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Stable adaptive sparse filtering algorithms for estimating multiple-input–multiple-output channels

机译:稳定的自适应稀疏滤波算法,用于估计多输入多输出通道

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摘要

Channel estimation problem is one of the key technical issues for broadband multiple-input–multiple-output (MIMO) signal transmission. To estimate the MIMO channel, a standard least mean square (LMS) algorithm was often applied to adaptive channel estimation because of its low complexity and stability. The sparsity of the broadband MIMO channel can be exploited to further improve the estimation performance. This observation motivates us to consider adaptive sparse channel estimation (ASCE) methods using sparse LMS (ASCE-LMS) algorithms. However, conventional ASCE methods have two main drawbacks: (i) sensitivity to random scaling of training signal and (ii) poor estimation performance in low signal-to-noise ratio (SNR) regime. The former drawback is tackled by proposing novel ASCE-NLMS algorithms. ASCE-NLMS mitigates interference of random scale of training signal and therefore it improves its algorithm stability. It is well-known that stable sparse normalised least-mean fourth (NLMF) algorithms can achieve better estimation performance than sparse NLMS algorithms. Therefore the authors propose an improved ASCE method using sparse NLMF algorithms (ASCE-NLMF) to improve the estimation performance in low SNR regime. Simulation results show that the proposed ASCE methods are shown to achieve better performance than conventional methods, that is, ASCE-LMS by computer simulations. Also, the stability of the proposed methods is confirmed by theoretical analysis.
机译:信道估计问题是宽带多输入多输出(MIMO)信号传输的关键技术问题之一。为了估计MIMO信道,由于其低复杂度和稳定性,通常将标准最小均方(LMS)算法应用于自适应信道估计。可以利用宽带MIMO信道的稀疏性来进一步提高估计性能。这种观察促使我们考虑使用稀疏LMS(ASCE-LMS)算法的自适应稀疏信道估计(ASCE)方法。但是,常规的ASCE方法有两个主要缺点:(i)对训练信号的随机缩放具有敏感性,并且(ii)在低信噪比(SNR)方案中估计性能较差。前者的缺点是通过提出新颖的ASCE-NLMS算法解决的。 ASCE-NLMS减轻了训练信号随机范围的干扰,因此提高了算法的稳定性。众所周知,与稀疏NLMS算法相比,稳定的稀疏归一化最小均四(NLMF)算法可以实现更好的估计性能。因此,作者提出了一种改进的使用稀疏NLMF算法(ASCE-NLMF)的ASCE方法,以提高低SNR体制下的估计性能。仿真结果表明,通过计算机仿真,所提出的ASCE方法表现出比常规方法(即ASCE-LMS)更好的性能。此外,理论分析证实了所提出方法的稳定性。

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  • 来源
    《Communications, IET》 |2014年第7期|1032-1040|共9页
  • 作者

    Gui G.; Adachi F.;

  • 作者单位

    Department of Communications Engineering, Graduate School of Engineering, Tohoku University, Sendai 980-8579, Japan|c|;

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  • 正文语种 eng
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