神经形态工程学
计算机科学
响应度
记忆电阻器
有状态防火墙
石墨烯
非易失性存储器
电阻随机存取存储器
材料科学
计算机数据存储
光电子学
计算机硬件
电压
人工智能
光电探测器
电子工程
纳米技术
电气工程
人工神经网络
工程类
网络数据包
计算机网络
作者
Xiao Fu,Tangxin Li,Bin Cai,Jinshui Miao,Г. Н. Панин,Xinyu Ma,Jinjin Wang,Xiaoyong Jiang,Qing Li,Yi Dong,Chunhui Hao,Juyi Sun,Hangyu Xu,Qixiao Zhao,Mengjia Xia,Bo Song,Fansheng Chen,Xiaohong Chen,Wei Lü,Weida Hu
标识
DOI:10.1038/s41377-023-01079-5
摘要
Conventional artificial intelligence (AI) machine vision technology, based on the von Neumann architecture, uses separate sensing, computing, and storage units to process huge amounts of vision data generated in sensory terminals. The frequent movement of redundant data between sensors, processors and memory, however, results in high-power consumption and latency. A more efficient approach is to offload some of the memory and computational tasks to sensor elements that can perceive and process the optical signal simultaneously. Here, we proposed a non-volatile photomemristor, in which the reconfigurable responsivity can be modulated by the charge and/or photon flux through it and further stored in the device. The non-volatile photomemristor has a simple two-terminal architecture, in which photoexcited carriers and oxygen-related ions are coupled, leading to a displaced and pinched hysteresis in the current-voltage characteristics. For the first time, non-volatile photomemristors implement computationally complete logic with photoresponse-stateful operations, for which the same photomemristor serves as both a logic gate and memory, using photoresponse as a physical state variable instead of light, voltage and memresistance. The polarity reversal of photomemristors shows great potential for in-memory sensing and computing with feature extraction and image recognition for neuromorphic vision.
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