Gao Sheng, Chen Hang, Wang Yichen, Duan Zhengyang, Zhang Haiou, Sun Zhi, Shen Yuan, Lin Xing
Department of Electronic Engineering, Tsinghua University, Beijing, 100084, China.
Beijing National Research Center for Information Science and Technology, Tsinghua University, Beijing, 100084, China.
Light Sci Appl. 2024 Jul 10;13(1):161. doi: 10.1038/s41377-024-01511-4.
Wireless sensing of the wave propagation direction from radio sources lays the foundation for communication, radar, navigation, etc. However, the existing signal processing paradigm for the direction of arrival estimation requires the radio frequency electronic circuit to demodulate and sample the multichannel baseband signals followed by a complicated computing process, which places the fundamental limit on its sensing speed and energy efficiency. Here, we propose the super-resolution diffractive neural networks (S-DNN) to process electromagnetic (EM) waves directly for the DOA estimation at the speed of light. The multilayer meta-structures of S-DNN generate super-oscillatory angular responses in local angular regions that can perform the all-optical DOA estimation with angular resolutions beyond the diffraction limit. The spatial-temporal multiplexing of passive and reconfigurable S-DNNs is utilized to achieve high-resolution DOA estimation over a wide field of view. The S-DNN is validated for the DOA estimation of multiple radio sources over 5 GHz frequency bandwidth with estimation latency over two to four orders of magnitude lower than the state-of-the-art commercial devices in principle. The results achieve the angular resolution over an order of magnitude, experimentally demonstrated with four times, higher than diffraction-limited resolution. We also apply S-DNN's edge computing capability, assisted by reconfigurable intelligent surfaces, for extremely low-latency integrated sensing and communication with low power consumption. Our work is a significant step towards utilizing photonic computing processors to facilitate various wireless sensing and communication tasks with advantages in both computing paradigms and performance over electronic computing.
对来自无线电源的波传播方向进行无线传感为通信、雷达、导航等奠定了基础。然而,现有的用于到达方向估计的信号处理范式要求射频电子电路对多通道基带信号进行解调并采样,随后进行复杂的计算过程,这对其传感速度和能量效率设置了基本限制。在此,我们提出超分辨率衍射神经网络(S-DNN)以光速直接处理电磁波进行到达方向估计。S-DNN的多层超结构在局部角度区域产生超振荡角度响应,可实现超越衍射极限的角度分辨率的全光到达方向估计。利用无源和可重构S-DNN的时空复用在宽视场范围内实现高分辨率到达方向估计。S-DNN在5 GHz频率带宽上对多个无线电源的到达方向估计进行了验证,其估计延迟比现有商用设备原则上低两到四个数量级。结果实现了比衍射极限分辨率高一个数量级以上的角度分辨率,实验证明高出四倍。我们还借助可重构智能表面应用S-DNN的边缘计算能力,实现极低延迟的低功耗集成传感与通信。我们的工作朝着利用光子计算处理器迈进了重要一步,以促进各种无线传感和通信任务,在计算范式和性能方面均优于电子计算。