神经形态工程学
材料科学
石墨烯
异质结
光电子学
能量(信号处理)
纳米技术
人工神经网络
计算机科学
人工智能
物理
量子力学
作者
Zheyu Yang,Shida Huo,Zhe Zhang,Fanying Meng,Baiyan Liu,Yue Wang,Yuexuan Ma,Zhiyuan Wang,Jing‐Bo Xu,Qiguo Tian,Yaohui Wang,Yanping Ding,Xiao Hu,Yuan Xie,Shuangqing Fan,Caofeng Pan,Enxiu Wu
标识
DOI:10.1002/adfm.202509119
摘要
Abstract Neuromorphic computing integrates sensing, memory, and computation to surpass the von Neumann bottleneck. Opto‐electronic synapses, capable of handling both optical and electrical signals, closely emulate biological synapses and enable advanced neuromorphic functionalities. Among them, optoelectronic floating‐gate transistors (OEFGTs) based on 2D van der Waals (vdW) heterostructures offer high bandwidth, minimal crosstalk, and multilevel data storage. However, improving optical synaptic weights remains crucial for enhancing learning efficiency and reducing power consumption. In this study, an OEFGT‐based opto‐electronic synapse using a rhenium disulfide/hexagonal boron nitride/graphene (ReS₂/h‐BN/Gra) vdW heterostructure is demonstrated. This device achieves unprecedented high‐precision multibit optical synaptic weights, reaching 1024 discrete levels (10‐bit resolution)—the highest reported for 2D‐material‐based OEFGTs. Consequently, it realizes ultra‐low energy consumption (500 fJ/spike) and various synaptic behaviors, including electrical and optical paired‐pulse facilitation, depression, and spike‐timing‐dependent plasticity. Furthermore, the device successfully mimics classical conditioning (Pavlov's dog experiment), and primate associative learning, and performs reconfigurable logic operations (“AND”, “OR”, and “NIMP”). An optoelectronic neural network incorporating this synapse achieved 98.8% accuracy after 200 epochs in a color vision recognition task. This work highlights significant potential for OEFGT‐based optoelectronic synapses with multibit optical weights in energy‐efficient, high‐performance neuromorphic computing.
科研通智能强力驱动
Strongly Powered by AbleSci AI