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Stochastic hybrid 3D matrix: learning and adaptation of electrical properties

Academic Article
Publication Date:
2012
abstract:
Memristive devices are electronic elements with memory properties. This feature marks them out as possible candidates for mimicking synapse properties. Development of systems capable of performing simple brain operations demands a high level of integration of elements and their 3D organization into networks. Here, we demonstrate the formation and electrical properties of stochastic polymeric matrices. Several features of the network revealed similarities with those of the nervous system. In particular, applying different training protocols, we obtained two kinds of learning comparable to the "baby" and "adult" learning in animals and humans. To mimic "adult" learning, multi-task training was applied simultaneously resulting in the formation of few parallel pathways for a given task, modifiable by successive training. To mimic "baby" learning (imprinting), single task training was applied at one time, resulting in the formation of multiple parallel signal pathways, scarcely influenced by successive training.
Iris type:
01.01 Articolo in rivista
Keywords:
Electronic elements; Learning and adaptation; Memory properties; Parallel pathways; Polymeric matrices
List of contributors:
Ivanova, Tatiana; Erokhin, Victor
Authors of the University:
EROKHIN VICTOR
Handle:
https://iris.cnr.it/handle/20.500.14243/221482
Published in:
JOURNAL OF MATERIALS CHEMISTRY (PRINT)
Journal
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URL

http://pubs.rsc.org/en/Content/ArticleLanding/2012/JM/c2jm35064e
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