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  5. Tribo‐ferro‐optoelectronic neuromorphic transistor of <i>α</i>‐In<sub>2</sub>Se<sub>3</sub>

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Article
en
2023

Tribo‐ferro‐optoelectronic neuromorphic transistor of <i>α</i>‐In<sub>2</sub>Se<sub>3</sub>

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en
2023
Vol 1 (2)
Vol. 1
DOI: 10.1002/brx2.24

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Zhong Lin Wang
Zhong Lin Wang

Beijing Institute of Technology

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Zhenyu Feng
Jinran Yu
Yichen Wei
+6 more

Abstract

Abstract Inspired by biological neural networks, the fabrication of artificial neuromorphic systems with multimodal perception capacity shows promises in overcoming the “von Neumann bottleneck” and takes advantage of the efficient perception and computation of diverse types of signals. Here, we combine a triboelectric nanogenerator with an α ‐phase indium selenide ( α ‐In 2 Se 3 ) optoelectronic synaptic transistor to construct a tribo‐ferro‐optoelectronic artificial neuromorphic device with multimodal plasticity. Based on the excellent ferroelectric and optoelectronic characteristics of the α ‐In 2 Se 3 channel, typical synaptic behaviors (e.g., pair‐pulse facilitation and short‐term/long‐term plasticity) are successfully simulated in response to the synergistic effect of mechanical and optical stimuli. The interaction of mechanical displacement and light illumination enables heterosynaptic plasticity and spatiotemporal dynamic logic. Furthermore, multiple Boolean logical functions and associative learning behaviors are successfully implemented using the paired stimuli of displacement pulses and light pulses. The proposed tribo‐ferro‐optoelectronic artificial neuromorphic devices have great potential for application in interactive neural networks and next‐generation artificial intelligence.

How to cite this publication

Zhenyu Feng, Jinran Yu, Yichen Wei, Yifei Wang, Bobo Tian, Yonghai Li, Liuqi Cheng, Zhong Lin Wang, Qijun Sun (2023). Tribo‐ferro‐optoelectronic neuromorphic transistor of <i>α</i>‐In<sub>2</sub>Se<sub>3</sub>. , 1(2), DOI: https://doi.org/10.1002/brx2.24.

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Publication Details

Type

Article

Year

2023

Authors

9

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1002/brx2.24

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