Nonsmooth dynamics in spiking neuron models

Large scale studies of spiking neural networks are a key part of modern approaches to understanding the dynamics of biological neural tissue. One approach in computational neuroscience has been to consider the detailed electrophysiological properties of neurons and build vast computational compartm...

Full description

Bibliographic Details
Main Authors: Coombes, Stephen, Thul, Ruediger, Wedgwood, Kyle C.A.
Format: Article
Published: Elsevier 2012
Subjects:
Online Access:https://eprints.nottingham.ac.uk/1473/
_version_ 1848790613750710272
author Coombes, Stephen
Thul, Ruediger
Wedgwood, Kyle C.A.
author_facet Coombes, Stephen
Thul, Ruediger
Wedgwood, Kyle C.A.
author_sort Coombes, Stephen
building Nottingham Research Data Repository
collection Online Access
description Large scale studies of spiking neural networks are a key part of modern approaches to understanding the dynamics of biological neural tissue. One approach in computational neuroscience has been to consider the detailed electrophysiological properties of neurons and build vast computational compartmental models. An alternative has been to develop minimal models of spiking neurons with a reduction in the dimensionality of both parameter and variable space that facilitates more effective simulation studies. In this latter case the single neuron model of choice is often a variant of the classic integrate-and-fire model, which is described by a nonsmooth dynamical system. In this paper we review some of the more popular spiking models of this class and describe the types of spiking pattern that they can generate (ranging from tonic to burst firing). We show that a number of techniques originally developed for the study of impact oscillators are directly relevant to their analysis, particularly those for treating grazing bifurcations. Importantly we highlight one particular single neuron model, capable of generating realistic spike trains, that is both computationally cheap and analytically tractable. This is a planar nonlinear integrate-and-fire model with a piecewise linear vector field and a state dependent reset upon spiking. We call this the PWL-IF model and analyse it at both the single neuron and network level. The techniques and terminology of nonsmooth dynamical systems are used to flesh out the bifurcation structure of the single neuron model, as well as to develop the notion of Liapunov exponents. We also show how to construct the phase response curve for this system, emphasising that techniques in mathematical neuroscience may also translate back to the field of nonsmooth dynamical systems. The stability of periodic spiking orbits is assessed using a linear stability analysis of spiking times. At the network level we consider linear coupling between voltage variables, as would occur in neurobiological networks with gap-junction coupling, and show how to analyse the properties (existence and stability) of both the asynchronous and synchronous states. In the former case we use a phase-density technique that is valid for any large system of globally coupled limit cycle oscillators, whilst in the latter we develop a novel technique that can handle the nonsmooth reset of the model upon spiking. Finally we discuss other aspects of neuroscience modelling that may benefit from further translation of ideas from the growing body of knowledge on nonsmooth dynamics.
first_indexed 2025-11-14T18:15:24Z
format Article
id nottingham-1473
institution University of Nottingham Malaysia Campus
institution_category Local University
last_indexed 2025-11-14T18:15:24Z
publishDate 2012
publisher Elsevier
recordtype eprints
repository_type Digital Repository
spelling nottingham-14732020-05-04T16:34:46Z https://eprints.nottingham.ac.uk/1473/ Nonsmooth dynamics in spiking neuron models Coombes, Stephen Thul, Ruediger Wedgwood, Kyle C.A. Large scale studies of spiking neural networks are a key part of modern approaches to understanding the dynamics of biological neural tissue. One approach in computational neuroscience has been to consider the detailed electrophysiological properties of neurons and build vast computational compartmental models. An alternative has been to develop minimal models of spiking neurons with a reduction in the dimensionality of both parameter and variable space that facilitates more effective simulation studies. In this latter case the single neuron model of choice is often a variant of the classic integrate-and-fire model, which is described by a nonsmooth dynamical system. In this paper we review some of the more popular spiking models of this class and describe the types of spiking pattern that they can generate (ranging from tonic to burst firing). We show that a number of techniques originally developed for the study of impact oscillators are directly relevant to their analysis, particularly those for treating grazing bifurcations. Importantly we highlight one particular single neuron model, capable of generating realistic spike trains, that is both computationally cheap and analytically tractable. This is a planar nonlinear integrate-and-fire model with a piecewise linear vector field and a state dependent reset upon spiking. We call this the PWL-IF model and analyse it at both the single neuron and network level. The techniques and terminology of nonsmooth dynamical systems are used to flesh out the bifurcation structure of the single neuron model, as well as to develop the notion of Liapunov exponents. We also show how to construct the phase response curve for this system, emphasising that techniques in mathematical neuroscience may also translate back to the field of nonsmooth dynamical systems. The stability of periodic spiking orbits is assessed using a linear stability analysis of spiking times. At the network level we consider linear coupling between voltage variables, as would occur in neurobiological networks with gap-junction coupling, and show how to analyse the properties (existence and stability) of both the asynchronous and synchronous states. In the former case we use a phase-density technique that is valid for any large system of globally coupled limit cycle oscillators, whilst in the latter we develop a novel technique that can handle the nonsmooth reset of the model upon spiking. Finally we discuss other aspects of neuroscience modelling that may benefit from further translation of ideas from the growing body of knowledge on nonsmooth dynamics. Elsevier 2012-11-15 Article PeerReviewed Coombes, Stephen, Thul, Ruediger and Wedgwood, Kyle C.A. (2012) Nonsmooth dynamics in spiking neuron models. Physica D, 241 (22). pp. 2042-2057. ISSN 0167-2789 Integrate-and-fire Spiking neuron model Nonsmooth bifurcation Linear-coupling http://www.sciencedirect.com/science/article/pii/S0167278911001217 doi:10.1016/j.physd.2011.05.012 doi:10.1016/j.physd.2011.05.012
spellingShingle Integrate-and-fire
Spiking neuron model
Nonsmooth bifurcation
Linear-coupling
Coombes, Stephen
Thul, Ruediger
Wedgwood, Kyle C.A.
Nonsmooth dynamics in spiking neuron models
title Nonsmooth dynamics in spiking neuron models
title_full Nonsmooth dynamics in spiking neuron models
title_fullStr Nonsmooth dynamics in spiking neuron models
title_full_unstemmed Nonsmooth dynamics in spiking neuron models
title_short Nonsmooth dynamics in spiking neuron models
title_sort nonsmooth dynamics in spiking neuron models
topic Integrate-and-fire
Spiking neuron model
Nonsmooth bifurcation
Linear-coupling
url https://eprints.nottingham.ac.uk/1473/
https://eprints.nottingham.ac.uk/1473/
https://eprints.nottingham.ac.uk/1473/