Non‐Volatile Electrolyte‐Gated Transistors Based on Graphdiyne/MoS 2 with Robust Stability for Low‐Power Neuromorphic Computing and Logic‐In‐Memory

Advanced Functional Materials(2021)

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摘要
Artificial synapses are the key building blocks for low-power neuromorphic computing that can go beyond the constraints of von Neumann architecture. In comparison with two-terminal memristors and three-terminal transistors with filament-formation and charge-trapping mechanisms, emerging electrolyte-gated transistors (EGTs) have been demonstrated as a promising candidate for neuromorphic applications due to their prominent analog switching performance. Here, a novel graphdiyne (GDY)/MoS2-based EGT is proposed, where an ion-storage layer (GDY) is adopted to EGTs for the first time. Benefitting from this Li-ion-storage layer, the GDY/MoS2-based EGT features a robust stability (variation < 1% for over 2000 cycles), an ultralow energy consumption (50 aJ mu m(-2)), and long retention characteristics (>10(4) s). In addition, a quasi-linear conductance update with low noise (1.3%), an ultrahigh G(max)/G(min) ratio (10(3)), and an ultralow readout conductance (<10 nS) have been demonstrated by this device, enabling the implementation of the neuromorphic computing with near-ideal accuracies. Moreover, the non-volatile characteristics of the GDY/MoS2-based EGT enable it to demonstrate logic-in-memory functions, which can execute logic processing and store logic results in a single device. These results highlight the potential of the GDY/MoS2-based EGT for next-generation low-power electronics beyond von Neumann architecture.
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关键词
electrolyte&#8208, gated transistors, graphdiyne, Li&#8208, ion storage layers, logic&#8208, in&#8208, memory, neuromorphic computing
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