Stable Self-Assembled Atomic-Switch Networks for Neuromorphic Applications
Saurabh K. Bose, Joshua B. Mallinson, Rodrigo M. Gazoni, and Simon A., Brown

TL;DR
This paper demonstrates the creation of stable, reconfigurable atomic-switch networks from metal nanoparticles, which mimic synaptic behavior and are promising for neuromorphic computing and pattern recognition applications.
Contribution
It introduces a method to produce stable, self-assembled ASN devices with tunable conductance, enabling neuromorphic functionalities like memory conversion.
Findings
Stable conductance switching over months
Electric-field induced atomic-wire formation observed
Reconfigurable synaptic structures demonstrated
Abstract
Nature inspired neuromorphic architectures are being explored as an alternative to imminent limitations of conventional complementary metal-oxide semiconductor (CMOS) architectures. Utilization of such architectures for practical applications like advanced pattern recognition tasks will require synaptic connections that are both reconfigurable and stable. Here, we report realization of stable atomic-switch networks (ASN), with inherent complex connectivity, self-assembled from percolating metal nanoparticles (NPs). The device conductance reflects the configuration of synapses which can be modulated via voltage stimulus. By controlling Relative Humidity (RH) and oxygen partial-pressure during NP deposition we obtain stochastic conductance switching that is stable over several months. Detailed characterization reveals signatures of electric-field induced atomic-wire formation within the…
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