论文标题
基于衍射深神经网络的UWOC系统的全向接收器
The omnidirectional receiver for UWOC systems based on the diffractive deep neural network
论文作者
论文摘要
水下无线光学通信(UWOC)系统中的链路对齐要求是一个棘手的问题。这些年来,衍射深神经网络(D2NN)在完成任务方面表现出巨大的潜力。在本文中,首先提出了基于7层D2NN的全向接收器,以减轻UWOC系统中的链路对齐困难。此外,与普遍采用的标量衍射理论相比,将矢量衍射理论引入了D2NN的训练中,以获得更准确的衍射计算。仿真结果验证了矢量衍射理论的有效性,并证明了所提出的方法可以在检测平面的6.25%面积中以倾斜角度从0到89度的倾斜角度将光波重点,平均聚焦效率为90.96%,证明了接收者终端填充焦点的可行性。额外的模拟进一步表明,更多的层不会导致持续的性能提高,而是达到瓶颈,并且D2NN可以实现具有一定焦点区域大小的全向聚焦。通过更多的努力,可以与探测器高度集成的拟议接收器设计有望在将来实现UWOC系统中的全向和可靠的链接建立。
The link alignment requirement in underwater wireless optical communication (UWOC) systems is a knotty problem. The diffractive deep neural network (D2NN) has shown great potential in accomplishing tasks all optically these years. In this paper, an omnidirectional receiver based on 7-layer D2NN is first proposed to alleviate the link alignment difficulties in UWOC systems. In addition, the vectorial diffraction theory is introduced into the training of the D2NN to obtain more accurate diffraction calculations compared with the prevalently adopted scalar diffraction theory. Simulation results verify the validity of the vectorial diffraction theory and demonstrate that the presented method can focus incident light waves with tilt angles from 0 to 89 degrees in a 6.25% area of the detection plane with an average focusing efficiency of 90.96%, proving the feasibility of omnidirectional focusing at the receiver end. Extra simulations further reveal that more layers do not lead to a sustained performance improvement but rather reach a bottleneck, and the D2NN can achieve omnidirectional focusing with a certain range of focusing region size. With more effort, the proposed receiver design, which can be highly integrated with detectors, holds promise to realize both omnidirectional and reliable link establishment in UWOC systems in the future.