超短脉冲
功率消耗
功率(物理)
消费(社会学)
计算机科学
超低功耗
电气工程
电子工程
光电子学
物理
工程类
光学
量子力学
社会学
激光器
社会科学
作者
Yun He,Feng Xiong,Jinbao Jiang,Biyuan Zheng,Wei Xu,Meng Zhu,Hong Zhu
标识
DOI:10.1364/opticaopen.28831289.v1
摘要
Optoelectronic hybrid neural networks combine the advantages of electronical and optical neural networks, enabling next-generation neuromorphic computing systems with nanosecond processing speeds, fJ-level energy efficiency, and wafer-scale integration density. Here, we demonstrate a MoS2/h-BN/graphene based 2D-material floating gate (FG) transistor exhibiting excellent electrical memory characteristics and dual mode photo-response: both positive (PPC) and negative photoconductance (NPC). Utilizing this device, we experimentally demonstrate a three-layer artificial neural network achieving high image recognition accuracy (97.2%) with ultrafast operation (30 ns) and ultralow energy consumption (3.2 fJ/event). These results indicate that optoelectronic hybrid neural networks implemented with all-2D FG transistors can achieve energy-efficient and high-speed in-memory sensing and computing, showing promising potential in next-generation neuromorphic computing.
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