Estimating Multi-Dimensional Sparsity Level for Spectrum Sensing

M. A. Aygül, M. Nazzal, H. Arslan
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Abstract

Identifying spectrum opportunities is a crucial element of efficient spectrum utilization for future wireless networks. Spectrum sensing offers a convenient means for revealing such opportunities. Studies showed that usage of the spectrum has a high correlation over multi-dimensions, including time and frequency. However, multi-dimensional spectrum sensing requires high-cost processes. Applying compressive sensing allows for subNyquist sampling. This reduces associated training, feedback, and computation overheads of a spectrum sensing method. However, the accuracy of the signal sparsity assumption and knowledge of the precise sparsity level are necessary for the applicability of compressive sensing. It is common practice to assume a level of known sparsity. On the other hand, in reality, this presumption is incorrect. This paper proposes a method for estimating the multidimensional sparsity for spectrum sensing. By extrapolating it from its counterpart with respect to a compact discrete Fourier basis, the proposed method calculates the sparsity level over a dictionary. A machine learning estimation method achieves this inference. Extensive simulations validate a high-quality sparsity estimation. To validate this observation, real-world measurements are used, where one of the biggest Turkish telecom operators has private uplink bands in the frequency range between 852-856 MHz.
频谱传感中多维稀疏度的估计
识别频谱机会是未来无线网络有效利用频谱的关键因素。频谱传感为揭示这些机会提供了一种方便的手段。研究表明,频谱的使用在多个维度上具有很高的相关性,包括时间和频率。然而,多维频谱传感需要高成本的工艺。应用压缩感知允许亚奈奎斯特采样。这减少了频谱感知方法的相关训练、反馈和计算开销。然而,信号稀疏性假设的准确性和精确稀疏性水平的知识对于压缩感知的适用性是必要的。通常的做法是假定一定程度的已知稀疏性。另一方面,在现实中,这种假设是不正确的。提出了一种用于频谱感知的多维稀疏度估计方法。通过相对于紧致离散傅立叶基的对应物进行外推,提出的方法计算字典上的稀疏度级别。一种机器学习估计方法实现了这种推断。大量的模拟验证了高质量的稀疏性估计。为了验证这一观察结果,使用了真实世界的测量,其中最大的土耳其电信运营商之一在852-856 MHz的频率范围内拥有私有上行频段。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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