Applications of Basis Selection Algorithms in Communication Problems

G. Karabulut, T. Kurt, A. Yongaçoğlu
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Abstract

In this paper, we study the application of sequential basis selection (SBS) algorithms in two different communication problems. These problems represent different cases in terms of the structure of their set of equations. The two considered cases are; undercomplete set of equations (sparse channel estimation problem) and overcomplete set of equations. These cases are carefully selected in order to demonstrate that SBS algorithms can be applied to both types of equations. The basic matching pursuit (BMP) and the orthogonal matching pursuit (OMP) algorithms are selected as the SBS algorithms. In sparse channel estimation problem, the BMP and the OMP algorithms are compared with the least square channel estimates and the minimum variance unbiased estimates (MVUE). It is shown that the OMP algorithm gives estimates that are almost converging to MVUE. In angle of arrival (AOA) detection problem, the detection performances of the BMP and OMP algorithms are compared with the well known MUSIC algorithm and the Cramer Rao bounds. It is shown that their performances exceed that of MUSIC for correlated signals
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基选择算法在通信问题中的应用
本文研究了顺序基选择(SBS)算法在两种不同通信问题中的应用。这些问题根据它们的方程组的结构代表了不同的情况。考虑的两个案例是;欠完备方程组(稀疏信道估计问题)与过完备方程组。为了证明SBS算法可以应用于这两种类型的方程,我们仔细选择了这些案例。选取基本匹配追踪(BMP)算法和正交匹配追踪(OMP)算法作为SBS算法。在稀疏信道估计问题中,将BMP和OMP算法与最小二乘信道估计和最小方差无偏估计(MVUE)进行了比较。结果表明,OMP算法给出的估计几乎收敛于MVUE。在到达角(AOA)检测问题上,比较了BMP和OMP算法与MUSIC算法和Cramer - Rao界的检测性能。结果表明,对于相关信号,它们的性能优于MUSIC
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