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Full-duplex Transceiver Design: A GMM Clustering Approach

机译:全双工收发器设计:一种GMM群集方法

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In conventional full-duplex communications, dedicated symbols are transmitted to estimate both the self-interference channel and the desired signal channel in order to perform self-interference cancellation (SIC) and to detect the desired signal. However, inaccurate channel estimation will produce residual self-interference and degrade the detection performance. In this paper, we exploit Gaussian mixture model (GMM) clustering to design a full-duplex transceiver (FDT), which is able to detect the desired signal without requiring digital domain channel estimations and SIC. The frame structure of the designed FDT contains two successive phases: labelling phase and data transmission phase. In particular, the designed FDT performs cluster labelling in the labelling phase and performs GMM clustering based on expectation-maximization (EM) algorithm in the data transmission phase. Furthermore, the labelling symbol design is optimized for the overhead reduction and clustering accuracy improving. Finally, simulation results show that, the bit error rate (BER) of the designed FDT is closed to the performance of the FDT with a maximum likelihood (ML) detector and perfect channel knowledge, meanwhile is superior to the BER performance of the FDT with a ML detector and a least square (LS) channel estimator.
机译:在常规的全双工通信中,传输专用符号以估计自干扰信道和期望信号信道两者,以便执行自干扰消除(SIC)并检测期望信号。但是,不正确的信道估计将产生残留的自干扰,并降低检测性能。在本文中,我们利用高斯混合模型(GMM)聚类来设计全双工收发器(FDT),该收发器能够检测所需信号,而无需数字域信道估计和SIC。设计的FDT的帧结构包含两个连续的阶段:标记阶段和数据传输阶段。特别是,设计的FDT在标记阶段执行聚类标记,并在数据传输阶段基于期望最大化(EM)算法执行GMM聚类。此外,优化了标记符号设计,以减少开销并提高聚类精度。最后,仿真结果表明,所设计的FDT的误码率(BER)接近于具有最大似然(ML)检测器和完善的信道知识的FDT的性能,同时优于具有FDT的FDT的BER性能。 ML检测器和最小二乘(LS)信道估计器。

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