Similar Data Detection for Cooperative Spectrum Monitoring in Space-Ground Integrated Networks

Zhijuan Hu, Danyang Wang, Qifan Fu, Zan Li
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Abstract

Space-ground aided cooperative spectrum monitoring, which combines the benefits of satellite components and terrestrial components for improving monitoring accuracy and enlarging monitoring area, has been becoming an emerging application of the space-ground integrated networks (SGIN). However, a short transmission window is usually provided for satellite components to connect with ground gateway, which means only a limited transmission time is allowed for the satellite component to upload the collected spectrum data. On the other hand, lots of redundancy may exist among the spectrum data collected by a single sensor during one collection period, which may further reduce the data uploading efficiency. In this paper, we investigate the similar data detection which is a matching problem for comparing two data, and it is important to the following data compression for improving data uploading efficiency. Firstly, the definition of the sharing fragment set is given. Then a metric method is presented to measure the redundancy of one data with respect to another data. We propose a Sharing Fragment Set (SFS) algorithm that can select a good sharing fragment set. Theoretical analysis proves that the proposed SFS algorithm is well suited to determine the redundancy between datas. In addition, we conduct an experiment based on the randomly produced synthetic dataset. Numerical results shows that the SFS algorithm performs better in selecting sharing fragment set compared with the Greedy-String-Tiling (GST) and simple greedy algorithm.
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空间-地面综合网络协同频谱监测的相似数据检测
空间-地面辅助协同频谱监测是空间-地面一体化网络(SGIN)的一种新兴应用,它结合了卫星组件和地面组件的优点,以提高监测精度和扩大监测面积。然而,卫星组件与地面网关的连接通常提供较短的传输窗口,这意味着卫星组件只允许有限的传输时间上传采集到的频谱数据。另一方面,单个传感器在一个采集周期内采集的频谱数据可能存在大量冗余,进一步降低数据上传效率。本文研究的相似数据检测是一个比较两个数据的匹配问题,对于后续的数据压缩,提高数据上传效率具有重要意义。首先给出了共享片段集的定义。然后,提出了一种度量方法来度量一个数据相对于另一个数据的冗余度。我们提出了一种共享片段集(SFS)算法,可以选择一个好的共享片段集。理论分析表明,该算法适用于数据间冗余度的确定。此外,我们基于随机生成的合成数据集进行了实验。数值结果表明,与GST和简单贪婪算法相比,SFS算法在选择共享片段集方面具有更好的性能。
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