Non-volatile and ultra-fast photonic vector accelerator with optical phase change materials and integrated microcomb

Yuanyun Wang, Lehan Zhao, Qingsong Bai, Jin Deng, Zihan Shen, Haitang Li, Zhengmao Wu, Jiagui Wu, Guangqiong Xia
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Abstract

Convolutional neural network (CNN) has attracted widespread attention in image feature extraction and speech recognition owing to greatly reducing the complexity of model parameters and the number of weights, but it cannot be separated from the support of hardware accelerator. The limitations of electronic devices in terms of power, speed, and size make it difficult for current electron accelerators to meet the computational power requirements of future large-scale convolution operations. Here, we proposed a photonic vector architecture. This structure combines time, space and wavelength, and the non-volatile phase change material and the integrated microcomb form an optical matrix multiplier to realize memory calculation, thus reducing the energy consumption of reading weight data. The tooth spacing of the integrated microcomb is more than 100 GHz, and the microcomb coverage is from 1510 nm to 1610 nm. Finally, we replace the weight values in the CNN with the optimal weight values that the optics can achieve. The final recognition accuracy reached 97.04%, which is comparable to the efficiency of the first electronic equipment. Our results could be helpful for the development of non-volatile and ultra-fast optical neural network (ONN) with feathers of low energy consumption and high integration.
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采用光学相变材料和集成微蜂窝的非易失性超快光子矢量加速器
卷积神经网络(CNN)由于大大降低了模型参数和权值数量的复杂性,在图像特征提取和语音识别领域受到广泛关注,但它离不开硬件加速器的支持。由于电子设备在功率、速度和尺寸方面的限制,目前的电子加速器难以满足未来大规模卷积运算的计算能力要求。在此,我们提出了一种光子矢量结构。该结构集时间、空间和波长于一体,非易失性相变材料与集成微蜂窝构成光矩阵乘法器,实现存储计算,从而降低了读取权重数据的能耗。集成微蜂窝的齿距超过 100 GHz,微蜂窝覆盖范围从 1510 nm 到 1610 nm。最后,我们将 CNN 中的权重值替换为光学仪器所能达到的最佳权重值。最终的识别准确率达到了 97.04%,与第一台电子设备的效率相当。我们的研究成果有助于开发低能耗、高集成度的非易失性超快速光神经网络(ONN)。
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