DocumentCode :
3748175
Title :
Modeling and implementation of firing-rate neuromorphic-network classifiers with bilayer Pt/Al2O3/TiO2?x/Pt Memristors
Author :
M. Prezioso;I. Kataeva;F. Merrikh-Bayat;B. Hoskins;G. Adam;T. Sota;K. Likharev;D. Strukov
Author_Institution :
UC Santa Barbara, Santa Barbara, CA 93106-9560, U.S.A.
fYear :
2015
Abstract :
Neuromorphic pattern classifiers were implemented, for the first time, using transistor-free integrated crossbar circuits with bilayer metal-oxide memristors. 10×6- and 10×8-crosspoint neuromorphic networks were trained in-situ using a Manhattan-Rule algorithm to separate a set of 3×3 binary images: into 3 classes using the batch-mode training, and into 4 classes using the stochastic-mode training, respectively. Simulation of much larger, multilayer neural network classifiers based on such technology has sown that their fidelity may be on a par with the state-of-the-art results for software-implemented networks.
Keywords :
"Training","Memristors","Switches","Resistance","Neuromorphics","Neural networks","Classification algorithms"
Publisher :
ieee
Conference_Titel :
Electron Devices Meeting (IEDM), 2015 IEEE International
Electronic_ISBN :
2156-017X
Type :
conf
DOI :
10.1109/IEDM.2015.7409719
Filename :
7409719
Link To Document :
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