Low-complexity sparse channel estimation for OFDM system based on gaic model selection

Qingchuan Zhang, F. Shu, Jintao Sun
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Abstract

We propose a low-complexity sparse channel estimation method for OFDM system. The received signal subspace of transmission through a sparse channel is spanned by a few vectors corresponding to the path delays. The matching pursuit (MP) algorithm is considered and we use the cyclic orthogonal training sequence to reduce the complexity due to the iterative searching procedure. Then, the generalized Akaike information criterion (GAIC) is used to make the decision among the candidate sets of basis vectors provided by MP. From computer simulation, the proposed method shows a much better performance than the traditional ML method by exploiting the sparse characteristic of channel.
基于遗传模型选择的OFDM系统低复杂度稀疏信道估计
提出了一种用于OFDM系统的低复杂度稀疏信道估计方法。通过稀疏信道传输的接收信号子空间由若干与路径延迟相对应的向量张成。考虑匹配追踪算法,采用循环正交训练序列来降低迭代搜索过程的复杂度。然后,利用广义赤池信息准则(gac)在MP提供的候选基向量集中进行决策;计算机仿真结果表明,该方法利用了信道的稀疏特性,比传统的机器学习方法具有更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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