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JOURNALS // Zhurnal Vychislitel'noi Matematiki i Matematicheskoi Fiziki // Archive

Zh. Vychisl. Mat. Mat. Fiz., 2018 Volume 58, Number 4, Pages 520–529 (Mi zvmmf10715)

This article is cited in 33 papers

Numerical solution of systems of loaded ordinary differential equations with multipoint conditions

A. T. Assanovaa, A. E. Imanchiyevb, Zh. M. Kadirbaevaa

a Institute of Mathematics and Mathematical Modeling, Ministry of Education and Science of the Republic of Kazakhstan, Almaty, Kazakhstan
b Aktobe Regional State University, Aktobe, Kazakhstan

Abstract: A system of loaded ordinary differential equations with multipoint conditions is considered. The problem under study is reduced to an equivalent boundary value problem for a system of ordinary differential equations with parameters. A system of linear algebraic equations for the parameters is constructed using the matrices of the loaded terms and the multipoint condition. The conditions for the unique solvability and well-posedness of the original problem are established in terms of the matrix made up of the coefficients of the system of linear algebraic equations. The coefficients and the righthand side of the constructed system are determined by solving Cauchy problems for linear ordinary differential equations. The solutions of the system are found in terms of the values of the desired function at the initial points of subintervals. The parametrization method is numerically implemented using the fourth-order accurate Runge–Kutta method as applied to the Cauchy problems for ordinary differential equations. The performance of the constructed numerical algorithms is illustrated by examples.

Key words: system of loaded differential equations, multipoint condition, algorithm for finding approximate solutions.

UDC: 519.62

Received: 28.03.2017
Revised: 29.05.2017

DOI: 10.7868/S0044466918040038


 English version:
Computational Mathematics and Mathematical Physics, 2018, 58:4, 508–516

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