Scientific Reports (Mar 2022)

Emulation of synaptic functions with low voltage organic memtransistor for hardware oriented neuromorphic computing

  • Srikrishna Sagar,
  • Kannan Udaya Mohanan,
  • Seongjae Cho,
  • Leszek A. Majewski,
  • Bikas C. Das

DOI
https://doi.org/10.1038/s41598-022-07505-9
Journal volume & issue
Vol. 12, no. 1
pp. 1 – 12

Abstract

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Abstract Here, various synaptic functions and neural network simulation based pattern-recognition using novel, solution-processed organic memtransistors (memTs) with an unconventional redox-gating mechanism are demonstrated. Our synaptic memT device using conjugated polymer thin-film and redox-active solid electrolyte as the gate dielectric can be routinely operated at gate voltages (V GS) below − 1.5 V, subthreshold-swings (S) smaller than 120 mV/dec, and ON/OFF current ratio larger than 108. Large hysteresis in transfer curves depicts the signature of non-volatile resistive switching (RS) property with ON/OFF ratio as high as 105. In addition, our memT device also shows many synaptic functions, including the availability of many conducting-states (> 500) that are used for efficient pattern recognition using the simplest neural network simulation model with training and test accuracy higher than 90%. Overall, the presented approach opens a new and promising way to fabricate high-performance artificial synapses and their arrays for the implementation of hardware-oriented neural network.