Self-assembled vapor-transport-deposited SnS nanoflake-based memory devices with synaptic learning properties

APPLIED SURFACE SCIENCE(2024)

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摘要
The most salient features of resistive switching (RS) devices are low energy consumption, fast switching speed, and high-density integration, which render them promising candidates for realizing non-volatile memory and artificial synaptic devices. However, the growth of functional switching layers for RS devices needs innovative deposition techniques. Herein, we utilize a high-throughput vapor-transport-deposition (VTD) technique for synthesizing self-assembled tin-sulfide (SnS) nanoflakes, which are then used as a switching layer to fabricate an RS device. First principle calculations are conducted to understand the optoelectronic properties of SnS by employing density functional theory. The proposed Ag/SnS/Pt memory device exhibits substantial merits, including low-switching voltages (V-SET: 0.22 V and V-RESET: -0.20 V), suitable ON/OFF ratio (similar to 259), excellent endurance (10(6)), and extended memory retention (10(6) s) characteristics. In addition, RS stochasticity is modeled using statistical time-series analysis via Holt's exponential smoothing. Interestingly, the device can emulate multiple synaptic functionalities, including potentiation, depression, paired-pulse facilitation, paired-pulse depression, excitatory postsynaptic current, inhibitory postsynaptic current, and advanced spike-timing dependent plasticity rules. Moreover, the proposed synaptic device can detect the edge of images by utilizing a convolutional neural network. The unique and efficient VTD-SnS-based device will be a potential candidate for high-density non-volatile memory and neuromorphic computing applications.
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关键词
Vapor-transport-deposited tin-sulfide,Resistive switching,Synaptic learning,Density functional theory,Time-series analysis
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