Краткое изложение:
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 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 representating OT. The intensity pattern of the
distorted vortex beam obtained in the experiment is input to the DDNN model,
and the predicted phase screen can be used to compensate the distortion in real
time. The experiment results show that the proposed scheme can extract quickly
the characteristics of the intensity pattern of the distorted vortex beam, and
output accurately the predicted phase screen. 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.
Рекомендуемое цитирование:Haichao Zhan,Le Wang,Wennai Wang,Shengmei Zhao.Diffractive deep neural network based adaptive optics scheme for vortex
beam in oceanic turbulence.null.[ChinaXiv:202303.02008V1] (Нажмите здесь, чтобы скопировать)