DocumentCode :
1049082
Title :
Energy Function and Energy Evolution on Neuronal Populations
Author :
Wang, Rubin ; Zhang, Zhikang ; Chen, Guanrong
Author_Institution :
East China Univ. of Sci. & Technol., Shanghai
Volume :
19
Issue :
3
fYear :
2008
fDate :
3/1/2008 12:00:00 AM
Firstpage :
535
Lastpage :
538
Abstract :
Based on the principle of energy coding, an energy function of a variety of electric potentials of a neural population in cerebral cortex is formulated. The energy function is used to describe the energy evolution of the neuronal population with time and the coupled relationship between neurons at the subthreshold and the suprathreshold states. The Hamiltonian motion equation with the membrane potential is obtained from the neuroelectrophysiological data contaminated by Gaussian white noise. The results of this research show that the mean membrane potential is the exact solution of the motion equation of the membrane potential developed in a previously published paper. It also shows that the Hamiltonian energy function derived in this brief is not only correct but also effective. Particularly, based on the principle of energy coding, an interesting finding is that in some subsets of neurons, firing action potentials at the suprathreshold and some others simultaneously perform activities at the subthreshold level in neural ensembles. Notably, this kind of coupling has not been found in other models of biological neural networks.
Keywords :
Gaussian noise; biocomputing; neural nets; white noise; Gaussian white noise; Hamiltonian energy function; Hamiltonian motion equation; biological neural networks; cerebral cortex; electric potentials; energy coding; energy evolution; energy function; firing action potentials; mean membrane potential; membrane potential; neuroelectrophysiological data; neuronal populations; Coupled neural population; Hamiltonian function; energy coding; energy evolution; Animals; Cerebral Cortex; Evolution; Humans; Membrane Potentials; Models, Neurological; Neurons;
fLanguage :
English
Journal_Title :
Neural Networks, IEEE Transactions on
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/TNN.2007.914177
Filename :
4441700
Link To Document :
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