The step size impact on the computational cost of spiking neuron simulation

Sergio Valadez-Godinez, Humberto Sossa, Raul Santiago-Montero

Producción científica: Contribución a una conferenciaArtículo

Resumen

© 2017 IEEE. Spiking neurons are mathematical models that simulate the generation of the electrical pulse at the neuron membrane. Most spiking neurons are expressed as a non-linear system of ordinary differential equations. Because these systems are hard to solve analytically, they must be solved using a numerical method through a discrete sequence of time steps. The step length is a factor affecting both the accuracy and computational cost of spiking neuron simulation. It is known the step size implications on the accuracy for some spiking neurons. However, it is unknown in which way the step size impacts the computational cost. We found that the computational cost as a function of the step length follows a power-law distribution. We reviewed the Leaky Integrate-and-Fire, Izhikevich, and Hodgkin-Huxley spiking neurons. Additionally, it was found that, with any step size, simulating the cerebral cortex in a sequential processing computer is prohibitive.
Idioma originalInglés estadounidense
Páginas722-728
Número de páginas649
DOI
EstadoPublicada - 8 ene. 2018
EventoProceedings of Computing Conference 2017 -
Duración: 8 ene. 2018 → …

Conferencia

ConferenciaProceedings of Computing Conference 2017
Período8/01/18 → …

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