cost associated with high-dimensional problems by a substantial order of magnitude.
机译:建议在仿射子空间上获得全球正则化高斯 - 牛顿方法以获得零残留的方形非线性问题。仿射子空间的特点是使用小波,使我们能够在解决之前解决问题而不进行模拟。我们将问题造成作为零超出非线性复合功能,其中内部功能提供了我们正在寻求的解决方案。高斯 - 牛顿方法与其标准牛顿的假设一起介绍,以保证保留Q二次收敛速率。为避免奇点和高非线性,提出了正规化的策略,这保留了快速的收敛速度。包含线路搜索方法用于全局融合。我们重新发现牛顿方法的Petrov-galerkin(pg)不精确的方向是复合功能的高斯 - 牛顿(GN)方向。在一组大规模问题中获得的结果表明了用于再现其基本特征的方法的能力,同时通过大量级别降低与高维问题相关的计算成本。

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