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Controlled Growth of Wafer-Scale Transition Metal Dichalcogenides with a Vertical Composition Gradient for Artificial Synapses with High Linearity

Lei Tang, Changjiu Teng, Runzhang Xu, Zehao Zhang, Usman Khan, Rongjie Zhang, Yuting Luo, Huiyu Nong, Bilu Liu, Hui–Ming Cheng

2022ACS Nano17 citationsDOI

Abstract

Artificial synapses are promising for dealing with large amounts of data computing. Great progress has been made recently in terms of improving the on/off current ratio, the number of states, and the energy efficiency of synapse devices. However, the nonlinear weight update behavior of a synapse caused by the uncertain direction of the conductive filament leads to complex weight modulation, which degrades the delivery accuracy of information. Here we propose a strategy to improve the weight update behavior of synapses using chemical-vapor-deposition-grown transition metal dichalcogenides (TMDCs) with a vertical composition gradient, where the sulfur concentration decreases gradually along the thickness direction of TMDCs and thus forms a certain direction of the conduction filament for synapse devices. It is worth noting that the devices show an excellent linear conductance of potentiation and depression with a high linearity of 0.994 (surpassing most state-of-the-art synapses), have a large number of states, and are able to fabricate synapse arrays with wafer-scale. Furthermore, the devices based on the TMDCs with the vertical composition gradient exhibit an asymmetric feature of potentiation and depression behaviors with high linearity and follow the simulated linear Leaky ReLU function, resulting in a high recognition accuracy of 94.73%, which overcomes the unreliability issue in the Sigmoid function due to the vanishing gradient phenomenon. This study not only provides a universal method to grow TMDCs with a vertical composition gradient but also contributes to exploring highly linear synapses toward neuromorphic computing.

Topics & Concepts

WaferLinearityMaterials scienceNeuromorphic engineeringSynapseChemical vapor depositionTemperature gradientOptoelectronicsNanotechnologyComputer scienceArtificial neural networkElectronic engineeringArtificial intelligencePhysicsNeuroscienceEngineeringQuantum mechanicsBiologyAdvanced Memory and Neural ComputingTransition Metal Oxide NanomaterialsPhotoreceptor and optogenetics research