Litcius/Paper detail

Spiking Neural P Systems with Delay on Synapses

Xiaoxiao Song, Luis Valencia–Cabrera, Hong Peng, Jun Wang, Mario J. Pérez-Jímenez

2020International Journal of Neural Systems65 citationsDOI

Abstract

Based on the feature and communication of neurons in animal neural systems, spiking neural P systems (SN P systems) were proposed as a kind of powerful computing model. Considering the length of axons and the information transmission speed on synapses, SN P systems with delay on synapses (SNP-DS systems) are proposed in this work. Unlike the traditional SN P systems, where all the postsynaptic neurons receive spikes at the same instant from their presynaptic neuron, the postsynaptic neurons in SNP-DS systems would receive spikes at different instants, depending on the delay time on the synapses connecting them. It is proved that the SNP-DS systems are universal as number generators. Two small universal SNP-DS systems, with standard or extended rules, are constructed to compute functions, using 56 and 36 neurons, respectively. Moreover, a simulator has been provided, in order to check the correctness of these two SNP-DS systems, thus providing an experimental validation of the universality of the systems designed.

Topics & Concepts

Postsynaptic potentialNeural systemComputer scienceCorrectnessSynapseNeuroscienceAlgorithmBiologyBiochemistryReceptorDNA and Biological ComputingAdvanced biosensing and bioanalysis techniquesModular Robots and Swarm Intelligence
Spiking Neural P Systems with Delay on Synapses | Litcius