计算机科学
芯(光纤)
人工神经网络
光子学
计算机体系结构
人工智能
材料科学
电信
光电子学
作者
Shupeng Ning,Hanqing Zhu,Chenghao Feng,Jiaqi Gu,David Z. Pan,Ray T. Chen
出处
期刊:Optica
[Optica Publishing Group]
日期:2025-06-18
卷期号:12 (7): 1079-1079
被引量:1
标识
DOI:10.1364/optica.559604
摘要
The rapid growth in computing demands, particularly driven by artificial intelligence applications, has begun to exceed the capabilities of traditional electronic hardware. Optical computing offers a promising alternative due to its parallelism, high computational speed, and low power consumption. However, existing photonic integrated circuits are constrained by large footprints, costly electro-optical interfaces, and complex control mechanisms, limiting the practical scalability of optical neural networks (ONNs). To address these limitations, we introduce a block-circulant photonic tensor core for a structure-compressed optical neural network (StrC-ONN) architecture. The structured compression technique substantially reduces both model complexity and hardware resources without sacrificing the versatility of neural networks, and achieves accuracy comparable to uncompressed models. Additionally, we propose a hardware-aware training framework to compensate for on-chip nonidealities to improve model robustness and accuracy. Experimental validation through image processing and classification tasks demonstrates that our StrC-ONN achieves a reduction in trainable parameters of up to 74.91%, while still maintaining competitive accuracy levels. Performance analyses further indicate that this hardware–software co-design approach is expected to yield a 3.56× improvement in power efficiency. By reducing both hardware requirements and control complexity across multiple dimensions, this work explores a pathway toward practical and scalable ONNs, highlighting a promising route to address future computational efficiency challenges.
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