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首页> 外文期刊>Wireless personal communications: An Internaional Journal >Compressed Sensing of Sparse Multipath MIMO Channels with Superimposed Training Sequence
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Compressed Sensing of Sparse Multipath MIMO Channels with Superimposed Training Sequence

机译:叠加训练序列的稀疏多径MIMO通道的压缩传感

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Recent advances in multiple-input multiple-output (MIMO) systems have renewed the interests of researchers to further explore this area for addressing various dynamic challenges of emerging radio communication networks. Various measurement campaigns reported recently in the literature show that physical multipath MIMO channels exhibit sparse impulse response structure in various outdoor radio propagation environments. Therefore, a comprehensive physical description of sparse multipath MIMO channels is presented in first part of this paper. Superimposing a training sequence (low power, periodic) over the information sequence offers an improvement in the spectral efficiency by avoiding the use of dedicated time/frequency slots for the training sequence, which is unlike the traditional schemes. The main contribution of this paper includes three superimposed training (SiT) sequence based channel estimation techniques for sparse multipath MIMO channels. The proposed techniques exploit the compressed sensing theory and prior available knowledge of channel's sparsity. The proposed sparse MIMO channel estimation techniques are named as, SiT based compressed channel sensing (SiT-CCS), SiT based hardlimit thresholding with CCS (SiT-ThCCS), and SiT training based match pursuit (SiT-MP). Bit error rate (BER) and normalized channel mean square error are used as metrics for the simulation analysis to gauge the performance of proposed techniques. A comparison of the proposed schemes with a notable first order statistics based SiT least squares (SiT-LS) estimation technique is presented to establish the improvements achieved by the proposed schemes. For sparse multipath time-invariant MIMO communication channels, it is observed that SiT-CCS, SiT-MP, and SiT-ThCCS can provide an improvement up to 2, 3.5, and 5.2 dB in the MSE at signal to noise ratio (SNR) of 12 dB when compared to SiT-LS, respectively. Moreover, for , the proposed SiT-CCS, SiT-MP, and SiT-ThCCS, compared to SiT-LS, can offer a gain of about 1, 2.5, and 3.5 dB in the SNR, respectively. The performance gain in MSE and BER is observed to improve with an increase in the channel sparsity.
机译:多次输入多输出(MIMO)系统的最新进展较了研究人员的利益,以进一步探索解决新兴无线电通信网络的各种动态挑战的领域。最近在文献中报告的各种测量运动表明,物理多径MIMO通道在各种室外无线电传播环境中表现出稀疏脉冲响应结构。因此,本文的第一部分介绍了稀疏多径MIMO通道的综合物理描述。通过避免使用用于训练序列的专用时间/频率时隙,叠加在信息序列上的训练序列(低功率,周期性)提供了频谱效率的改进,这与传统方案不同。本文的主要贡献包括用于稀疏多径MIMO通道的三个基于级叠加训练(SIT)序列的信道估计技术。所提出的技术利用了压缩的传感理论和渠道稀疏性的现有知识。所提出的稀疏MIMO信道估计技术被命名为SIT基于基于的压缩通道感应(SIT-CCS),与CCS(SIT-THCCS)定位的硬阈值阈值处理,并坐在基于训练的匹配追求(SIT-MP)。误码率(BER)和归一化信道均方误差用作仿真分析的指标,以衡量所提出的技术的性能。提出了具有基于值得注意的第一顺序统计信息的所提出的方案的比较,以实现最小二乘(SIT-LS)估计技术,以建立所提出的方案所实现的改进。对于稀疏多径时间不变的MIMO通信通道,观察到SIT-CCS,SIT-MP和SIT-THCC可以在信号到噪声比(SNR)的MSE中提供高达2,3.5和5.2 dB的改进与SIT-LS相比,12 dB分别。此外,与SIT-LS相比,对于所提出的SIT-CCS,SIT-MP和SIT-THCC,分别可以在SNR中提供约1,2.5和3.5 dB的增益。观察MSE和BER中的性能增益,随着通道稀疏性的增加而改善。

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