神经形态工程学
材料科学
可扩展性
计算机科学
石墨烯
光电子学
异质结
计算机数据存储
晶体管
计算
计算机体系结构
纳米技术
电压
计算机硬件
电气工程
人工神经网络
人工智能
工程类
算法
数据库
作者
Danke Chen,Yuning Li,Xiaoqiu Tang,Jingye Sun,Xuan Yao,Peizhi Yu,Xue Li,Qing You,Hanyu Wang,He Tian,Tao Deng
标识
DOI:10.1002/advs.202513429
摘要
Abstract Optoelectronic artificial neuromorphic devices, inspired by biological vision systems, have overcome bottlenecks of the von Neumann architecture. The innovation and integration of neuromorphic hardware systems represent a pivotal challenge for advancing the iteration of artificial intelligence. Accordingly, a novel optoelectronic reconfigurable neuromorphic transistor (ORNT) is designed to integrate three functions, enabling the perception, computation, and storage of optical information in a manner analogous to visual nervous systems. Based on the electrode‐inserted graphene/VO 2 nanoparticles heterostructure and photovoltaic effect, the ORNT demonstrates broadband self‐powered responsiveness from the ultraviolet to near‐infrared (365–940 nm). Leveraging the photogating effect and the photoinduced phase transition in VO 2 , the differentiated electrode design enables wide‐electrode ORNTs to exhibit synaptic behavior under bias voltages, whereas narrow‐electrode ORNTs demonstrate data storage capability and multistage photomodulation. Furthermore, an integrated optical communication and processing‐in‐memory system is developed, achieving a full‐process demonstration from optical perception to computation and storage. Overall, the ORNTs introduced in this work provide an innovative strategy for optimizing the hardware resource allocation of chips and enhancing the adaptability and scalability of systems.
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