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Enhanced analog switching and neuromorphic performance of ZnO-based memristors with indium tin oxide electrodes for high-accuracy pattern recognition

Muhammad Ismail, Maria Rasheed, Yongjin Park, Sohyeon Lee, Chandreswar Mahata, Wonbo Shim, Sungjun Kim

2024The Journal of Chemical Physics12 citationsDOI

Abstract

This study systematically investigates analog switching and neuromorphic characteristics in a ZnO-based memristor by varying the anodic top electrode (TE) materials [indium tin oxide (ITO), Ti, and Ta]. Compared with the TE materials (Ti and Ta), memristive devices with TEs made of ITO exhibit dual volatile and nonvolatile switching behavior and multistate switching characteristics assessed based on reset-stop voltage and current compliance (ICC) responses. The polycrystalline structure of the ZnO functional layer sandwiched between ITO electrodes was confirmed by high-resolution transmission electron microscopy analysis. The current transport mechanism in the ZnO-based memristor was dominated by Schottky emission, with the Schottky barrier height modulated from 0.26 to 0.4 V by varying the reset-stop voltage under different ICC conditions. The long-term potentiation and long-term depression synaptic characteristics were successfully mimicked by modulating the pulse amplitudes. Furthermore, a 90.84% accuracy was achieved using a convolutional neural network architecture for Modified National Institute of Standards and Technology pattern categorization, as demonstrated by the confusion matrix. The results demonstrated that the ITO/ZnO/ITO/Si memristor device holds promise for high-performance electronic applications and effective ITO electrode modeling.

Topics & Concepts

Materials scienceNeuromorphic engineeringMemristorOptoelectronicsIndium tin oxideElectrodeSchottky barrierSchottky diodeElectronic engineeringNanotechnologyLayer (electronics)Computer scienceArtificial neural networkDiodeChemistryMachine learningPhysical chemistryEngineeringAdvanced Memory and Neural ComputingNeuroscience and Neural EngineeringNeural dynamics and brain function
Enhanced analog switching and neuromorphic performance of ZnO-based memristors with indium tin oxide electrodes for high-accuracy pattern recognition | Litcius