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·2024
Deep Learning-Driven Interference Perceptual Multi-Modulation for Full-Duplex Systems
Taehyoung Kim, Gyuyeol Kong
IF 2.2Mathematics
초록

In this paper, a novel data transmission scheme, interference perceptual multi-modulation (IP-MM), is proposed for full-duplex (FD) systems. In order to unlink the conventional uplink (UL) data transmission using a single modulation and coding scheme (MCS) over the entire assigned UL bandwidth, IP-MM enables the transmission of UL data channels based on multiple MCS levels, where a different MCS level is applied to each subband of UL transmission. In IP-MM, a deep convolutional neural network is used for MCS-level prediction for each UL subband by estimating the potential residual self-interference (SI) according to the downlink (DL) resource allocation pattern. In addition, a subband-based UL transmission procedure is introduced from a specification point of view to enable IP-MM-based UL transmission. The benefits of IP-MM are verified using simulations, and it is observed that IP-MM achieves approximately 20% throughput gain compared to the conventional UL transmission scheme.

키워드
Computer scienceTransmission (telecommunications)Interference (communication)Telecommunications linkElectronic engineeringModulation (music)Convolutional neural networkComputer networkArtificial intelligenceTelecommunications
타입
article
IF / 인용수
2.2 / 0
게재 연도
2024