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A Semi Blind Joint CFO Estimation, Equalization and Data Detection in Presence of Non-Linearity for mm-Wave Communications

机译:毫米波通信存在非线性时的半盲联合CFO估计,均衡和数据检测

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Millimeter wave (mm-Wave) is an emerging paradigm towards 5G technology that can support high data rate. The foreseen potential of mm-Wave is limited by huge path loss incurred due to the high frequency operation which can be alleviated by high emission power at the transmitter. This in concurrence with the enormous bandwidth of mm-Wave and high frequency design limitations of the integrated circuits enforce the power amplifier (PA) into non-linear region. Further, the non-linear distortion in collusion with frequency selective channel and carrier frequency offset (CFO) degrade the signal detection performance. To solve this problem, we propose a semi-blind joint estimation of CFO and frequency selective channel gains followed by data detection in the presence of PA non-linearity. The presence of non-linearity results in the posterior probability distribution of complex data symbol to be non-Gaussian and hence, analytically intractable. Therefore, sequential importance resampling based particle filter (PF) is suggested for approximating the intractable posterior distribution of interest by the weighted random probability samples (particles) to detect the data symbols. The detected symbols are then used to jointly update the channel gains and CFO using a novel sequential maximum likelihood (ML) estimation. Extensive simulation results validate the proposed algorithm. This novel scheme enhances the non-linear signal detection performance in presence of CFO and frequency selective channel at the receiver.
机译:毫米波(mm-Wave)是可支持高数据速率的5G技术的新兴范例。毫米波的可预见潜力受到由于高频操作引起的巨大路径损耗的限制,而高频损耗可以通过发射机的高发射功率来缓解。这与毫米波的巨大带宽以及集成电路的高频设计限制相一致,迫使功率放大器(PA)进入非线性区域。此外,与频率选择信道和载波频率偏移(CFO)勾结的非线性失真会降低信号检测性能。为了解决这个问题,我们提出了在CPA和频率选择性信道增益之间进行半盲联合估计,然后在存在PA非线性的情况下进行数据检测。非线性的存在导致复杂数据符号的后验概率分布是非高斯的,因此在分析上难以处理。因此,建议使用基于顺序重要性重采样的粒子滤波器(PF),以通过加权随机概率样本(粒子)来近似感兴趣的难处理的后验分布,以检测数据符号。然后,使用新颖的顺序最大似然(ML)估计,将检测到的符号用于联合更新信道增益和CFO。大量的仿真结果验证了该算法的有效性。在接收器处存在CFO和频率选择信道的情况下,这种新颖的方案增强了非线性信号检测性能。

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