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Subspace-based Blind Channel Estimation for MIMO-OFDM Systems: Reducing the Time Averaging Interval of the Correlation Matrix

机译:用于MIMO-OFDM系统的基于子空间的盲信道估计:减少相关矩阵的时间平均间隔

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Subspace-based blind channel estimation primarily exploits the orthogonality structure of the noise and signal subspaces by applying a signal-noise space decomposition to the correlation matrix of the received signal. In practice, the correlation matrix is unknown and must be estimated through time averaging over multiple symbol blocks. To this end, the wireless channel must be time-invariant over a sufficient time interval, which may pose a problem for wideband applications. In this paper, we propose a novel subspace-based blind channel estimation algorithm with a reduced time averaging interval, as obtained by exploiting the frequency correlation among adjacent OFDM subcarriers. We present simulation results of the proposed as well as referenced subspace-based methods, including Cyclic Prefix and Virtual Carriers approaches, and show that the proposed scheme is able to obtain a desired correlation matrix by reducing the number of the OFDM blocks for time averaging up to 85%.
机译:基于子空间的盲信道估计主要通过将信号噪声空间分解应用于接收信号的相关矩阵来利用噪声和信号子空间的正交性结构。实际上,相关矩阵是未知的,必须通过对多个符号块进行时间平均来估计。为此,无线信道在足够的时间间隔内必须是时不变的,这可能对宽带应用造成问题。在本文中,我们提出了一种新颖的基于子空间的盲信道估计算法,该算法通过利用相邻OFDM子载波之间的频率相关性而获得的,具有减小的时间平均间隔。我们介绍了所提出的以及基于子空间的方法的仿真结果,包括循环前缀和虚拟载波方法,并且表明所提出的方案能够通过减少用于时间平均的OFDM块的数量来获得所需的相关矩阵。达到85%。

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