Training and Operation of an Integrated Neuromorphic Network Based on Metal-Oxide Memristors
Mirko Prezioso, Farnood Merrikh-Bayat, Brian Hoskins, Gina Adam,, Konstantin K. Likharev, Dmitri B. Strukov

TL;DR
This paper demonstrates the first successful operation of a transistor-free metal-oxide memristor crossbar neural network, enabling scalable neuromorphic computing with improved device variability and in-situ training.
Contribution
It introduces a novel transistor-free metal-oxide memristor crossbar and shows its application in a simple neural network with in-situ training.
Findings
Successful operation of a metal-oxide memristor crossbar neural network
In-situ training of the network using a delta-rule algorithm
Reduced device variability enabling neural network functionality
Abstract
Despite all the progress of semiconductor integrated circuit technology, the extreme complexity of the human cerebral cortex makes the hardware implementation of neuromorphic networks with a comparable number of devices exceptionally challenging. One of the most prospective candidates to provide comparable complexity, while operating much faster and with manageable power dissipation, are so-called CrossNets based on hybrid CMOS/memristor circuits. In these circuits, the usual CMOS stack is augmented with one or several crossbar layers, with adjustable two-terminal memristors at each crosspoint. Recently, there was a significant progress in improvement of technology of fabrication of such memristive crossbars and their integration with CMOS circuits, including first demonstrations of their vertical integration. Separately, there have been several demonstrations of discrete memristors as…
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