Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/73932
Title: Analysis of additive and parametric noise effects on Morris - Lecar neuron model
Authors: Ryashko, L. B.
Slepukhina, E. S.
Issue Date: 2017
Publisher: Izhevsk Institute of Computer Science
Citation: Ryashko L. B. Analysis of additive and parametric noise effects on Morris - Lecar neuron model / L. B. Ryashko, E. S. Slepukhina // Computer Research and Modeling. — 2017. — Vol. 9. — Iss. 3. — P. 449-468. — DOI: 10.20537/2076-7633-2017-9-3-449-468.
Abstract: This paper is devoted to the analysis of the effect of additive and parametric noise on the processes occurring in the nerve cell. This study is carried out on the example of the well-known Morris - Lecar model described by the two-dimensional system of ordinary differential equations. One of the main properties of the neuron is the excitability, i.e., the ability to respond to external stimuli with an abrupt change of the electric potential on the cell membrane. This article considers a set of parameters, wherein the model exhibits the class 2 excitability. The dynamics of the system is studied under variation of the external current parameter. We consider two parametric zones: the monostability zone, where a stable equilibrium is the only attractor of the deterministic system, and the bistability zone, characterized by the coexistence of a stable equilibrium and a limit cycle. We show that in both cases random disturbances result in the phenomenon of the stochastic generation of mixed-mode oscillations (i. e., alternating oscillations of small and large amplitudes). In the monostability zone this phenomenon is associated with a high excitability of the system, while in the bistability zone, it occurs due to noise-induced transitions between attractors. This phenomenon is confirmed by changes of probability density functions for distribution of random trajectories, power spectral densities and interspike intervals statistics. The action of additive and parametric noise is compared. We show that under the parametric noise, the stochastic generation of mixed-mode oscillations is observed at lower intensities than under the additive noise. For the quantitative analysis of these stochastic phenomena we propose and apply an approach based on the stochastic sensitivity function technique and the method of confidence domains. In the case of a stable equilibrium, this confidence domain is an ellipse. For the stable limit cycle, this domain is a confidence band. The study of the mutual location of confidence bands and the boundary separating the basins of attraction for different noise intensities allows us to predict the emergence of noise-induced transitions. The effectiveness of this analytical approach is confirmed by the good agreement of theoretical estimations with results of direct numerical simulations. © 2017 Lev B. Ryashko, Evdokia S. Slepukhina.
Keywords: CONFIDENCE DOMAINS
GAUSSIAN NOISE
LECAR MODEL
MORRIS
NEURAL EXCITABILITY
NOISE-INDUCED TRANSITIONS
STOCHASTIC SENSITIVITY
URI: http://elar.urfu.ru/handle/10995/73932
Access: cc-by-nd
RSCI ID: 30016842
SCOPUS ID: 85044130070
PURE ID: 7026179
ISSN: 2076-7633
2077-6853
DOI: 10.20537/2076-7633-2017-9-3-449-468
metadata.dc.description.sponsorship: The work was supported by the Government of the Russian Federation (Act 211, contract No. Russian Foundation for Basic Research (project No. 16-31-00317 mol_a).
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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