Neuromorphic function learning with carbon nanotube based synapses.

Nanotechnology

CEA, IRAMIS, Service de Physique de L’Etat Condensé (CNRS URA 2464), Laboratoire d’Electronique Moléculaire, Gif-sur-Yvette, France.

Published: September 2013

The principle of using nanoscale memory devices as artificial synapses in neuromorphic circuits is recognized as a promising way to build ground-breaking circuit architectures tolerant to defects and variability. Yet, actual experimental demonstrations of the neural network type of circuits based on non-conventional/non-CMOS memory devices and displaying function learning capabilities remain very scarce. We show here that carbon-nanotube-based memory elements can be used as artificial synapses, combined with conventional neurons and trained to perform functions through the application of a supervised learning algorithm. The same ensemble of eight devices can notably be trained multiple times to code successively any three-input linearly separable Boolean logic function despite device-to-device variability. This work thus represents one of the very few demonstrations of actual function learning with synapses based on nanoscale building blocks. The potential of such an approach for the parallel learning of multiple and more complex functions is also evaluated.

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Source
http://dx.doi.org/10.1088/0957-4484/24/38/384013DOI Listing

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