Title :
A compact aVLSI conductance-based silicon neuron
Author :
Runchun Wang;Chetan Singh Thakur;Tara Julia Hamilton;Jonathan Tapson;Andr? van Schaik
Author_Institution :
The MARCS Institute, University of Western Sydney, Sydney, NSW, Australia
Abstract :
We present an analogue Very Large Scale Integration (aVLSI) implementation that uses first-order low-pass filters to implement a conductance-based silicon neuron for high-speed neuromorphic systems. The aVLSI neuron consists of a soma (cell body) and a single synapse, which is capable of linearly summing both the excitatory and inhibitory post-synaptic potentials (EPSP and IPSP) generated by the spikes arriving from different sources. Rather than biasing the silicon neuron with different parameters for different spiking patterns, as is typically done, we provide digital control signals, generated by an FPGA, to the silicon neuron to obtain different spiking behaviours. The proposed neuron is only ~26.5 μm2 in the IBM 130nm process and thus can be integrated at very high density. Circuit simulations show that this neuron can emulate different spiking behaviours observed in biological neurons.
Keywords :
"Neurons","Silicon","Transistors","Field programmable gate arrays","Integrated circuit modeling","Logic gates"
Conference_Titel :
Biomedical Circuits and Systems Conference (BioCAS), 2015 IEEE
DOI :
10.1109/BioCAS.2015.7348396