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Multiuser/MIMO Doubly Selective Fading Channel Estimation Using Superimposed Training and Slepian Sequences

机译:使用叠加训练和Slepian序列的多用户/ MIMO双选衰落信道估计

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摘要

We consider doubly selective multiuser/multiple-input–multiple-output (MIMO) channel estimation and data detection using superimposed training. The time- and frequency-selective fading channel is assumed to be well described by a discrete prolate spheroidal basis expansion model (DPS-BEM) using Slepian sequences as basis functions. A user-specific periodic (nonrandom) training sequence is arithmetically added (superimposed) at low power to each user's information sequence at the transmitter before modulation and transmission. A two-step approach is adopted, where, in the first step, we estimate the channel using only the first-order statistics of the observations. In this step, however, the unknown information sequence acts as interference, resulting in a poor signal-to-noise ratio (SNR). We then iteratively reduce the interference in the second step by employing an iterative channel-estimation and data-detection approach, where, by utilizing the detected symbols from the previous iteration, we sequentially improve the multiuser/MIMO channel estimation and symbol detection. Simulation examples demonstrate that, without incurring any transmission data rate loss, the proposed approach is superior to the conventional time-multiplexed (TM) training for uncoordinated users, where the multiuser interference in channel estimation cannot be eliminated and is competitive with the TM training for coordinated users, where the TM training design allows for multiuser-interference-free channel estimation.
机译:我们考虑使用叠加训练进行双选择多用户/多输入多输出(MIMO)信道估计和数据检测。假设通过使用Slepian序列作为基函数的离散长球体基本扩展模型(DPS-BEM)可以很好地描述时间和频率选择性衰落信道。在调制和传输之前,在发射机处以低功率将用户特定的周期性(非随机)训练序列算术添加(叠加)到每个用户的信息序列。采用两步法,在第一步中,我们仅使用观测值的一阶统计量来估算通道。但是,在此步骤中,未知信息序列会产生干扰,从而导致较差的信噪比(SNR)。然后,我们在第二步中通过使用迭代的信道估计和数据检测方法来迭代地减少干扰,其中,利用先前迭代中检测到的符号,我们依次改善了多用户/ MIMO信道估计和符号检测。仿真示例表明,在不引起任何传输数据速率损失的情况下,所提出的方法优于针对不协调用户的常规时分多路复用(TM)训练,后者无法消除信道估计中的多用户干扰,并且与TM训练相比具有竞争优势。协调的用户,其中TM训练设计允许进行多用户无干扰的信道估计。

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