2023
DOI: 10.20944/preprints202306.0883.v1
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RL-Based Detection, Tracking, and Classification of Malicious UAV Swarm through Airborne Cognitive Multibeam Multifunction Phased Array Radar

Abstract: Detecting, tracking, and classifying unmanned aerial vehicles (UAVs) in a swarm presents significant challenges due to their small and diverse radar cross-sections, multiple flight altitudes, velocities, and close trajectories. To overcome these challenges, adjustments of the radar parameters and/or position of the radar (for airborne platforms) are often required during runtime. The runtime adjustments help to overcome the anomalies in the detection, tracking, and classification of UAVs. The runtime adjustmen… Show more

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