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Pilot Pattern Optimization for Sparse Channel Estimation in OFDM Systems

机译:OFDM系统中稀疏信道估计的导频模式优化

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摘要

Compressive sensing (CS) based sparse channel estimation requires optimal pilot patterns, whose corresponding sensing matrices should have small mutual coherences, so as to efficiently exploit the inherent channel sparsity. For the purpose of minimizing the mutual coherence of the sensing matrix, we introduce a new estimation of distribution algorithm (EDA) to optimize the pilot pattern so as to improve the channel estimation performance. The proposed scheme guides the optimization process by building and sampling the probability distribution model of the promising pilot indexes, and approaches the optimal pilot pattern iteratively. The algorithm is able to not only preserve the current best pilot indexes, but also introduce diversity by sampling new ones, and hence is unlikely to trap into local minima and more robust than other methods. Simulation results show that our proposed method can generate sensing matrices with smaller mutual coherences than existing methods, and the corresponding optimized pilot pattern performs well in terms of sparse channel estimation.
机译:基于压缩感测(CS)的稀疏信道估计需要最佳的导频模式,其对应的感测矩阵应具有较小的互相关性,以便有效地利用固有的信道稀疏性。为了最小化感测矩阵的互相关性,我们引入了一种新的分布估计算法(EDA),以优化导频模式,从而提高信道估计性能。提出的方案通过建立和采样有希望的试验指标的概率分布模型来指导优化过程,并迭代地找到最佳试验模式。该算法不仅能够保留当前的最佳导频指数,而且还可以通过对新的导频样本进行采样来引入分集,因此不太可能陷入局部最小值,并且比其他方法更健壮。仿真结果表明,与现有方法相比,本文提出的方法可以生成互相关性较小的感知矩阵,并且在稀疏信道估计方面,相应的优化导频模式性能良好。

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