Multi Zone Monitoring UAV Detector For Securing Airports Borders And Critical Infrastructure
UAV Detector With Multi-Zone Monitoring For Securing Airports Borders And Critical Infrastructure
Introduction
This system employs artificial intelligence-powered signal analysis to detect and classify unauthorized drones with exceptional accuracy. By integrating multi-band RF spectrum monitoring (70MHz–6GHz) and deep learning algorithms , it extracts unique signal fingerprints from drone communication links, including remote control, telemetry. The core innovation is its adaptive neural network architecture , which combines convolutional neural networks (CNNs) for spectral feature extraction and recurrent neural networks (RNNs) for temporal signal pattern recognition. Real-time processing of RF signals enables identification of drone models and electronic fingerprints (e.g., modulation schemes, synchronization sequences) with 99.2% accuracy, even in noisy urban environments. Key advancements include dynamic protocol decoding through cognitive radio-based parsing to detect consumer and custom-built UAVs, and multi-sensor fusion correlating RF signatures with acoustic profiles and micro-Doppler radar data to reduce false positives. The system employs reinforcement learning to adaptively adjust signal-to-noise ratio (SNR) thresholds, achieving 98.5% detection probability at -120dBm sensitivity. A hybrid database stores over 10,000 verified drone fingerprints, while GAN-generated synthetic signals train the AI model to recognize emerging threats. For defense applications, it integrates with counter-UAV jammers to disrupt unauthorized drones by targeting vulnerabilities in synchronization signals.
Parameters
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Function |
Description |
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UAV detection |
Detection spectrum bandwidth |
70 MHZ - 6GHZ |
detection focus on the 433Mhz/ 900Mhz/2.4Ghz/5.2Ghz/5.8Ghz |
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Simultaneous screening number of UAV |
≧150pcs |
can be customize with 1Ghz -1.4Ghz & 5.1Ghz - 5.9Ghz FPV Bands |
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The lowest detection height |
≦0 meters |
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Detection rate |
≧99.99 % |
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White and Blacklist |
Number of identifiable models |
≧ 400 |
including DJI series drones,and it has the autonomous learning ability |
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the accurate identification of target |
Available |
for different targets of the same position, same frequency band, same manufacturer, same type of UAV respectively. |
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in-depth analysis of UAV signal |
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the identification of unique ID |
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the black and whitelist to distinguish |
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Defensive Interference |
Interferable frequency bands |
900MHz, 433Mhz, 1.5ghz, 2.4ghz, 5.8ghz, 5.2Ghz |
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other customized frequency bands |
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Remote OAM |
Unattended Mode |
Automatic detection and strike |
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A variety of OAM features |
Firmware updating |
used with the remote server |
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Reset, status inquiry |
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Self-testing |
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Parameter configuration |
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Networking |
Multi-device networking |
observe the online/abnormal status of each device |
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Remote control through mobile terminals |
viewing the operating interface of the device system |
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receiving alarm information |
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viewing the black and whitelist |
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turning on defense function |
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Data security |
High reliability and security |
certificate management and data encryption |
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Interface Showcase
- As shown in the figure, the specific security effect is presented. It can accurately identify unmanned aerial vehicles (UAVs), and operate the black and white list to perfectly solve the security detection problem in the airspace.
Get in Touch
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