Scaling network-based spectrum analyzer with constant communication cost

Youngjune Gwon, H. T. Kung
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引用次数: 2

Abstract

We propose a spectrum analyzer that leverages many networked commodity sensor nodes, each of which samples its portion in a wideband spectrum. The sensors operate in parallel and transmit their measurements over a wireless network without performing any significant computations such as FFT. The measurements are forwarded to the backend of the system where spectrum analysis takes place. In particular, we propose a solution that compresses the raw measurements in a simple random linear projection and combines the compressed measurements from multiple sensors in-network. As a result, we achieve a substantial reduction in the network bandwidth requirement to operate the proposed system. We discover that the overall communication cost can be independent of the number of sensors and is affected only by sparsity of discretized spectrum under analysis. This principle founds the basis for a claim that our network-based spectrum analyzer can scale up the number of sensor nodes to process a very wide spectrum block potentially having a GHz bandwidth. We devise a novel recovery algorithm that systematically undoes compressive encoding and in-network combining done to the raw measurements, incorporating the least squares and I1-minimization decoding used in compressive sensing, and demonstrate that the algorithm can effectively restore an accurate estimate of the original data suitable for finegrained spectrum analysis. We present mathematical analysis and empirical evaluation of the system with software-defined radios.
基于恒通信成本的缩放网络频谱分析仪
我们提出了一种利用许多联网商品传感器节点的频谱分析仪,每个节点在宽带频谱中采样其部分。传感器并行工作,并通过无线网络传输其测量结果,而无需执行任何重要的计算,如FFT。测量结果被转发到进行频谱分析的系统后端。特别是,我们提出了一种解决方案,将原始测量压缩到一个简单的随机线性投影中,并将来自网络中多个传感器的压缩测量组合在一起。因此,我们大大降低了运行所建议系统的网络带宽需求。我们发现总体通信成本与传感器数量无关,只受分析下离散频谱的稀疏度影响。这一原则为我们的基于网络的频谱分析仪可以扩展传感器节点的数量来处理可能具有GHz带宽的非常宽的频谱块奠定了基础。我们设计了一种新的恢复算法,该算法系统地取消了对原始测量进行的压缩编码和网络内组合,结合了压缩感知中使用的最小二乘和i -最小化解码,并证明该算法可以有效地恢复适合细粒度频谱分析的原始数据的准确估计。我们用软件定义无线电对系统进行了数学分析和经验评估。
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