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<i>α</i>-Fe<sub>2</sub>O<sub>3</sub>-based artificial synaptic RRAM device for pattern recognition using artificial neural networks

Prabana Jetty, Kannan Udaya Mohanan, S. Narayana Jammalamadaka

2023Nanotechnology16 citationsDOIOpen Access PDF

Abstract

Abstract We report on the α -Fe 2 O 3 -based artificial synaptic resistive random access memory device, which is a promising candidate for artificial neural networks (ANN) to recognize the images. The device consists of a structure Ag/ α -Fe 2 O 3 /FTO and exhibits non-volatility with analog resistive switching characteristics. We successfully demonstrated synaptic learning rules such as long-term potentiation, long-term depression, and spike time-dependent plasticity. In addition, we also presented off-chip training to obtain good accuracy by backpropagation algorithm considering the synaptic weights obtained from α -Fe 2 O 3 based artificial synaptic device. The proposed α -Fe 2 O 3 -based device was tested with the FMNIST and MNIST datasets and obtained a high pattern recognition accuracy of 88.06% and 97.6% test accuracy respectively. Such a high pattern recognition accuracy is attributed to the combination of the synaptic device performance as well as the novel weight mapping strategy used in the present work. Therefore, the ideal device characteristics and high ANN performance showed that the fabricated device can be useful for practical ANN implementation.

Topics & Concepts

MNIST databaseArtificial neural networkSynaptic weightMaterials scienceBackpropagationNeuromorphic engineeringArtificial intelligencePattern recognition (psychology)Learning ruleResistive random-access memoryLong-term potentiationSynaptic plasticitySpiking neural networkComputer scienceVoltageElectrical engineeringBiochemistryEngineeringChemistryReceptorAdvanced Memory and Neural ComputingMachine Learning and ELMFerroelectric and Negative Capacitance Devices