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PZT-Enabled MoS 2 Floating Gate Transistors: Overcoming Boltzmann Tyranny and Achieving Ultralow Energy Consumption for High-Accuracy Neuromorphic Computing.

Jing ChenYe-Qing ZhuXue-Chun ZhaoZheng-Hua WangKai ZhangZheng ZhangMing-Yuan SunShuai WangYu ZhangLin HanXiaoming WuTian-Ling Ren
Published in: Nano letters (2023)
Low-power electronic devices play a pivotal role in the burgeoning artificial intelligence era. The study of such devices encompasses low-subthreshold swing (SS) transistors and neuromorphic devices. However, conventional field-effect transistors (FETs) face the inherent limitation of the "Boltzmann tyranny", which restricts SS to 60 mV decade -1 at room temperature. Additionally, FET-based neuromorphic devices lack sufficient conductance states for highly accurate neuromorphic computing due to a narrow memory window. In this study, we propose a pioneering PZT-enabled MoS 2 floating gate transistor (PFGT) configuration, demonstrating a low SS of 46 mV decade -1 and a wide memory window of 7.2 V in the dual-sweeping gate voltage range from -7 to 7 V. The wide memory window provides 112 distinct conductance states for PFGT. Moreover, the PFGT-based artificial neural network achieves an outstanding facial-recognition accuracy of 97.3%. This study lays the groundwork for the development of low-SS transistors and highly energy efficient artificial synapses utilizing two-dimensional materials.
Keyphrases
  • room temperature
  • artificial intelligence
  • machine learning
  • working memory
  • deep learning
  • high resolution
  • transition metal