Nonstandard finite difference schemes for differential equations

Authors

  • Fayyaz Khodadosti Department of Mathematics, Faculty of Science, University of Maragheh, Maragheh, Iran.
Abstract:

In this paper, the reorganization of the denominator of the discrete derivative and nonlocal approximation of nonlinear terms are used in the design of nonstandard finite difference schemes (NSFDs). Numerical examples confirming then efficiency of schemes, for some differential equations are provided. In order to illustrate the accuracy of the new NSFDs, the numerical results are compared with standard methods.

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Journal title

volume 01  issue 2

pages  47- 54

publication date 2014-12-01

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