SPLGJun 19, 2018

Deep Learning Classification of 3.5 GHz Band Spectrograms with Applications to Spectrum Sensing

arXiv:1806.07745v3102 citations
Originality Synthesis-oriented
AI Analysis

This addresses the need for highly-accurate detection algorithms in commercial wireless networks to comply with FCC rules for spectrum sharing with military radars, representing an incremental improvement using existing deep learning methods on new data.

The paper tackled the problem of detecting SPN-43 radar signals in the 3.5 GHz band for spectrum sharing, finding that a three-layer convolutional neural network outperformed classical methods with a superior tradeoff between accuracy and computational complexity.

In the United States, the Federal Communications Commission has adopted rules permitting commercial wireless networks to share spectrum with federal incumbents in the 3.5~GHz Citizens Broadband Radio Service band. These rules require commercial systems to vacate the band when sensors detect radars operated by the U.S. military; a key example being the SPN-43 air traffic control radar. Such sensors require highly-accurate detection algorithms to meet their operating requirements. In this paper, using a library of over 14,000 3.5~GHz band spectrograms collected by a recent measurement campaign, we investigate the performance of thirteen methods for SPN-43 radar detection. Namely, we compare classical methods from signal detection theory and machine learning to several deep learning architectures. We demonstrate that machine learning algorithms appreciably outperform classical signal detection methods. Specifically, we find that a three-layer convolutional neural network offers a superior tradeoff between accuracy and computational complexity. Last, we apply this three-layer network to generate descriptive statistics for the full 3.5~GHz spectrogram library. Our findings highlight potential weaknesses of classical methods and strengths of modern machine learning algorithms for radar detection in the 3.5~GHz band.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes