神经形态工程学
材料科学
计算机科学
纳米线
神经促进
人工神经网络
油藏计算
神经科学
光电子学
人工智能
循环神经网络
生物
抑制性突触后电位
兴奋性突触后电位
作者
Weikang Shen,Pan Wang,Guodong Wei,Shuai Yuan,Mi Chen,Y. K. Su,Bingshe Xu,Guoqiang Li
出处
期刊:Small
[Wiley]
日期:2024-04-12
被引量:2
标识
DOI:10.1002/smll.202400458
摘要
Abstract 1D nanowire networks, sharing similarities of structure, information transfer, and computation with biological neural networks, have emerged as a promising platform for neuromorphic systems. Based on brain‐like structures of 1D nanowire networks, neuromorphic synaptic devices can overcome the von Neumann bottleneck, achieving intelligent high‐efficient sensing and computing function with high information processing rates and low power consumption. Here, high‐temperature neuromorphic synaptic devices based on SiC@NiO core–shell nanowire networks optoelectronic memristors (NNOMs) are developed. Experimental results demonstrate that NNOMs attain synaptic short/long‐term plasticity and modulation plasticity under both electrical and optical stimulation, and exhibit advanced functions such as short/long‐term memory and “learning–forgetting–relearning” under optical stimulation at both room temperature and 200 °C. Based on the advanced functions under light stimulus, the constructed 5 × 3 optoelectronic synaptic array devices exhibit a stable visual memory function up to 200 °C, which can be utilized to develop artificial visual systems. Additionally, when exposed to multiple electronic or optical stimuli, the NNOMs effectively replicate the principles of Pavlovian classical conditioning, achieving visual heterologous synaptic functionality and refining neural networks. Overall, with abundant synaptic characteristics and high‐temperature thermal stability, these neuromorphic synaptic devices offer a promising route for advancing neuromorphic computing and visual systems.
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