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深度学习辅助水下光通信信号检测算法仿真及实验研究

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针对水下光通信提出了深度学习辅助的信号检测方法,设计并搭建了室内水下光通信实验平台,测试了所构建的三种水箱信道(水流、浑浊水流1、浑浊水流2)的数学模型,对所提方法进行了仿真测试,采集实验数据集对比研究了三种信道下所提方法与自适应阈值法的性能.针对不同水下信道、5 Mbps通信传输,三种信道下所提方法误比特率相比自适应阈值法最高分别降低了2个数量级、1个数量级、1个数量级.针对浑浊水流信道1、不同通信速率(5 Mbps、10 Mbps、25 Mbps)通信传输,三种速率下所提方法误比特率均降低了1个数量级.相比自适应阈值法,所提方法在复杂信道下水下无线光通信提高性能方面具有一定作用,可为高速可靠水下无线光通信系统设计提供一定参考.
Deep Learning Aided Signal Detection Algorithm Experimental Research for Underwater Optical Communication
Underwater wireless optical communication has garnered significant attention in the wireless communication field due to its high data rate,enhanced security,and lightweight nature.However,seawater can induce absorption and scattering of light.Absorption results in a reduction of the received optical power at the receiver,which is an irreversible process,while scattering causes alterations in the received photons at the receiver.Moreover,the ocean typically contains turbulence,a phenomenon caused by temperature variations and irregular movements,leading to random fluctuations in the optical signal.Consequently,the underwater channel is intricate and challenging to predict.To achieve reliable communication performance,a more dependable signal detection method is required at the receiver.In this study,a deep learning-assisted signal detection method is proposed for underwater optical communication.A convolutional neural network(a specialized form of deep neural network)is developed to directly detect the Original On-off Keying(OOK)signal,and two distinct training methods for the Deep Neural Network(DNN)are proposed during the training phase.Initially,an indoor underwater optical communication experimental platform is designed and constructed,incorporating three types of water tank channels(flowing water,turbid flow 1,turbid flow 2).The attenuation coefficients and probability density functions of the channels are measured.Subsequently,a simulated underwater optical channel is derived based on the measured channel mathematical models,and a simulated dataset of OOK signals for the neural network is obtained.The proposed methods are tested using the dataset,and the performance of the two different DNN training methods and the adaptive threshold method is simulated under different simulated channels.The proposed methods exhibit an improvement in Bit Error Rate(BER)compared to the adaptive threshold method at any signal-to-noise ratio in the three channels.The improvement is most notable in the simplest flow channel,with up to a two-order-of-magnitude enhancement,and it increases with higher signal-to-noise ratios in the relatively complex turbid flow channel 2.Additionally,due to DNN training method 1 learning multiple datasets from different channels,it exhibits worse BER performance compared to training method 2,which only learns one channel dataset.However,thanks to the powerful fitting capability of DNN,the BER is still superior to the adaptive threshold method.To validate the simulation results,experimental datasets of OOK signals are obtained based on the experimental platform.The DNN is retrained and tested using the experimental datasets,and the BER performance of the two different DNN training methods and the adaptive threshold method is experimentally studied.For 5 Mbps communication transmission in the three water tank channels,the DNN method achieves a reduction in BER of two orders of magnitude,one order of magnitude,and one order of magnitude,respectively,compared to the adaptive threshold method.The trend of the experimental results is consistent with the simulation.For turbid flow 1 and different communication rates(5 Mbps,10 Mbps,25 Mbps),the DNN method achieves a reduction in BER of one order of magnitude at all three rates,and the proposed method requires lower received optical power compared to the adaptive threshold method when the BER is the same.The simulation and experimental results demonstrate that the proposed method enhances the performance of underwater wireless optical communication in complex channels compared to the adaptive threshold method,validating the reliability of the method.Therefore,the method can offer valuable insights for the design of high-speed and reliable underwater wireless optical communication systems.

Optical communicationOn-off keying modulationDeep learningDeep neural networkSignal detection

叶鹏飞、张鹏、于浩、何爽、田东生、王圆鑫、佟首峰

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长春理工大学 电子信息工程学院,长春 130022

长春理工大学 中山研究院,中山 528400

长春理工大学 光电工程学院,长春 130022

吉林大学 通信工程学院,长春 130022

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光通信 通断键控调制 深度学习 深度神经网络 信号检测

国家自然科学基金重点项目国家重点研发计划吉林省教育厅项目吉林省教育厅项目吉林省教育厅项目

622310052022YFB2903402JJKH20220746KJJJKH20220771KJJJKH20210820KJ

2024

光子学报
中国光学学会 中国科学院西安光学精密机械研究所

光子学报

CSTPCD北大核心
影响因子:0.948
ISSN:1004-4213
年,卷(期):2024.53(7)
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