基于自适应稀疏度的1位ADC mimo恒定包络调制信道估计

Shaimaa A. Hussein, Hany S. Hussein, E. M. Mohamed
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引用次数: 1

摘要

引入了1位ADC多输入多输出恒定包络调制(MIMO-CEM),以适应新的尖端无线通信技术(即物联网和无线传感器网络)的功率限制。尽管它能够满足这些技术的物理层限制(即高功率效率和低硬件复杂性),但1位ADC MIMO-CEM接收的信号暴露于严重的量化失真。这种量化失真严重影响MIMO-CEM信道估计的效率,因为估计操作依赖于接收到的信号幅度信息。这反过来又严重威胁到MIMO-CEM解码器的质量,这取决于估计信道的准确性。为此,本文提出了一种低复杂度、频谱效率高的MIMO-CEM信道估计算法。其中,利用MIMO-CEM的信道稀疏性,提出了一种自适应压缩感知(ACS)信道估计算法,以应对1位ADC的严重量化失真。在本文提出的ACS中,传感(测量)矩阵自适应更新(改变)和调整大小,以便在低前置信号长度下以最小误差约束加快(低计算复杂度)信道估计过程。然而,与最近的MIMO-CEM信道估计器相比,该算法具有频谱效率(非常低的前置信号长度)和计算复杂度。最终,与传统的MIMO-CEM信道估计器相比,该算法将计算复杂度降低了90%,并节省了72%的频谱。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive Sparsity Based Channel Estimator for 1-Bit ADC MIMO-Constant Envelope Modulation
The 1-bit ADC multi-input-multi-output constant envelope modulation (MIMO-CEM) was introduced to acclimate with the power constrains of the new cutting edge wireless communication technologies (i.e. IoT and wireless sensor networks). Despite of its ability to fulfil the PHY layer constrains of those technologies (i.e. high-power efficiency and low hardware complexity), the 1-bit ADC MIMO-CEM received signal is exposed to severe quantization distortion. This quantization distortion is sorely affected on the efficiency of the MIMO-CEM channel estimation since, estimation operation depends on the received signal amplitude information. This is in turn adds serious threat to the MIMO-CEM decoder quality which, is depending on the accuracy of the estimated channel. Therefore, a low complex and spectral efficient MIMO-CEM channel estimation algorithm is proposed in this paper. In which, the MIMO-CEM channel sparsity is exploited to propose an adaptive compressive sensing (ACS) channel estimation algorithm to cope with the 1-bit ADC severe quantization distortion. In the proposed ACS, the sensing (measurement) matrix is adaptively updated (changed) and resized in order to speed up (low computational complexity) the channel estimation process with minimum error constrain at low preamble signal length. However, the proposed algorithm is spectrally efficient (very low preamble signal length) and it is computational complexity is very low compared to the recently MIMO-CEM channel estimators. Eventually, the proposed algorithm introduces computational complexity reduction up to 90 % and it gives up to 72 % spectrum saving compared to the conventional MIMO-CEM channel estimator.
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