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Adaptively Regularized Compressive Spectrum Sensing from Real-Time Signals to Real-Time Processing

机译:从实时信号到实时处理的自适应正则压缩频谱传感

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Wideband spectrum sensing is regarded as one of the key features in cognitive radio systems. Compressive sensing (CS) has recently become one of the promising techniques to deal with the Nyquist sampling rate bottleneck of wideband spectrum sensing. Theoretical analyses and simulation have shown that CS could achieve high detection probability and low false alarm for wideband spectrum sensing. However, implementation of CS on the real-time signals and real-time processing poses significant challenges due to the iterative nature of the CS algorithms. In this paper, we propose a novel adaptively regularized iterative reweighted least squares (AR-IRLS) algorithm to implement the real-time signal recovery on the CS based wideband spectrum sensing. The proposed algorithm moves estimated solutions along an exponential-linear path by regularizing weights with a series of non- increasing penalty terms, which significantly speeds up the convergence of reconstruction and provides high fidelity guarantee to cope with the varying bandwidths and power levels of occupied channels. The proposed algorithm presents robustness against different sparsity levels at low compressive ratio without degradation on the reconstruction performance, and is tested on the real-time signals over TV white space spectrum after having been validated on the simulated signals. Both the simulation and real-time experiments show that the proposed algorithm outperforms the conventional iterative reweighted least squares (IRLS) algorithms in terms of convergence speed, reconstruction accuracy, and compressive ratio requirement.
机译:宽带频谱感测被认为是认知无线电系统的关键特征之一。压缩感测(CS)最近已成为解决宽带频谱感测的奈奎斯特采样率瓶颈的有前途的技术之一。理论分析和仿真表明,CS可以实现宽带频谱感知的高检测概率和低虚警率。但是,由于CS算法的迭代性质,在实时信号和实时处理上实施CS提出了严峻的挑战。在本文中,我们提出了一种新颖的自适应正则化迭代加权最小二乘(AR-IRLS)算法,以在基于CS的宽带频谱感知上实现实时信号恢复。所提出的算法通过使用一系列非增加的惩罚项对权重进行正则化来使估计的解决方案沿着指数线性路径移动,从而显着加快了重构的收敛速度,并提供了高保真度保证,以应对带宽和占用信道功率水平的变化。所提出的算法在低压缩比下具有针对不同稀疏度的鲁棒性,而不会降低重建性能,并且在对模拟信号进行了验证之后,对电视空白空间频谱上的实时信号进行了测试。仿真和实时实验均表明,该算法在收敛速度,重构精度和压缩比要求等方面均优于传统的迭代加权最小二乘算法。

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