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STLN-based Channel Estimation using Superimposed Training and First-Order Statistics

机译:使用叠加训练和一阶统计量的基于STLN的渠道估计

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In this paper,Channel estimation using superimposed training and first-order statistics is considered.Informationinduced interference matrix in channel estimation is of Toeplitz structure,which can be utilized for deconvolution of the system equation.A structured total least norm (STLN) approach is introduced to improve the estimation performance.Simulation results show the enhancement performance of the STLN estimator when compared with the LS,total least squares (TLS) and data least squares (DLS) estimators.
机译:本文考虑了使用叠加训练和一阶统计量进行信道估计的方法。信道估计中的信息诱导干扰矩阵为Toeplitz结构,可用于系统方程的反卷积。介绍了一种结构化的总最小范数(STLN)方法仿真结果表明,与LS,总最小二乘(TLS)和数据最小二乘(DLS)估计器相比,STLN估计器具有增强的性能。

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