3D crystal structure identification using fuzzy neural networks


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Abstract

The problem of recognizing nano-scale images of lattice projections comes down to identification of crystal lattice structure. The paper considers two types of fuzzy neural networks that can be used for tackling the problem at hand: the Takagi-Sugeno-Kang model and Mamdani-Zadeh model (the latter being a modification of the Wang-Mendel fuzzy neural network). We offer a threestage neural network learning process. In the first two stages crystal lattices are grouped in non-overlapping classes, and lattices belonging to overlapping classes are recognized at the third stage. In the research, we thoroughly investigate the applicability of the neural net models to structure identification of 3D crystal lattices.

About the authors

D. V. Kirsh

Samara National Research University; Image Processing Systems Institute—Branch of the Federal Scientific Research Centre “Crystallography and Photonics” of the Russian Academy of Sciences

Author for correspondence.
Email: kirshdv@gmail.com
Russian Federation, Samara, 443086; Samara, 443001

O. P. Soldatova

Samara National Research University

Email: kirshdv@gmail.com
Russian Federation, Samara, 443086

A. V. Kupriyanov

Samara National Research University; Image Processing Systems Institute—Branch of the Federal Scientific Research Centre “Crystallography and Photonics” of the Russian Academy of Sciences

Email: kirshdv@gmail.com
Russian Federation, Samara, 443086; Samara, 443001

I. A. Lyozin

Samara National Research University

Email: kirshdv@gmail.com
Russian Federation, Samara, 443086

I. V. Lyozina

Samara National Research University

Email: kirshdv@gmail.com
Russian Federation, Samara, 443086

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