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JOURNALS // Vestnik of Saint Petersburg University. Mathematics. Mechanics. Astronomy // Archive

Vestnik of Saint Petersburg University. Mathematics. Mechanics. Astronomy, 2022 Volume 9, Issue 1, Pages 23–36 (Mi vspua38)

This article is cited in 1 paper

MATHEMATICS

Backward iterations for solving integral equations with polynomial nonlinearity

S. M. Ermakov, T. O. Surovikina

St Petersburg State University, 7-9, Universitetskaya nab., St Petersburg, 199034, Russian Federation

Abstract: The theory of adjoint operators is widely used in solving applied multidimensional problems with Monte Carlo method. Efficient algorithms are constructed using the duality principle for many problems described in linear integral equations of the second kind. On the other hand, important applications of adjoint equations for designing experiments were suggested by G.Marchuk and his colleagues in their respective works. Some results obtained in these fields are also generalized to the case of nonlinear operators. Linearization methods were mostly used for that purpose. Results for Lyapunov-Schmidt nonlinear polynomial equations were obtained in the theory of Monte Carlo methods. However, many interesting questions in this subject area are remained open. New results about dual processes used for solving polynomial equations with Monte Carlo method are presented. In particular, an adjoint Markov process for the branching process and the corresponding unbiased estimate of the functional of the solution to the equation are constructed in a general form. The possibility of constructing an adjoint operator to a nonlinear one is discussed.

Keywords: Monte Carlo method, dual estimate, Lyapunov-Schmidt nonlinear equations, balance equation, adjoint equations.

UDC: 519.245

MSC: 65С05

Received: 26.07.2021
Revised: 01.09.2021
Accepted: 02.09.2021

DOI: 10.21638/spbu01.2022.103


 English version:
Vestnik St. Petersburg University, Mathematics, 2022, 9:1, 16–26

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© Steklov Math. Inst. of RAS, 2024