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SIMO Channel Estimation Using Space-Time Signal Subspace Projection and Soft Information

机译:使用时空信号子空间投影和软信息的SIMO信道估计

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We consider the channel estimation of a time-slotted wireless communication system with a mobile user and a base station, where the base station employs an $M$-element $(M>1)$ antenna array. The uplink single-input multiple-output (SIMO) channel is usually estimated by training sequence within each time slot. To improve the estimation performance, the channel estimate is often refined by projecting it to the corresponding spatial signal subspace. However, this projection will not work when the number of resolvable multipath rays is larger than that of the antenna array elements, which makes the channel matrix full row rank. In this paper, we formulate the channel estimation under the space-time signal model for this full-row-rank case, and propose a new method by space-time signal subspace projection using both training and unknown data sequences. To further improve the accuracy of the channel estimate, the soft information fed back from the decoder can be used. By involving this soft information, we propose another new channel estimation method. This method approximately follows the maximum likelihood (ML) criterion and is therefore referred to as the approximated ML channel estimation. Numerical results show that these methods can be performed separately or jointly to improve the performance of channel estimation by training sequences.
机译:我们考虑具有移动用户和基站的时隙无线通信系统的信道估计,其中基站采用$ M $元$(M> 1)$天线阵列。通常通过每个时隙内的训练序列来估计上行链路单输入多输出(SIMO)信道。为了提高估计性能,通常通过将信道估计投影到相应的空间信号子空间来完善信道估计。但是,当可分辨多径射线的数量大于天线阵列元件的数量时,此投影将不起作用,这将使信道矩阵成为完整的行列。在本文中,我们针对这种全排行情况在时空信号模型下制定了信道估计,并提出了一种使用训练和未知数据序列的时空信号子空间投影的新方法。为了进一步提高信道估计的准确性,可以使用从解码器反馈的软信息。通过包含此软信息,我们提出了另一种新的信道估计方法。该方法近似遵循最大似然(ML)准则,因此被称为近似ML信道估计。数值结果表明,这些方法可以单独执行,也可以共同执行,以提高训练序列的信道估计性能。

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