Tian Qinghua, Li Zhe, Hu Kang, Zhu Lei, Pan Xiaolong, Zhang Qi, Wang Yongjun, Tian Feng, Yin Xiaoli, Xin Xiangjun
Opt Express. 2018 Oct 15;26(21):27849-27864. doi: 10.1364/OE.26.027849.
In this paper, a novel turbo-coded 16-ary orbital angular momentum - shift keying-free space optical (OAM-SK-FSO) communication system combining a convolutional neural network (CNN) based adaptive demodulator under strong atmospheric turbulence is proposed for the first time. The feasibility of the scheme is verified by transmitting a 256-grayscale two-dimensional digital image. The bit error ratio (BER) performance of the system is investigated and the effect of different factors such as turbulence strength, propagation distance, code rate, length of random interleaver and length of bit interleaver is also taken into account. An advanced encoder/decoder structure and mapping scheme are applied to diminish the influence of CNN misclassification and reduce the BER effectively. With the optimal encoder/decoder structure and CNN model settings, the BER varies from 0 to 4.89×10 when the propagation distance increases from 200m to 1000m for a given turbulence strength Cn2 equals 5×10m. For a determined propagation distance equals 400m, the BER ranges from 0 to 4.01×10 when Cn2increases from 1×10m to 4×10m. Our numerical simulations demonstrate that the proposed system can provide better BER performance under strong atmospheric turbulence and conditions when the classification ability of CNN is limited.
本文首次提出了一种新型的Turbo编码16进制无轨道角动量-移键控自由空间光(OAM-SK-FSO)通信系统,该系统在强大气湍流条件下结合了基于卷积神经网络(CNN)的自适应解调器。通过传输一幅256灰度级的二维数字图像验证了该方案的可行性。研究了系统的误码率(BER)性能,并考虑了湍流强度、传播距离、码率、随机交织器长度和比特交织器长度等不同因素的影响。采用了先进的编码器/解码器结构和映射方案来减少CNN误分类的影响并有效降低误码率。在给定湍流强度Cn2等于5×10^-20 m^-2/3时,对于最优的编码器/解码器结构和CNN模型设置,当传播距离从200m增加到1000m时,误码率在0到4.89×10^-3之间变化。对于确定的传播距离等于400m,当Cn2从1×10^-20 m^-2/3增加到4×10^-20 m^-2/3时,误码率在0到4.01×10^-3之间变化。我们的数值模拟表明,所提出的系统在强大气湍流以及CNN分类能力有限的条件下能够提供更好的误码率性能。