基于最优训练序列的RLS和LMS信道估计技术在MIMO-OFDM系统中的性能比较

M. Mohammadi, M. Ardabilipour, B. Moussakhani, Z. Mobini
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引用次数: 20

摘要

自无线通信出现以来,信道补偿一直被认为是一个主要问题,但近年来在这一领域的进展使这个老问题更具挑战性。特别是通过引入空时码和使用阵列天线,开发一种能够以更高的精度和更少的计算量跟踪信道状态变化的均衡方法是一个具有挑战性的要求。本文分析了MIMO-OFDM接收机中信道估计的一种新方法。在该方法中,基于计算的均方误差推导出最优训练序列用于LS信道估计,并利用这些训练序列,将基于LMS和RLS的自适应方法应用于从发射机天线发射独立数据流的系统的信道估计。该方法能够计算接收天线和所有发射机之间的所有子信道系数。最后,对RLS算法和LMS算法的性能进行了仿真,并与LS算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance comparison of RLS and LMS channel estimation techniques with optimum training sequences for MIMO-OFDM systems
Channel compensation has been considered as a major problem from the advent of wireless communications, but recent progresses in this realm has made the old problem more challenging. Especially by introducing Space-Time codes and using Array Antennas exploiting an equalization method which can track the changing channel condition with higher accuracy and lower computations is a challenging demand. This paper analyses a suggested new method for channel estimation in a MIMO-OFDM Receiver. In the proposed method, optimum training sequences are derived base on calculated MSE for LS channel estimation, utilizing these training sequences adaptive methods based on LMS and RLS are applied to estimate the channel for a system which emits independent data streams from transmitter antennas. Proposed method is capable of computing all sub-channel coefficients between a receiver antenna and all transmitters. Finally, performances of RLS and LMS algorithms are simulated and compared with LS algorithm.
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