Title :
Temporal coding in a silicon network of integrate-and-fire neurons
Author :
Liu, Shih-Chii ; Douglas, Rodney
Author_Institution :
Inst. of Neuroinformatics, Univ. & ETH Zurich, Switzerland
Abstract :
Spatio-temporal processing of spike trains by neuronal networks depends on a variety of mechanisms distributed across synapses, dendrites, and somata. In natural systems, the spike trains and the processing mechanisms cohere though their common physical instantiation. This coherence is lost when the natural system is encoded for simulation on a general purpose computer. By contrast, analog VLSI circuits are, like neurons, inherently related by their real-time physics, and so, could provide a useful substrate for exploring neuronlike event-based processing. Here, we describe a hybrid analog-digital VLSI chip comprising a set of integrate-and-fire neurons and short-term dynamical synapses that can be configured into simple network architectures with some properties of neocortical neuronal circuits. We show that, despite considerable fabrication variance in the properties of individual neurons, the chip offers a viable substrate for exploring real-time spike-based processing in networks of neurons.
Keywords :
VLSI; neural chips; real-time systems; analog VLSI circuits; dynamical synapses; integrate-and-fire neurons; neocortical neuronal circuits; silicon network; spatio temporal processing; spike trains; temporal coding; Analog-digital conversion; Biological neural networks; Circuit simulation; Computational modeling; Computer simulation; Fabrication; Neurons; Physics; Silicon; Very large scale integration; Action Potentials; Animals; Artificial Intelligence; Brain; Excitatory Postsynaptic Potentials; Humans; Microcomputers; Models, Neurological; Nerve Net; Neural Inhibition; Neural Networks (Computer); Neural Pathways; Neurons; Reaction Time; Synaptic Transmission; Time Factors;
Journal_Title :
Neural Networks, IEEE Transactions on
DOI :
10.1109/TNN.2004.832725