Sensitivity to the cutoff value in the quadratic adaptive integrate-and-fire model
Jonathan Touboul

TL;DR
This paper investigates how the quadratic adaptive integrate-and-fire model's behavior is highly sensitive to the cutoff value, especially when the system diverges, impacting simulation accuracy and spike pattern formation.
Contribution
It demonstrates the finite-time blow-up of variables in the model without equilibrium and highlights the importance of the cutoff parameter for stable and accurate simulations.
Findings
Variables blow up in finite time without equilibrium.
Model sensitivity to cutoff value affects spike patterns.
Sharp adaptation variable slope requires small simulation time steps.
Abstract
The quadratic adaptive integrate-and-fire model (Izhikecih 2003, 2007) is recognized as very interesting for its computational efficiency and its ability to reproduce many behaviors observed in cortical neurons. For this reason it is currently widely used, in particular for large scale simulations of neural networks. This model emulates the dynamics of the membrane potential of a neuron together with an adaptation variable. The subthreshold dynamics is governed by a two-parameter differential equation, and a spike is emitted when the membrane potential variable reaches a given cutoff value. Subsequently the membrane potential is reset, and the adaptation variable is added a fixed value called the spike-triggered adaptation parameter. We show in this note that when the system does not converge to an equilibrium point, both variables of the subthreshold dynamical system blow up in finite…
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