摘要
With the rapid development of big data and the internet of things, the current computing paradigms based on traditional Von Neumann architecture have suffered from limited throughput and energy inefficiency. The memristor-based artificial neural network computing system could be regarded as a promising candidate to overcome this bottleneck. In this study, silicon carbide (SiC) nanowire (NW)-based optoelectronic memristors are successfully developed, which can realize complex brain-like features such as dendritic neuron and Pavlov’s learning. On the basis of the visual function, perception, storage, and in situ computing functions integrated within optoelectronic memristors have been achieved. More importantly, benefiting from the excellent computing power of the SiC NW visual synapses, the constructed spike neural network is capable of implementing the identification of early lung cancer lesions. The accuracy rate of detection exceeds 90% with only a few iterations, indicating promising applications in the medical field with high efficiency and accuracy. The present study provides a promising path for developing and promoting SiC-based integrating perception-storage-computation artificial intelligence devices for neuromorphic computing technology.[Figure not available: see fulltext.]
投稿的翻译标题 | 用于无线传输和神经网络计算的碳化硅纳米线多功 能高效视觉突触器件 |
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源语言 | 英语 |
页(从-至) | 3238-3250 |
页数 | 13 |
期刊 | Science China Materials |
卷 | 66 |
期 | 8 |
DOI | |
出版状态 | 已出版 - 8月 2023 |