Comparative analysis of models of genetic and neuronal networks

    Diana Ogorelova Affiliation
    ; Felix Sadyrbaev Affiliation


The comparative analysis of systems of ordinary differential equations, modeling gene regulatory networks and neuronal networks, is provided. In focus of the study are asymptotical behavior of solutions, types of attractors. Emphasis is made on the chaotic behavior of solutions.

Keyword : dynamical systems, gene regulatory network, artificial neural network, periodic solution, Lyapunov exponents

How to Cite
Ogorelova, D., & Sadyrbaev, F. (2024). Comparative analysis of models of genetic and neuronal networks. Mathematical Modelling and Analysis, 29(2), 277–287.
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Mar 26, 2024
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