Adaptive Sparse Grids with Nonlinear Basis in Interval Problems for Dynamical Systems

A. Morozov, D. Reviznikov
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Abstract

Problems with interval uncertainties arise in many applied fields. The authors have earlier developed, tested, and proved an adaptive interpolation algorithm for solving this class of problems. The algorithm’s idea consists of constructing a piecewise polynomial function that interpolates the dependence of the problem solution on point values of interval parameters. The classical version of the algorithm uses polynomial full grid interpolation and, with a large number of uncertainties, the algorithm becomes difficult to apply due to the exponential growth of computational costs. Sparse grid interpolation requires significantly less computational resources than interpolation on full grids, so their use seems promising. A representative number of examples have previously confirmed the effectiveness of using adaptive sparse grids with a linear basis in the adaptive interpolation algorithm. The purpose of this paper is to apply adaptive sparse grids with a nonlinear basis for modeling dynamic systems with interval parameters. The corresponding interpolation polynomials on the quadratic basis and the fourth-degree basis are constructed. The efficiency, performance, and robustness of the proposed approach are demonstrated on a representative set of problems.
动态系统区间问题的非线性基自适应稀疏网格
在许多应用领域都存在区间不确定性问题。作者早先已经开发、测试并证明了一种自适应插值算法来解决这类问题。该算法的思想是构造一个分段多项式函数来插值问题解对区间参数点值的依赖关系。该算法的经典版本采用多项式全网格插值,由于存在大量的不确定性,计算成本呈指数增长,使得该算法难以应用。稀疏网格插值比全网格插值所需的计算资源要少得多,因此它们的使用似乎很有前景。以前有代表性的例子已经证实了在自适应插值算法中使用线性基的自适应稀疏网格的有效性。本文的目的是将具有非线性基础的自适应稀疏网格应用于具有区间参数的动态系统的建模。构造了相应的二次基和四次基插值多项式。在一组具有代表性的问题上证明了所提出方法的效率、性能和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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