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引用次数: 0
摘要
针对单输入双输出系统,利用接收信号的二阶统计信息,提出了一种基于特征滤波器的盲信道估计技术。我们表明,我们的设计具有与另一种基于特征滤波器的估计技术相当或更好的估计性能Tsatsanis and Z. Xu, March 1999]计算复杂度显著降低。仿真结果表明,该算法可以通过观察少量的接收信号样本来估计信道。最后,使用符号错误率比较了两种算法之间的均衡性能,其中我们的算法显示优于M.K. Tsatsanis和Z. Xu(1999)的算法。
An eigenfilter based blind channel estimation technique of estimating the channel state information for a single-input two-output system is considered by using second-order statistics information about the received signal. We showed that our design have either comparable or better estimation performance than another eigenfilter based estimation technique [M.K. Tsatsanis and Z. Xu, March 1999] with significantly lower computational complexity. The simulation results also showed the proposed algorithm can estimate the channel by observing a small amount of received signal samples. Finally, the equalization performance between the two algorithms are compared using the symbol error rate, where our algorithm is shown to outperform the one in M.K. Tsatsanis and Z. Xu (1999).