Inicio  /  Drones  /  Vol: 6 Par: 9 (2022)  /  Artículo
ARTÍCULO
TITULO

Detection of Micro-Doppler Signals of Drones Using Radar Systems with Different Radar Dwell Times

Jiangkun Gong    
Jun Yan    
Deren Li and Deyong Kong    

Resumen

Not any radar dwell time of a drone radar is suitable for detecting micro-Doppler (or jet engine modulation, JEM) produced by the rotating blades in radar signals of drones. Theoretically, any X-band drone radar system should detect micro-Doppler of blades because of the micro-Doppler effect and partial resonance effect. Yet, we analyzed radar data detected by three radar systems with different radar dwell times but similar frequency and velocity resolution, including Radar-a, Radar-ß, and Radar-? with radar dwell times of 2.7 ms, 20 ms, and 89 ms, respectively. The results indicate that Radar-ß is the best radar for detecting micro-Doppler (i.e., JEM signals) produced by the rotating blades of a quadrotor drone, DJI Phantom 4, because the detection probability of JEM signals is almost 100%, with approximately 2 peaks, whose magnitudes are similar to that of the body Doppler. In contrast, Radar-a can barely detect any micro-Doppler, and Radar-? detects weak micro-Doppler signals, whose magnitude is only 10% of the body Doppler?s. Proper radar dwell time is the key to micro-Doppler detection. This research provides an idea for designing a cognitive micro-Doppler radar by changing radar dwell time for detecting and tracking micro-Doppler signals of drones.

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