基于支持向量机的3.5 GHz CBRS波段在位雷达检测

Raied Caromi, M. Souryal
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引用次数: 11

摘要

在3.5 GHz公民宽带无线电服务(CBRS)中,100 MHz的频谱将在商业用户和联邦现任者之间动态共享。该频段的动态使用依赖于一个传感器网络,该网络专门用于检测联邦现有信号的存在,并在必要时触发保护机制。本文利用现场实测的频带内和频带附近在位信号的波形来评估支持向量机分类器对这些传感器的性能。我们发现峰值分析分类器和高阶统计分类器在高斯白噪声或商用长期演进(LTE)发射信号中表现相当,但在邻接带系统的带外发射信号中,峰值分析分类器要优越得多。该结果还强调了在3.5 GHz传感器的任何性能评估中包括邻接频带发射的重要性。
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Detection of Incumbent Radar in the 3.5 GHz CBRS Band using Support Vector Machines
In the 3.5 GHz Citizens Broadband Radio Service (CBRS), 100 MHz of spectrum will be dynamically shared between commercial users and federal incumbents. Dynamic use of the band relies on a network of sensors dedicated to detecting the presence of federal incumbent signals and triggering protection mechanisms when necessary. This paper uses field-measured waveforms of incumbent signals in and adjacent to the band to evaluate the performance of support vector machine (SVM) classifiers for these sensors. We find that a peak analysis classifier and a higher-order statistics classifier perform comparably when the signal is in white Gaussian noise or commercial long term evolution (LTE) emissions, but with out-of-band emissions of adjacent-band systems the peak analysis classifier is far superior. This result also highlights the importance of including adjacent-band emissions in any performance evaluation of 3.5 GHz sensors.
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Tradeoffs in Detection and Localisation Performance for Mobile Sensor Scanning Strategies Numerical Characterisation of Quasi-Orthogonal Piecewise Linear Frequency Modulated Waveforms Joint Reconstruction of Multitemporal or Multispectral Single-Photon 3D LiDAR Images Detection of Incumbent Radar in the 3.5 GHz CBRS Band using Support Vector Machines Prediction of Sensor Performance Required for Reliable Aircraft Target Discrimination
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