The neural network approximation method for solving multidimensional nonlinear inverse problems of geophysics


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Resumo

The iterative approximation neural network method for solving conditionally well-posed nonlinear inverse problems of geophysics is presented. The method is based on the neural network approximation of the inverse operator. The inverse problem is solved in the class of grid (block) models of the medium on a regularized parameterization grid. The construction principle of this grid relies on using the calculated values of the continuity modulus of the inverse operator and its modifications determining the degree of ambiguity of the solutions. The method provides approximate solutions of inverse problems with the maximal degree of detail given the specified degree of ambiguity with the total number of the sought parameters ~n × 103 of the medium. The a priori and a posteriori estimates of the degree of ambiguity of the approximated solutions are calculated. The work of the method is illustrated by the example of the three-dimensional (3D) inversion of the synthesized 2D areal geoelectrical (audio magnetotelluric sounding, AMTS) data corresponding to the schematic model of a kimberlite pipe.

Sobre autores

M. Shimelevich

Ordzhonikidze Russian State Geological Prospecting University

Autor responsável pela correspondência
Email: shimelevich-m@yandex.ru
Rússia, Moscow, 117997

E. Obornev

Ordzhonikidze Russian State Geological Prospecting University

Email: shimelevich-m@yandex.ru
Rússia, Moscow, 117997

I. Obornev

Skobeltsyn Institute of Nuclear Physics

Email: shimelevich-m@yandex.ru
Rússia, Moscow, 119991

E. Rodionov

Ordzhonikidze Russian State Geological Prospecting University

Email: shimelevich-m@yandex.ru
Rússia, Moscow, 117997

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