Back to Search Start Over

Wideband Spectrum Acquisition for UAV Swarm Using the Sparse Coding Fourier Transform

Authors :
Jiang, Kaili
Tian, Kailun
Feng, Hancong
Yuan, Junyu
Tang, Bin
Publication Year :
2023

Abstract

As the trend towards small, safe, smart, speedy and swarm development grows, unmanned aerial vehicles (UAVs) are becoming increasingly popular for a wide range of applications. In this letter, the challenge of wideband spectrum acquisition for the UAV swarms is studied by proposing a processing method that features lower power consumption, higher compression rates, and a lower signal-to-noise ratio. Our system is equipped with multiple UAVs, each with a different sub-sampling rate. That allows for frequency backetization and estimation based on sparse Fourier transform theory. Unlike other techniques, the collisions and iterations caused by non-sparsity environ-ments are considered. We introduce sparse coding Fourier transform to address these issues. The key is to code the entire spectrum and decode it through spectrum correlation in the code. Simulation results show that our proposed method performs well in acquiring both narrowband and wideband signals simultaneously, compared to the other methods.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2308.07079
Document Type :
Working Paper