Gate-Controlled Neuromorphic Functional Transition in an Electrochemical Graphene Transistor.
Chenglin YuShaorui LiZhoujie PanYanming LiuYongchao WangSiyi ZhouZhiting GaoHe TianKaili JiangYayu WangJinsong ZhangPublished in: Nano letters (2024)
Neuromorphic devices have attracted significant attention as potential building blocks for the next generation of computing technologies owing to their ability to emulate the functionalities of biological nervous systems. The essential components in artificial neural networks such as synapses and neurons are predominantly implemented by dedicated devices with specific functionalities. In this work, we present a gate-controlled transition of neuromorphic functions between artificial neurons and synapses in monolayer graphene transistors that can be employed as memtransistors or synaptic transistors as required. By harnessing the reliability of reversible electrochemical reactions between carbon atoms and hydrogen ions, we can effectively manipulate the electric conductivity of graphene transistors, resulting in a high on/off resistance ratio, a well-defined set/reset voltage, and a prolonged retention time. Overall, the on-demand switching of neuromorphic functions in a single graphene transistor provides a promising opportunity for developing adaptive neural networks for the upcoming era of artificial intelligence and machine learning.
Keyphrases
- neural network
- artificial intelligence
- machine learning
- big data
- room temperature
- carbon nanotubes
- gold nanoparticles
- spinal cord
- deep learning
- walled carbon nanotubes
- ionic liquid
- molecularly imprinted
- working memory
- mass spectrometry
- spinal cord injury
- prefrontal cortex
- risk assessment
- climate change
- high resolution
- african american