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Spiking Neural Network Integrated with Impact Ionization Field-Effect Transistor Neuron and a Ferroelectric Field-Effect Transistor Synapse.

Haeju ChoiSungpyo BaekHanggyo JungTaeho KangSangmin LeeJongwook JeonByung Chul JangSung Joo Lee
Published in: Advanced materials (Deerfield Beach, Fla.) (2024)
The integration of artificial spiking neurons based on steep-switching logic devices and artificial synapses with neuromorphic functions enables an energy-efficient computer architecture that mimics the human brain well, known as a spiking neural network (SNN). 2D materials with impact ionization or ferroelectric characteristics have the potential for use in such devices. However, research on 2D spiking neurons remains limited and investigations of 2D artificial synapses far more common. An innovative 2D spiking neuron is implemented using a WSe 2 impact ionization transistor (I 2 FET), while a spiking neural network is formed by combining it with a 2D ferroelectric synaptic device (FeFET). The suggested 2D spiking neuron demonstrates precise spiking behavior that closely resembles that of actual neurons. In addition, it achieves a low energy consumption of 2 pJ/spike. The better impact ionization properties of WSe 2 are responsible for this efficiency. Furthermore, an all-2D SNN consisting of 2D I 2 FET neurons and 2D FeFET synapses is constructed, which achieves high accuracy of 87.5% in a face classification task by unsupervised learning. The integration of a 2D SNN with 2D steep-switching spiking neuronal devices and 2D synaptic devices shows great potential for the development of neuromorphic systems with improved energy efficiency and computational capabilities.
Keyphrases
  • neural network
  • spinal cord
  • machine learning
  • deep learning
  • wastewater treatment
  • risk assessment
  • blood brain barrier
  • brain injury
  • prefrontal cortex