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

Author:

Morozov Alexander Yu.1ORCID,Reviznikov Dmitry L.12ORCID

Affiliation:

1. Federal Research Center “Computer Science and Control” of the Russian Academy of Sciences, St. Vavilova, 44, Bld. 2, 119333 Moscow, Russia

2. Moscow Aviation Institute, National Research University, Volokolamskoe Hwy., 4, 125993 Moscow, Russia

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.

Funder

Ministry of Science and Higher Education of the Russian Federation

Publisher

MDPI AG

Subject

Applied Mathematics,Modeling and Simulation,General Computer Science,Theoretical Computer Science

Reference30 articles.

1. Moore, R.E., Kearfott, R.B., and Cloud, M.J. (2009). Introduction to Interval Analysis, Society for Industrial and Applied Mathematics.

2. Dobronets, B.S. (2007). Interval Mathematics, Krasnoyarsk State University.

3. Shary, S. (2020). Interval Regularization for Inaccurate Linear Algebraic Equations, Springer. Chapter in the book: Beyond Traditional Probabilistic Data Processing Techniques: Interval, Fuzzy etc. Methods and Their Applications.

4. Herzberger, J. (1994). Topics in Validated Computations, Elsevier.

5. Chernousko, F.L. (1998). Evaluation of Phase States of Dynamic Systems. The Method of Ellipsoids, Science.

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