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Reduced-order extrapolation spectral-finite difference scheme based on POD method and error estimation for three-dimensional parabolic equation

Reduced-order extrapolation spectral-finite difference scheme based on POD method and error estimation for three-dimensional parabolic equation
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摘要 In this study, a classical spectral-finite difference scheme (SFDS) for the three-dimensional (3D) parabolic equation is reduced by using proper orthogonal decomposition (POD) and singular value decomposition (SVD). First, the 3D parabolic equation is discretized in spatial variables by using spectral collocation method and the discrete scheme is transformed into matrix formulation by tensor product. Second~ the classical SFDS is obtained by difference discretization in time-direction. The ensemble of data are comprised with the first few transient solutions of the classical SFDS for the 3D parabolic equation and the POD bases of ensemble of data are generated by using POD technique and SVD. The unknown quantities of the classical SFDS are replaced with the linear combination of POD bases and a reduced- order extrapolation SFDS with lower dimensions and sufficiently high accuracy for the 3D parabolic equation is established. Third, the error estimates between the classical SFDS solutions and the reduced-order extrapolation SFDS solutions and the implementation for solving the reduced-order extrapolation SFDS are provided. Finally, a numerical example shows that the errors of numerical computations are consistent with the theoretical results. Moreover, it is shown that the reduced-order extrapolation SFDS is effective and feasible to find the numerical solutions for the 3D parabolic equation. In this study, a classical spectral-finite difference scheme (SFDS) for the three-dimensional (3D) parabolic equation is reduced by using proper orthogonal decomposition (POD) and singular value decomposition (SVD). First, the 3D parabolic equation is discretized in spatial variables by using spectral collocation method and the discrete scheme is transformed into matrix formulation by tensor product. Second~ the classical SFDS is obtained by difference discretization in time-direction. The ensemble of data are comprised with the first few transient solutions of the classical SFDS for the 3D parabolic equation and the POD bases of ensemble of data are generated by using POD technique and SVD. The unknown quantities of the classical SFDS are replaced with the linear combination of POD bases and a reduced- order extrapolation SFDS with lower dimensions and sufficiently high accuracy for the 3D parabolic equation is established. Third, the error estimates between the classical SFDS solutions and the reduced-order extrapolation SFDS solutions and the implementation for solving the reduced-order extrapolation SFDS are provided. Finally, a numerical example shows that the errors of numerical computations are consistent with the theoretical results. Moreover, it is shown that the reduced-order extrapolation SFDS is effective and feasible to find the numerical solutions for the 3D parabolic equation.
出处 《Frontiers of Mathematics in China》 SCIE CSCD 2015年第5期1025-1040,共16页 中国高等学校学术文摘·数学(英文)
基金 This work was supported in part by the National Natural Science Foundation of China (Grant Nos. 11271127, 11361035), the Doctoral Foundation of Guizhou Normal University, and the Science and Technology Fund of Guizhou Province (Grant No. 7052) in 2014.
关键词 Singular value decomposition (SVD) proper orthogonaldecomposition (POD) bases spectral-finite difference scheme (SFDS) error estimation parabolic equation Singular value decomposition (SVD), proper orthogonaldecomposition (POD) bases, spectral-finite difference scheme (SFDS),error estimation, parabolic equation
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  • 1LUO ZhenDong,CHEN Jing,SUN Ping,YANG XiaoZhong.Finite element formulation based on proper orthogonal decomposition for parabolic equations[J].Science China Mathematics,2009,52(3):585-596. 被引量:17
  • 2唐贤江.ON THE EXISTENCE AND UNIQUENESS OF THE SOLUTION TO THE NAVIER-STOKES EQUATIONS[J].Acta Mathematica Scientia,1995,15(3):342-351. 被引量:4
  • 3K. Kunisch,S. Volkwein.Galerkin proper orthogonal decomposition methods for parabolic problems[J]. Numerische Mathematik . 2001 (1)
  • 4Jolliffie I T.Principal Component Analysis. . 2002
  • 5Luo Z D,Chen J,Navon I M, et al.An optimizing reduced PLSMFE formulation for non-stationary conduction–convection problems. Internat J Numer Methods Fluids .
  • 6Thomee V.Galerkin Finite Element Methods for Parabolic Problems. . 1997
  • 7Luo Zhendong.Mixed finite element methods and applications. . 2006
  • 8Holmes,P.,Lumley,J. L.,Berkooz,G. Turbulence, Coherent Structures, Dynamical Systems and Symmetry . 1996
  • 9Fukunaga K.Introduction to Statistical Recognition. . 1990
  • 10Crommelin,D. T.,Majda,A. J.Strategies for model reduction: comparing different optimal bases. Journal of the Atmospheric Sciences . 2004

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