DocumentCode :
3633238
Title :
A biophysically accurate floating point somatic neuroprocessor
Author :
Yiwei Zhang;Jose Nunez-Yanez;Joe McGeehan;Edward Regan;Stephen Kelly
Author_Institution :
Centre for Communications Research, University of Bristol, UK
fYear :
2009
Firstpage :
26
Lastpage :
31
Abstract :
Biophysically accurate neuron models have emerged as a very useful tool for neuroscience research. These models are based on solving differential equations that govern membrane potentials and spike generation. The level of detail that needs to be presented in the model to accurately emulate the behaviour of an organic cell is still an open question, although the timing of the spikes is considered to convey essential information. Models targeting hardware are traditionally based on fixed point implementations and low precision algorithms which incur a significant loss of information. This, in turn, could affect the functionality of a bioelectronic neuroprocessor in an undefined way. In this paper, a 32-bit floating point reconfigurable somatic neuroprocessor is presented targeting an FPGA device for real-time processing. For each individual neuron, the dynamics of ionic channels are described by a set of first order kinetic equations. A dedicated CORDIC unit is developed to solve the nonlinear functions that regulate spike generation. The results have been verified using an experimental setup that combines an FPGA device and a digital-to-analogue converter.
Keywords :
"Neurons","Field programmable gate arrays","Biological neural networks","Neuroscience","Biomembranes","Equations","Silicon","Mathematical model","Timing","Hardware"
Publisher :
ieee
Conference_Titel :
Field Programmable Logic and Applications, 2009. FPL 2009. International Conference on
ISSN :
1946-147X
Electronic_ISBN :
1946-1488
Type :
conf
DOI :
10.1109/FPL.2009.5272558
Filename :
5272558
Link To Document :
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