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CrossNets: possible neuromorphic networks based on...
Journal article

CrossNets: possible neuromorphic networks based on nanoscale components

Abstract

Abstract Extremely dense neuromorphic networks may be based on hybrid 2D arrays of nanoscale components, including molecular latching switches working as adaptive synapses, nanowires as axons and dendrites, and nano‐CMOS circuits serving as neural cell bodies. Possible architectures include ‘free‐growing’ networks that may form topologies very close to those of cerebral cortex, and several species of distributed crossbar‐type networks, ‘CrossNets’ (including notably ‘InBar’ and ‘RandBar’), with better density and speed scaling. Numerical modelling show that the specific signal sign asymmetry used in CrossNets allows self‐excitation of recurrent networks with long‐range cell interaction, without a symmetry‐breaking global latchup. Our next goal is to develop methods of globally supervised teaching of extremely large networks with no external access to individual synapses. Such development would open a way towards cerebral‐cortex‐scale networks (with ∼1010 neural cells and ∼1014 synapses) capable of advanced information processing and self‐evolution at a speed several orders of magnitude higher than their biological prototypes. Copyright © 2003 John Wiley & Sons, Ltd.

Authors

Türel Ö; Likharev K

Journal

International Journal of Circuit Theory and Applications, Vol. 31, No. 1, pp. 37–53

Publisher

Wiley

Publication Date

January 1, 2003

DOI

10.1002/cta.223

ISSN

0098-9886

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