神经形态工程学
硅光子学
计算机科学
光子学
人工神经网络
可扩展性
光电二极管
电子工程
材料科学
光电子学
人工智能
工程类
数据库
作者
Yang Shi,Junyu Ren,Guanyu Chen,Wei Liu,Chuqi Jin,Xiangyu Guo,Yu Yu,Xinliang Zhang
标识
DOI:10.1038/s41467-022-33877-7
摘要
Abstract Silicon photonics is promising for artificial neural networks computing owing to its superior interconnect bandwidth, low energy consumption and scalable fabrication. However, the lack of silicon-integrated and monitorable optical neurons limits its revolution in large-scale artificial neural networks. Here, we highlight nonlinear germanium-silicon photodiodes to construct on-chip optical neurons and a self-monitored all-optical neural network. With specifically engineered optical-to-optical and optical-to-electrical responses, the proposed neuron merges the all-optical activation and non-intrusive monitoring functions in a compact footprint of 4.3 × 8 μm 2 . Experimentally, a scalable three-layer photonic neural network enables in situ training and learning in object classification and semantic segmentation tasks. The performance of this neuron implemented in a deep-scale neural network is further confirmed via handwriting recognition, achieving a high accuracy of 97.3%. We believe this work will enable future large-scale photonic intelligent processors with more functionalities but simplified architecture.
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