4.8 Article

Dual-Gated MoS2Memtransistor Crossbar Array

期刊

ADVANCED FUNCTIONAL MATERIALS
卷 30, 期 45, 页码 -

出版社

WILEY-V C H VERLAG GMBH
DOI: 10.1002/adfm.202003683

关键词

2D; artificial neural network; neuromorphic computing; sneak current; synaptic device

资金

  1. National Science Foundation Materials Research Science and Engineering Center [NSF DMR-1720139]
  2. National Institute of Standards and Technology [NIST CHiMaD 70NANB14H012]
  3. ONR DURIP grant [ONR N00014-16-1-3179]
  4. National Research Foundation of Korea (NRF) - Korean government (MSIT) [2019R1F1A1059637]
  5. NSERC Postgraduate Scholarship-Doctoral Program
  6. National Science Foundation Graduate Research Fellowship
  7. Soft and Hybrid Nanotechnology Experimental (SHyNE) Resource (NSF) [ECCS-1542205]
  8. Materials Research Science and Engineering Center [NSF DMR-1720139]
  9. State of Illinois
  10. Northwestern University
  11. National Research Foundation of Korea [2019R1F1A1059637] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

向作者/读者索取更多资源

Memristive systems offer biomimetic functions that are being actively explored for energy-efficient neuromorphic circuits. In addition to providing ultimate geometric scaling limits, 2D semiconductors enable unique gate-tunable responses including the recent realization of hybrid memristor and transistor devices known as memtransistors. In particular, monolayer MoS(2)memtransistors exhibit nonvolatile memristive switching where the resistance of each state is modulated by a gate terminal. Here, further control over the memtransistor neuromorphic response through the introduction of a second gate terminal is gained. The resulting dual-gated memtransistors allow tunability over the learning rate for non-Hebbian training where the long-term potentiation and depression synaptic behavior is dictated by gate biases during the reading and writing processes. Furthermore, the electrostatic control provided by dual gates provides a compact solution to the sneak current problem in traditional memristor crossbar arrays. In this manner, dual gating facilitates the full utilization and integration of memtransistor functionality in highly scaled crossbar circuits. Furthermore, the tunability of long-term potentiation yields improved linearity and symmetry of weight update rules that are utilized in simulated artificial neural networks to achieve a 94% recognition rate of hand-written digits.

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