神经形态工程学
控制重构
记忆电阻器
计算机科学
人工神经网络
解码方法
光子学
计算机体系结构
电子工程
嵌入式系统
人工智能
电信
工程类
材料科学
光电子学
作者
Zhenyu Zhou,Lulu Wang,Gongjie Liu,Y. Li,Zhiyuan Guan,Zixuan Zhang,Pengfei Li,Yifei Pei,Jianhui Zhao,Jiameng Sun,Yahong Wang,Yiduo Shao,Xiaobing Yan
标识
DOI:10.1038/s41377-025-01928-5
摘要
Abstract The dynamic neural network function realized by reconfigurable memristors to implement artificial neurons and synapses is an effective method to complete the next generation of neuromorphic computing. However, due to the limitation of reconfiguration conditions, there are inconsistencies in the turn-on voltage and operating current before and after the reconfiguration of neuromorphic devices, which leads to huge difficulties in hardware application development and is an urgent problem to be solved. In this work, we introduced light as a regulatory means in the memristor and achieved the reconfiguration of volatile (endurance ~10 6 cycles) and non-volatile (retention ~10 4 s) characteristics with a unified working parameter through the photoelectric coupling mode. The switching voltage of the device can be controlled 100% by this method without any limiting current. This will allow neurons and synapses to be dynamically allocated on demand. We completed the verification such as Morse code decoding, Poisson coded image recognition, denoising in the image recognition process, and intelligent traffic signal recognition hardware system under different work modes. It is verified that the device can dynamically adjust the neuromorphic according to needs, providing a new idea for the further integration of neuromorphic computing in the future.
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