基于LMS、NLMS和RLS算法的OFDM系统信道估计比较研究

K. Elangovan
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引用次数: 30

摘要

正交频分复用技术(OFDM)以其高数据速率、高带宽效率和对多径延迟的鲁棒性等优点在无线通信系统中得到了广泛的应用。衰落是接收机考虑的主要方面之一。为了消除衰落的影响,必须在解调前在接收端进行信道估计和均衡处理。本文对OFDM系统中信道估计技术的容量增强进行了比较,比较了各种算法的复杂度和优点。均衡器主要使用三种预测算法来估计信道响应,即最小均方算法(LMS)、归一化最小均方算法(NLMS)和递归最小二乘算法(RLS)。本文综合考虑了这三种算法,并利用MATLAB软件对其性能进行了静态比较。
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Comparative study on the channel estimation for OFDM system using LMS, NLMS and RLS algorithms
Orthogonal Frequency Division Multiplexing (OFDM) has recently been applied in wireless communication systems due to its high data rate transmission capability with high bandwidth efficiency and its robustness to multi-path delay. Fading is the one of the major aspect which is considered in the receiver. To cancel the effect of fading, channel estimation and equalization procedure must be done at the receiver before data demodulation. In this paper dealt the comparisons of various algorithms, complexity and advantages, on the capacity enhancement for OFDM systems channel estimation techniques. Mainly three prediction algorithms are used in the equalizer to estimate the channel responses namely, Least Mean Square (LMS), Normalized Least Mean Square (NLMS) and Recursive Least Square (RLS) algorithms. These three algorithms are considered in this work and performances are statically compared by using MATLAB Software.
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