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首页> 外文期刊>IEEE transactions on wireless communications >A Full-Diversity Blind Channel Estimation and Equalization over Fast Time-Varying ISI Fading Channels
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A Full-Diversity Blind Channel Estimation and Equalization over Fast Time-Varying ISI Fading Channels

机译:快速时变ISI衰落信道上的全分集盲信道估计和均衡

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摘要

In this study, we propose a novel full-diversity combination algorithm to significantly improve the performance of the network Kalman-based blind equalizers. Based on the weighted Gaussian sum (WGS) technique and the network of extended Kalman filters (NEKF), the proposed full-diversity blind equalizer can employ the prediction errors of network of Kalman filters to achieve the maximum likelihood (ML) detection. In the first initial condition, the proposed full-diversity blind equalizer requires an initial training sequence in order to estimate the initial channel coefficients. For symbol detection, the proposed full-diversity blind equalizer demonstrates a significant improvement over the conventional WGS-IMM(Interacting Multiple Model) blind equalizer in the bit error rate (BER) performance. Besides, from the trade-off between performance and computational complexity, the proposed modified 2-Diversity blind equalizer is shown to be a best choice for the WGS-based blind equalizer.
机译:在这项研究中,我们提出了一种新颖的全分集组合算法,以显着提高网络基于Kalman的盲均衡器的性能。基于加权高斯和(WGS)技术和扩展卡尔曼滤波器网络(NEKF),提出的全分集盲均衡器可以利用卡尔曼滤波器网络的预测误差来实现最大似然(ML)检测。在第一个初始条件下,提出的全分集盲均衡器需要一个初始训练序列,以便估计初始信道系数。对于符号检测,所提出的全分集盲均衡器在误码率(BER)性能上比传统的WGS-IMM(交互多模型)盲均衡器表现出了显着改进。此外,从性能和计算复杂度之间进行权衡,提出的改进的2-Diversity盲均衡器被证明是基于WGS的盲均衡器的最佳选择。

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