Channel Estimation for Massive MIMO: A Semiblind Algorithm Exploiting QAM Structure

B. Yilmaz, A. Erdogan
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引用次数: 7

Abstract

We introduce a new channel matrix estimation algorithm for Massive MIMO systems to reduce the required pilot symbols. The proposed method is based on Maximum A Posteriori estimation where the density of QAM transmission symbols are approximated with continuous uniform pdf. Under this simplification, joint channel source estimation problem can be posed as an optimization problem whose objective is quadratic in each channel and source symbol matrices, separately. Also, the source symbols are constrained to lie in an ℓ∞-norm ball. The resulting framework serves as the channel estimation counterpart of the recently introduced compressed training based adaptive equalization framework. Numerical examples demonstrate that the proposed approach significantly reduces the required pilot length to achieve desired bit error rate performance.
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大规模MIMO信道估计:一种利用QAM结构的半盲算法
针对大规模MIMO系统,提出了一种新的信道矩阵估计算法,以减少所需导频符号。该方法基于最大A后验估计,用连续均匀的pdf逼近QAM传输符号的密度。在这种简化下,联合信道信源估计问题可以分别化为目标为每个信道和信源符号矩阵二次元的优化问题。同时,源符号被约束在一个有∞范数的球中。所得到的框架作为最近引入的基于压缩训练的自适应均衡框架的信道估计对口。数值算例表明,该方法显著降低了导频长度以达到理想的误码率性能。
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