Qian Yufeng, Chen Huaijian, Huo Pingping, Wang Xiao, Gao Shaoyan, Zhang Pei, Gao Hong, Liu Ruifeng, Li Fuli
Opt Express. 2022 Apr 25;30(9):15172-15183. doi: 10.1364/OE.456440.
Light beams carrying orbital angular momentum (OAM) have been constantly developing in free-space optical (FSO) communications. However, perturbations in the free space link, such as rain, fog, and atmospheric turbulence, may affect the transmission efficiency of this technique. If the FSO communications procedure takes place in a smoke condition with low visibility, the communication efficiency also will be worse. Here, we use deep learning methods to recognize OAM eigenstates and superposition states in a thick smoke condition. In a smoke transmission link with visibility about 5 m to 6 m, the experimental recognition accuracy reaches 99.73% and 99.21% for OAM eigenstates and superposition states whose Bures distance is 0.05. Two 6 bit/pixel pictures were also successfully transmitted in the extreme smoke conditions. This work offers a robust and generalized proposal for FSO communications based on OAM modes and allows an increase of the communication capacity under the low visibility smoke conditions.
携带轨道角动量(OAM)的光束在自由空间光(FSO)通信中不断发展。然而,自由空间链路中的干扰,如雨、雾和大气湍流,可能会影响该技术的传输效率。如果FSO通信过程在能见度低的烟雾条件下进行,通信效率也会变差。在此,我们使用深度学习方法在浓烟条件下识别OAM本征态和叠加态。在能见度约为5米至6米的烟雾传输链路中,对于Bures距离为0.05的OAM本征态和叠加态,实验识别准确率分别达到99.73%和99.21%。在极端烟雾条件下,还成功传输了两张6位/像素的图片。这项工作为基于OAM模式的FSO通信提供了一个稳健且通用的方案,并能够在低能见度烟雾条件下提高通信容量。