Articles

A NOVEL METHOD FOR NONLINEAR IMPULSIVE DIFFERENTIAL EQUATIONS IN BROKEN REPRODUCING KERNEL SPACE

  • Liangcai MEI
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  • Zhuhai Campus, Beijing Institute of Technology, Zhuhai 519088, China

Received date: 2018-12-11

  Revised date: 2019-04-11

  Online published: 2020-07-17

Supported by

This work is supported by a Young Innovative Talents Program in Universities and Colleges of Guangdong Province (2018KQNCX338), and two Scientific Research-Innovation Team Projects at Zhuhai Campus, Beijing Institute of Technology (XK-2018-15, XK-2019-10).

Abstract

In this article, a new algorithm is presented to solve the nonlinear impulsive differential equations. In the first time, this article combines the reproducing kernel method with the least squares method to solve the second-order nonlinear impulsive differential equations. Then, the uniform convergence of the numerical solution is proved, and the time consuming Schmidt orthogonalization process is avoided. The algorithm is employed successfully on some numerical examples.

Cite this article

Liangcai MEI . A NOVEL METHOD FOR NONLINEAR IMPULSIVE DIFFERENTIAL EQUATIONS IN BROKEN REPRODUCING KERNEL SPACE[J]. Acta mathematica scientia, Series B, 2020 , 40(3) : 723 -733 . DOI: 10.1007/s10473-020-0310-7

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