Zhan Haichao, Peng Yixiang, Chen Bing, Wang Le, Wang Wennai, Zhao Shengmei
Opt Express. 2022 Jun 20;30(13):23305-23317. doi: 10.1364/OE.462241.
Vortex beam carrying orbital angular momentum (OAM) is disturbed by oceanic turbulence (OT) when propagating in underwater wireless optical communication (UWOC) system. Adaptive optics (AO) is a powerful technique used to compensate for distortion and improve the performance of the UWOC system. In this work, we propose a diffractive deep neural network (DDNN) based AO scheme to compensate for the distortion caused by OT, where the DDNN is trained to obtain the mapping between the distortion intensity distribution of the vortex beam and its corresponding phase screen representing OT. In the experiment, the distorted vortex beam is input into the DDNN model where the diffractive layers are solidified and fabricated, and the intensity distribution of the modulated light field of the vortex beam can be recorded. The experiment results show that the proposed scheme can extract quickly the characteristics of the intensity pattern of the distorted vortex beam, and the predicted compensation phase screen can correct the distortion caused by OT in time. The mode purity of the compensated vortex beam is significantly improved, even with a strong OT. Our scheme may provide a new avenue for AO techniques, and is expected to promote the communication quality of UWOC system immediately.
携带轨道角动量(OAM)的涡旋光束在水下无线光通信(UWOC)系统中传播时会受到海洋湍流(OT)的干扰。自适应光学(AO)是一种用于补偿失真并提高UWOC系统性能的强大技术。在这项工作中,我们提出了一种基于衍射深度神经网络(DDNN)的AO方案来补偿由OT引起的失真,其中DDNN经过训练以获得涡旋光束的失真强度分布与其代表OT的相应相位屏之间的映射。在实验中,将失真的涡旋光束输入到固化并制造了衍射层的DDNN模型中,并可以记录涡旋光束调制光场的强度分布。实验结果表明,所提出的方案能够快速提取失真涡旋光束强度图案的特征,并且预测的补偿相位屏能够及时校正由OT引起的失真。即使在强OT的情况下,补偿后涡旋光束的模式纯度也有显著提高。我们的方案可能为AO技术提供一条新途径,并有望立即提升UWOC系统的通信质量。