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An artificial synaptic transistor using an α-In2Se3 van der Waals ferroelectric channel for pattern recognition

Authors :
Nayana Remesh
Neha Mohta
Ankit Rao
Rangarajan Muralidharan
Digbijoy N. Nath
Source :
RSC Advances. 11:36901-36912
Publication Year :
2021
Publisher :
Royal Society of Chemistry (RSC), 2021.

Abstract

Despite being widely investigated for their memristive behavior, ferroelectrics are barely studied as channel materials in field-effect transistor (FET) configurations. In this work, we use multilayer α-In2Se3 to realize a ferroelectric channel semiconductor FET, i.e., FeS-FET, whose gate-triggered and polarization-induced resistive switching is then exploited to mimic an artificial synapse. The FeS-FET exhibits key signatures of a synapse such as excitatory and inhibitory postsynaptic current, potentiation/depression, and paired pulsed facilitation. Multiple stable conductance states obtained by tuning the device are then used as synaptic weights to demonstrate pattern recognition by invoking a hidden layer perceptron model. Detailed artificial neural network (ANN) simulations are performed on binary scale MNIST data digits, invoking 784 input (28 × 28 pixels) and 10 output neurons which are used in the training of 42 000 MNIST data digits. By updating the synaptic weights with conductance weight values on 18 000 digits, we achieved a successful recognition rate of 93% on the testing data. Introduction of 0.10 variance of noise pixels results in an accuracy of more than 70% showing the strong fault-tolerant nature of the conductance states. These synaptic functionalities, learning rules, and device to system-level simulation results based on α-In2Se3 could facilitate the development of more complex neuromorphic hardware systems based on FeS-FETs.

Details

ISSN :
20462069
Volume :
11
Database :
OpenAIRE
Journal :
RSC Advances
Accession number :
edsair.doi...........877781e556f556c068b68df96fc74966
Full Text :
https://doi.org/10.1039/d1ra07728g