稀疏信道估计包括收发滤波器的影响与应用于OFDM

O. Barbu, N. L. Pedersen, Carles Navarro i Manchon, G. Monghal, C. Rom, B. Fleury
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引用次数: 5

摘要

传统上,用于稀疏无线信道估计的字典矩阵是基于离散傅立叶变换,假设信道频率响应(CFR)可以近似为少量多径分量的线性组合,每个分量由一个特定的传播路径贡献。然而,在实际的通信系统中,接收器所经历的信道响应包括传播信道诱导的附加效应。这种复合信道特别体现了发射(整形)和接收(解调)滤波器的影响。因此,正则傅里叶字典中CFR是稀疏的假设可能不再成立。在这项工作中,我们推导了一个信号模型,随后推导了一个用于稀疏估计的新字典矩阵,该矩阵考虑了收发器滤波器的影响。在OFDM传输场景中获得的数值结果表明,使用我们提出的字典而不是经典傅立叶字典的稀疏估计器具有更高的精度,并且对假设的传输滤波器特性不匹配具有鲁棒性。
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Sparse channel estimation including the impact of the transceiver filters with application to OFDM
Traditionally, the dictionary matrices used in sparse wireless channel estimation have been based on the discrete Fourier transform, following the assumption that the channel frequency response (CFR) can be approximated as a linear combination of a small number of multipath components, each one being contributed by a specific propagation path. In practical communication systems, however, the channel response experienced by the receiver includes additional effects to those induced by the propagation channel. This composite channel embodies, in particular, the impact of the transmit (shaping) and receive (demodulation) filters. Hence, the assumption of the CFR being sparse in the canonical Fourier dictionary may no longer hold. In this work, we derive a signal model and subsequently a novel dictionary matrix for sparse estimation that account for the impact of transceiver filters. Numerical results obtained in an OFDM transmission scenario demonstrate the superior accuracy of a sparse estimator that uses our proposed dictionary rather than the classical Fourier dictionary, and its robustness against a mismatch in the assumed transmit filter characteristics.
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