Title
Rhythmic Oscillations of Excitatory Bursting Hodkin-Huxley Neuronal Network with Synaptic Learning
Abstract
AbstractRhythmic oscillations of neuronal network are actually kind of synchronous behaviors, which play an important role in neural systems. In this paper, the properties of excitement degree and oscillation frequency of excitatory bursting Hodkin-Huxley neuronal network which incorporates a synaptic learning rule are studied. The effects of coupling strength, synaptic learning rate, and other parameters of chemical synapses, such as synaptic delay and decay time constant, are explored, respectively. It is found that the increase of the coupling strength can weaken the extent of excitement, whereas increasing the synaptic learning rate makes the network more excited in a certain range; along with the increasing of the delay time and the decay time constant, the excitement degree increases at the beginning, then decreases, and keeps stable. It is also found that, along with the increase of the synaptic learning rate, the coupling strength, the delay time, and the decay time constant, the oscillation frequency of the network decreases monotonically.
Year
DOI
Venue
2016
10.1155/2016/6023547
Periodicals
Field
DocType
Volume
Bursting,Synapse,Oscillation,Neuroscience,Nerve net,Computer science,Excitatory postsynaptic potential,Learning rule,Artificial intelligence,Biological neural network,Time constant,Machine learning
Journal
2016
Issue
ISSN
Citations 
1
1687-5265
0
PageRank 
References 
Authors
0.34
4
4
Name
Order
Citations
PageRank
Qi Shi100.68
Fang Han200.68
Zhijie Wang38911.14
Caiyun Li400.34