Automatic Drone Detection System
As flying, camera-equipped drones become cheaper and more ubiquitous, security and government officials around the world are stepping up efforts to detect the presence of drones or unmanned aerial vehicles (UAVs) in places where they don’t belong. For instance, Germany recently announced plans to install drone detection systems at its major airports to avoid runway and airport shutdowns when drones enter the airspace and endanger planes.
It was recently learned that Tektronix USB-based real-time spectrum analyzers such as the RSA306B or RSA500 series are well-suited to the task of quickly and accurately detecting the presence of single or multiple drones by monitoring the unlicensed spectrum operators used to control drones. The type and manufacturer of a particular drone can also be determined by its unique waveform signature. Even in the congested 2.4 GHz band, drone control signals can be readily identified using real-time I/Q captured data from a Tektronix real-time spectrum analyzer while ignoring Wi-Fi and Bluetooth communications in the same spectrum.
For smaller operations, such as ensuring a VIP’s privacy at an outdoor social gathering, a single operator equipped with a spectrum analyzer may be sufficient. But for locations such as airports or event venues with a large perimeter that needs to be monitored, an automated drone detection system offers more permanent protection. Creating such a system can be accomplished by networking multiple Tektronix RSA306B, or RSA500 Series spectrum analyzers around a perimeter and then using automated software to constantly monitor for the presence of drones.
To this end, Tektronix partnered with Erisys RF Solutions to release an automated drone detection solution based on Tektronix’ real-time spectrum analyzers and Erisys’ SpectrumVu® software. SpectrumVu is an advanced software package that provides fully autonomous monitoring of the RF spectrum, can record unknown spectral events, and generate alerts upon the discovery of unknown signals.
To set up an automated drone detection system, nodes are set up around the outside perimeter. Each node includes a spectrum analyzer, an antenna and an Intel NUC, an inexpensive and powerful 4×4-inch mini PC. Once the nodes are networked to a central operations center, they provide comprehensive coverage of the perimeter and flight paths. Using multiple nodes, it’s possible to identify a drone’s location on the x-y-z axis.
With this system, the RF spectrum can be autonomously monitored 24/7. Triggers can also be set on unknown signals or on signals with power above user-defined thresholds to create alerts. Known, unknown, and event signals can be captured by the real-time spectrum analyzer and displayed on the SpectrumVu dashboard, which can be configured to automatically send alerts to security personnel whenever a suspicious signal is detected.
SpectrumVu takes advantage of recent innovations in neural network technology to automatically identify likely drone signals. The software can also step or tune to a 40 MHz chunk of the RF spectrum, record the I/Q data, and then step to a different 40 MHz band. This process repeats across the unlicensed drone spectrum, monitoring the entire spectrum by processing small I/Q files continuously.
Through the use of machine learning, the software is able to automatically identify the unique RF characteristics of both the drone control signals and the drone first person video (FPV) downlinks. When the waveform properties match the neural network stored signal properties, SpectrumVu issues an alert to indicate the likely presence of a drone. For additional analysis, unknown signals can be stored in an SQL database to accelerate drone identification and support additional analysis of the RF spectrum environment.
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