Emulating the human brain's circuitry composed of neurons and synapses is an emerging area of research in mitigating the “von Neumann bottleneck” in present computer architectures. The building block of these neuromorphic systems—the synapse—is commonly realized with oxide-based or phase change material-based devices, whose operation is limited by high programming currents and high reset currents. In this work, we have realized nonvolatile resistive switching MoS2/graphene devices that exhibit multiple conductance states at low operating currents. The MoS2/graphene devices exhibit essential synaptic behaviors, such as short and long-term potentiation, long-term depression, and the spike timing dependent plasticity learning rule. Most importantly, they exhibit a near-linear synaptic weight update, without any abrupt reset process, allowing their use in unsupervised learning applications. These electronic synapses are built with chemical vapor deposited MoS2 and graphene, demonstrating potential for large-scale realizations of machine learning hardware.
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2 September 2019
Research Article|
September 06 2019
Electronic synapses with near-linear weight update using MoS2/graphene memristors Available to Purchase
Adithi Krishnaprasad;
Adithi Krishnaprasad
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
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Nitin Choudhary;
Nitin Choudhary
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
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Sonali Das;
Sonali Das
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
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Durjoy Dev
;
Durjoy Dev
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
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Hirokjyoti Kalita;
Hirokjyoti Kalita
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
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Hee-Suk Chung;
Hee-Suk Chung
4
Analytical Research Division, Korea Basic Science Institute
, Jeonju, Jeollabuk-do 54907, South Korea
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Olaleye Aina;
Olaleye Aina
5
BAE Systems FAST Labs
, Columbia, Maryland 21046, USA
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Yeonwoong Jung
;
Yeonwoong Jung
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
3
Department of Materials Science and Engineering, University of Central Florida
, Orlando, Florida 32816, USA
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Tania Roy
Tania Roy
a)
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
3
Department of Materials Science and Engineering, University of Central Florida
, Orlando, Florida 32816, USA
a)Author to whom correspondence should be addressed: [email protected]
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Adithi Krishnaprasad
1,2
Nitin Choudhary
1
Sonali Das
1
Durjoy Dev
1,2
Hirokjyoti Kalita
1,2
Hee-Suk Chung
4
Olaleye Aina
5
Yeonwoong Jung
1,2,3
Tania Roy
1,2,3,a)
1
NanoScience Technology Center, University of Central Florida
, Orlando, Florida 32826, USA
2
Department of Electrical and Computer Engineering, University of Central Florida
, Orlando, Florida 32816, USA
4
Analytical Research Division, Korea Basic Science Institute
, Jeonju, Jeollabuk-do 54907, South Korea
5
BAE Systems FAST Labs
, Columbia, Maryland 21046, USA
3
Department of Materials Science and Engineering, University of Central Florida
, Orlando, Florida 32816, USA
a)Author to whom correspondence should be addressed: [email protected]
Appl. Phys. Lett. 115, 103104 (2019)
Article history
Received:
May 03 2019
Accepted:
August 20 2019
Citation
Adithi Krishnaprasad, Nitin Choudhary, Sonali Das, Durjoy Dev, Hirokjyoti Kalita, Hee-Suk Chung, Olaleye Aina, Yeonwoong Jung, Tania Roy; Electronic synapses with near-linear weight update using MoS2/graphene memristors. Appl. Phys. Lett. 2 September 2019; 115 (10): 103104. https://doi.org/10.1063/1.5108899
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