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引用次数: 3
摘要
众所周知,反馈虽然不能增加无记忆信道的信道容量,但可以提高可靠性或缩短码字长度。这项工作是基于Viterbi在1965年利用即时反馈进行可靠通信的早期结果。我们通过合并(咬尾)卷积码并设计一个解码器通过在解码过程中发送反馈与发射机交互的系统来建立这项工作。所提出的系统被称为机会符号长度自适应系统(Opportunistic Symbol Length Adaptation, OSLA),该系统可以根据每个符号的噪声实现机会地调整符号长度,以确保实现目标可靠性。研究表明,结合咬尾卷积码,所提出的方案优于最先进的非反馈码,以及最近提出的基于深度学习的反馈方案,在无噪声和有噪声反馈通道中增益高达1.5 dB。
Instantaneous Feedback-based Opportunistic Symbol Length Adaptation for Reliable Communication
It is well known that although feedback cannot increase the channel capacity of memoryless channels, it can enhance reliability or shorten codeword length. This work is based on an early result by Viterbi in 1965 that utilizes instantaneous feedback for reliable communications. We build on this work by incorporating (tail-biting) convolutional codes and designing a system where the decoder interacts with the transmitter by sending feedback during the decoding process. The proposed system is called Opportunistic Symbol Length Adaptation (OSLA), in which the symbol length opportunistically adapts to noise realization of each symbol to ensure that the target reliability is achieved. It is shown that, combined with tail-biting convolutional codes, the proposed scheme outperforms state-of-the-art non-feedback codes, as well as a recently proposed deep learning-based feedback scheme with up to 1.5 dB gain in noise-less and noisy feedback channels.