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Artificial van der Waals hybrid synapse and its application to acoustic pattern recognition.


ABSTRACT: Brain-inspired parallel computing, which is typically performed using a hardware neural-network platform consisting of numerous artificial synapses, is a promising technology for effectively handling large amounts of informational data. However, the reported nonlinear and asymmetric conductance-update characteristics of artificial synapses prevent a hardware neural-network from delivering the same high-level training and inference accuracies as those delivered by a software neural-network. Here, we developed an artificial van-der-Waals hybrid synapse that features linear and symmetric conductance-update characteristics. Tungsten diselenide and molybdenum disulfide channels were used selectively to potentiate and depress conductance. Subsequently, via training and inference simulation, we demonstrated the feasibility of our hybrid synapse toward a hardware neural-network and also delivered high recognition rates that were comparable to those delivered using a software neural-network. This simulation involving the use of acoustic patterns was performed with a neural network that was theoretically formed with the characteristics of the hybrid synapses.

SUBMITTER: Seo S 

PROVIDER: S-EPMC7414205 | biostudies-literature | 2020 Aug

REPOSITORIES: biostudies-literature

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Artificial van der Waals hybrid synapse and its application to acoustic pattern recognition.

Seo Seunghwan S   Kang Beom-Seok BS   Lee Je-Jun JJ   Ryu Hyo-Jun HJ   Kim Sungjun S   Kim Hyeongjun H   Oh Seyong S   Shim Jaewoo J   Heo Keun K   Oh Saeroonter S   Park Jin-Hong JH  

Nature communications 20200807 1


Brain-inspired parallel computing, which is typically performed using a hardware neural-network platform consisting of numerous artificial synapses, is a promising technology for effectively handling large amounts of informational data. However, the reported nonlinear and asymmetric conductance-update characteristics of artificial synapses prevent a hardware neural-network from delivering the same high-level training and inference accuracies as those delivered by a software neural-network. Here,  ...[more]

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