Doubly selective channel estimation in full-duplex MIMO-OFDM systems

V. Nguyen-Duy-Nhat, H. Nguyen-Le, Chien Tang-Tan, T. Bui-Thi-Minh
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引用次数: 2

Abstract

This paper studies the problem of frequency-and time-selective (doubly selective) channel estimation in full-duplex multiple-input multiple-output (MIMO) orthogonal frequency division multiplexing (OFDM) systems. In particular, the maximum-likelihood (ML) principle is employed to formulate a pilot-aided channel estimation algorithm. To reduce the number of doubly selective channel parameters to be estimated, various basis expansion models (BEMs) are used as fitting parametric models. The use of BEMs enables an increase in the system spectral efficiency since estimating a reduced number of channel parameters entails a reduction in used pilot overhead. This paper provides analytical and empirical results of the BEM-based channel estimation accuracy. Several mean square error (MSE) results show that the discrete prolate spheroidal (DPS) or Karhuen Loeve (KL) basis functions would be a suitable choice for BEM-based full-duplex doubly selective channel estimation.
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全双工MIMO-OFDM系统中的双选择信道估计
研究了全双工多输入多输出(MIMO)正交频分复用(OFDM)系统中频率和时间选择性(双选择性)信道估计问题。特别地,采用最大似然(ML)原理来制定导频辅助信道估计算法。为了减少需要估计的双选择性信道参数的数量,采用各种基展开模型作为拟合参数模型。bem的使用可以提高系统的频谱效率,因为估计减少的信道参数数量需要减少使用的导频开销。本文给出了基于边界元法的信道估计精度的分析和实证结果。均方误差(MSE)结果表明,离散长球面基函数(DPS)或Karhuen Loeve基函数(KL)是基于bem的全双工双选择性信道估计的合适选择。
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