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  5. High-speed ionic synaptic memory based on two-dimensional titanium carbide MXene

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Preprint
en
2021

High-speed ionic synaptic memory based on two-dimensional titanium carbide MXene

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0 Files

en
2021
DOI: 10.48550/arxiv.2104.05396arxiv.org/abs/2104.05396

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Yury Gogotsi
Yury Gogotsi

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Armantas Melianas
Min‐A Kang
Armin VahidMohammadi
+4 more

Abstract

Synaptic devices with linear high-speed switching can accelerate learning in artificial neural networks (ANNs) embodied in hardware. Conventional resistive memories however suffer from high write noise and asymmetric conductance tuning, preventing parallel programming of ANN arrays as needed to surpass conventional computing efficiency. Electrochemical random-access memories (ECRAMs), where resistive switching occurs by ion insertion into a redox-active channel address these challenges due to their linear switching and low noise. ECRAMs using two-dimensional (2D) materials and metal oxides suffer from slow ion kinetics, whereas organic ECRAMs enable high-speed operation but face significant challenges towards on-chip integration due to poor temperature stability of polymers. Here, we demonstrate ECRAMs using 2D titanium carbide (Ti3C2Tx) MXene that combines the high speed of organics and the integration compatibility of inorganic materials in a single high-performance device. Our ECRAMs combine the speed, linearity, write noise, switching energy and endurance metrics essential for parallel acceleration of ANNs, and importantly, they are stable after heat treatment needed for back-end-of-line integration with Si electronics. The high speed and performance of these ECRAMs introduces MXenes, a large family of 2D carbides and nitrides with more than 30 compositions synthesized to date, as very promising candidates for devices operating at the nexus of electrochemistry and electronics.

How to cite this publication

Armantas Melianas, Min‐A Kang, Armin VahidMohammadi, Weiqian Tian, Yury Gogotsi, Alberto Salleo, Mahiar Max Hamedi (2021). High-speed ionic synaptic memory based on two-dimensional titanium carbide MXene. , DOI: https://doi.org/10.48550/arxiv.2104.05396.

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Publication Details

Type

Preprint

Year

2021

Authors

7

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.48550/arxiv.2104.05396

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