|国家预印本平台
首页|GHz spiking neuromorphic photonic chip with in-situ training

GHz spiking neuromorphic photonic chip with in-situ training

GHz spiking neuromorphic photonic chip with in-situ training

来源:Arxiv_logoArxiv
英文摘要

Neuromorphic photonic computing represents a paradigm shift for next-generation machine intelligence, yet critical gaps persist in emulating the brain's event-driven, asynchronous dynamics,a fundamental barrier to unlocking its full potential. Here, we report a milestone advancement of a photonic spiking neural network (PSNN) chip, the first to achieve full-stack brain-inspired computing on a complementary metal oxide semiconductor-compatible silicon platform. The PSNN features transformative innovations of gigahertz-scale nonlinear spiking dynamics,in situ learning capacity with supervised synaptic plasticity, and informative event representations with retina-inspired spike encoding, resolving the long-standing challenges in spatiotemporal data integration and energy-efficient dynamic processing. By leveraging its frame-free, event-driven working manner,the neuromorphic optoelectronic system achieves 80% accuracy on the KTH video recognition dataset while operating at ~100x faster processing speeds than conventional frame-based approaches. This work represents a leap for neuromorphic computing in a scalable photonic platform with low latency and high throughput, paving the way for advanced applications in real-time dynamic vision processing and adaptive decision-making, such as autonomous vehicles and robotic navigation.

Jinlong Xiang、Xinyuan Fang、Jie Xiao、Youlve Chen、An He、Yaotian Zhao、Zhenyu Zhao、Yikai Su、Min Gu、Xuhan Guo

光电子技术计算技术、计算机技术

Jinlong Xiang,Xinyuan Fang,Jie Xiao,Youlve Chen,An He,Yaotian Zhao,Zhenyu Zhao,Yikai Su,Min Gu,Xuhan Guo.GHz spiking neuromorphic photonic chip with in-situ training[EB/OL].(2025-06-17)[2025-06-28].https://arxiv.org/abs/2506.14272.点此复制

评论