SYNCHRONIZED NEURAL FIRING FOR CONTROLLING CYBER PHYSICAL SYSTEM
DOI:
https://doi.org/10.22159/ajpcr.2017.v10s1.19686Keywords:
Neuronal Plasticity, Neuronal Oscillations, Cyber Physical System, Control SystemAbstract
Plasticity of the neurons and the synchronization features are essential to bring out the intelligence in a biological specimen. Thus, in this study we model the synchronistic behavior of neuronal firing to avail control system of cyber physical system. Also, a brief review of neuronal oscillations is also discussedDownloads
References
Abeles M. Corticonics, Neural Circuits of the Cerebral Cortex.Cambridge, UK: Cambridge University Press; 1991.
Brunel N. Dynamics of sparsely connected networks of excitatory and inhibitory spiking neurons. J Comput Neurosci 2000;8(3):183-208.
Diesmann M, Gewaltig MO, Aertsen A. Stable propagation of synchronous spiking in cortical neural networks. Nature 1999;402(6761):529-33.
Diesmann M, Gewaltig MO, Aertsen A. SYNOD: An Environment for NeuralSystems Simulations, Technical Report GC-AA-/95-3. Tel Aviv: The Weizmann Institute of Science; 1995.
van Vreeswijk C, Sompolinsky H. Chaotic balanced state in a model of cortical circuits. Neural Comput 1998;10(6):1321-71.
Stroeve S, Gielen S. Correlation between uncoupled conductancebased integrate-and-fire neurons due to common and synchronous presynaptic firing. Neural Comput 2001;13(9):2005-29.
Mao BQ, Hamzei-Sichani F, Aronov D, Froemke RC, Yuste R. Dynamics of spontaneous activity in neocortical slices. Neuron
;32(5):883-98.
Luczak A, Barthó P, Marguet SL, Buzsáki G, Harris KD. Sequential structure of neocortical spontaneous activity in vivo. Proc Natl Acad Sci U S A 2007;104(1):347-52.
Lazar A, Pipa G, Triesch J. SORN: A self-organizing recurrent neural network. Front Comput Neurosci 2009;3:23.
Zheng P, Dimitrakakis C, Triesch J. Network self-organization explains the statistics and dynamics of synaptic connection strengths in cortex.PLoS Comput Biol 2013;9(1):e1002848.
Rai A, Ramanathan S. Distributed learning in networked controlled cyber physical system. Int J Pharm Technol 2016;8(3):18537-46.
Ankush R. Application of Artificial Intelligence for Virtually Assisted Prognosis of Diabetes: A NODDS Project. IJCA Proceedings on National Seminar on Application of Artificial Intelligence in Life Sciences 2013 NSAAILS (1): 1-5, February; 2013.
Rai A, Ramanathan S, Kannan RJ. Quasi Opportunistic Supercomputing for Geospatial Socially Networked Mobile Devices. Enabling Technologies: Infrastructure for Collaborative Enterprises (WETICE),2016 IEEE 25th International Conference on IEEE; 2016.
Rai A. Unsupervised probabilistic debugging. Recent Trends Program Lang 2015;12(3):14-6.
Published
How to Cite
Issue
Section
The publication is licensed under CC By and is open access. Copyright is with author and allowed to retain publishing rights without restrictions.