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首页> 外文期刊>SIAM Journal on Scientific Computing >REDUCED BASIS METHODS: FROM LOW-RANK MATRICES TO LOW-RANK TENSORS
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REDUCED BASIS METHODS: FROM LOW-RANK MATRICES TO LOW-RANK TENSORS

机译:减少的基础方法:从低秩矩阵到低秩张量

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We propose a novel combination of the reduced basis method with low-rank tensor techniques for the efficient solution of parameter-dependent linear systems in the case of several parameters. This combination, called rbTensor, consists of three ingredients. First, the underlying parameter-dependent operator is approximated by an explicit affine representation in a low-rank tensor format. Second, a standard greedy strategy is used to construct a problem-dependent reduced basis. Third, the associated reduced parametric system is solved for all parameter values on a tensor grid simultaneously via a low-rank approach. This allows us to explicitly represent and store an approximate solution for all parameter values at a time. Once this approximation is available, the computation of output functionals and the evaluation of statistics of the solution become a cheap online task, without requiring the solution of a linear system.
机译:我们提出了减少基数方法与低秩张量技术的新颖组合,以在多个参数情况下有效地求解参数相关的线性系统。此组合称为rbTensor,由三种成分组成。首先,底层参数相关算子由低秩张量格式的显式仿射表示近似。其次,使用标准的贪婪策略来构建问题相关的简化基础。第三,通过低秩方法同时针对张量网格上的所有参数值求解相关的简化参数系统。这使我们能够一次明确地表示并存储所有参数值的近似解。一旦有了这种近似值,就可以进行输出功能的计算和对解决方案统计信息的评估,成为一项廉价的在线任务,而无需线性系统的解决方案。

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