Zhang Yuanyuan, Zhang Kuo, Hu Pei, Li Daxing, Feng Shuai
School of Science, Minzu University of China, Beijing 100081, China.
State Key Laboratory of Advanced Optical Communication Systems and Networks, Department of Electronic Engineering, Shanghai Jiao Tong University, Shanghai 200240, China.
Nanophotonics. 2025 Jul 8;14(17):2891-2899. doi: 10.1515/nanoph-2025-0168. eCollection 2025 Aug.
Optical neural networks (ONNs) have demonstrated unique advantages in overcoming the limitations of traditional electronic computing through their inherent physical properties, including high parallelism, ultra-wide bandwidth, and low power consumption. As a crucial implementation of ONNs, on-chip diffractive optical neural network (DONN) offers an effective solution for achieving highly integrated and energy-efficient machine learning tasks. Notably, wavelength, as a fundamental degree of freedom in optical field manipulation, exhibits multidimensional multiplexing capabilities that can significantly enhance computational parallelism. However, existing DONNs predominantly operate under single-wavelength mechanisms, limiting the computational throughput. Here, we propose a multi-wavelength visual classification architecture termed PhC-DONN, which integrates two-dimensional photonic crystal (PhC) components with diffractive computing units. The architecture comprises three functional modules: (1) a PhC convolutional layer that enables multi-wavelength feature extraction; (2) a three-stage diffraction layer performing parallel modulation of optical fields; and (3) a PhC nonlinear activation layer implementing wavelength nonlinear computation. The results demonstrate that the PhC-DONN achieves classification accuracies of 99.09 % on the MNIST dataset, 66.41 % on the CIFAR-10 dataset, and 92.25 % on KTH human action recognition. By introducing a wavelength-parallel classification mechanism, the architecture accomplishes multi-channel inference during a single light propagation pass, resulting in a 32-fold enhancement in computational throughput compared to conventional DONNs while improving classification accuracy. This work not only establishes a novel optical classification paradigm for multi-wavelength optical neural network, but also provides a viable pathway towards constructing large-scale photonic intelligence parallel processors.
光学神经网络(ONNs)通过其固有的物理特性,包括高并行性、超宽带宽和低功耗,在克服传统电子计算的局限性方面展现出独特优势。作为光学神经网络的关键实现方式,片上衍射光学神经网络(DONN)为实现高度集成和节能的机器学习任务提供了一种有效解决方案。值得注意的是,波长作为光场操纵中的一个基本自由度,具有多维复用能力,可显著提高计算并行性。然而,现有的衍射光学神经网络主要在单波长机制下运行,限制了计算吞吐量。在此,我们提出一种称为PhC-DONN的多波长视觉分类架构,它将二维光子晶体(PhC)组件与衍射计算单元集成在一起。该架构包括三个功能模块:(1)一个能够进行多波长特征提取的光子晶体卷积层;(2)一个执行光场并行调制的三级衍射层;(3)一个实现波长非线性计算的光子晶体非线性激活层。结果表明,PhC-DONN在MNIST数据集上的分类准确率达到99.09%,在CIFAR-10数据集上为66.41%,在KTH人类动作识别数据集上为92.25%。通过引入波长并行分类机制,该架构在单次光传播过程中完成多通道推理,与传统衍射光学神经网络相比,计算吞吐量提高了32倍,同时提高了分类准确率。这项工作不仅为多波长光学神经网络建立了一种新颖的光学分类范式,还为构建大规模光子智能并行处理器提供了一条可行途径。