Compressed Feedback Using AutoEncoder Based on Deep Learning for D2D Communication Networks
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초록

In this paper, we propose a feedback reduction scheme based on AutoEncoder and deep reinforcement learning for frequency division duplex (FDD) overlay device-to-device (D2D) communication networks. All D2D receivers and transmitters are equipped with an Encoder and Decoder, respectively, of the trained AutoEncoder. The D2D receivers compress the feedback information using the Encoder before transmitting while the transmitters decompress the received feedback information. We also employ a dueling deep Q network (DQN) to allow each D2D transmitter to autonomously determine whether to transmit data based on the decompressed feedback information. The performance of the proposed feedback reduction scheme is analyzed in terms of the average MSE of the AutoEncoder and the average sum-rate of a D2D communication network. Our numerical results show that the proposed feedback reduction scheme using the AutoEncoder can achieve 100%, 89%, and 86% of the average sum-rate of the perfect feedback scheme with no compression when the signal-to-noise ratio is 10dB, -5dB, and -20dB, respectively, while reducing the feedback by 50%. IEEE

키워드

AutoEncoderCommunication networksDecodingDeep learningDevice-to-device (D2D)Device-to-device communicationdueling deep Q network (DQN)feedback reductionReceiversSignal to noise ratioTransmittersPOWER-CONTROLINFORMATIONSCHEME
제목
Compressed Feedback Using AutoEncoder Based on Deep Learning for D2D Communication Networks
저자
Ban, T.
DOI
10.1109/LWC.2023.3234574
발행일
2023-04
유형
Article
저널명
IEEE Wireless Communications Letters
12
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