Pilot-Free End-to-End Underwater Acoustic Communication System Based on AutoencoderOA
Pilot-Free End-to-End Underwater Acoustic Communication System Based on Autoencoder
The long delay spreads and significant Doppler effects of underwater acoustic(UWA)channels make the design of the UWA communication system more challenging.In this paper,we propose a learning-based end-to-end framework for UWA communications,lever-aging a double feature extraction network(DFEN)for data preprocessing.The DFEN consists of an attention-based module and a mixer-based module for channel feature extraction and data feature extraction,respec-tively.Considering the diverse nature of UWA channels,we propose a stack-network with a two-step training strategy to enhance generalization.By avoiding the use of pilot information,the proposed network can learn data mapping that is robust to UWA channels.Evaluation results show that our proposed algorithm outperforms the baselines by at least 2 dB under bit error rate(BER)10-2 on the simulation channel,and surpasses the compared neural network by at least 5 dB under BER 5 × 10-2 on the experiment channels.
Yizhe Wang;Deqing Wang;Liqun Fu
School of Informatics,and Key Labora-tory of Underwater Acoustic Communication and Marine Information Tech-nology of Ministry of Education,Xiamen University,Xiamen 361005,China
underwater acoustic communicationsau-toencodertime-varying channel
《通信与信息网络学报(英文)》 2024 (003)
233-243 / 11
This work was supported by the National Natural Science Foundation of China under Grant U23A20281 and Grant 62271427,Key Sci-ence and Technology Project of Fujian Province under Grant 2023H0001,and the Natural Science Foundation of Xiamen under Grant 3502Z20227177.
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