Solving boundary value problems of mathematical physics using radial basis function networks


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Abstract

A neural network method for solving boundary value problems of mathematical physics is developed. In particular, based on the trust region method, a method for learning radial basis function networks is proposed that significantly reduces the time needed for tuning their parameters. A method for solving coefficient inverse problems that does not require the construction and solution of adjoint problems is proposed.

About the authors

V. I. Gorbachenko

Penza State University

Author for correspondence.
Email: gorvi@mail.ru
Russian Federation, Penza, 440026

M. V. Zhukov

Penza State University

Email: gorvi@mail.ru
Russian Federation, Penza, 440026

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