A Self-Diagnosis Method for Detecting UAV Cyber Attacks Based on Analysis of Parameter Changes.
Elena BasanAlexandr BasanAlexey NekrasovColin FidgeJán GamecMária GamcováPublished in: Sensors (Basel, Switzerland) (2021)
We consider how to protect Unmanned Aerial Vehicles (UAVs) from Global Positioning System (GPS) spoofing attacks to provide safe navigation. The Global Navigation Satellite System (GNSS) is widely used for locating drones and is by far the most popular navigation solution. This is because of the simplicity and relatively low cost of this technology, as well as the accuracy of the transmitted coordinates. Nevertheless, there are many security threats to GPS navigation. These are primarily related to the nature of the GPS signal, as an intruder can jam and spoof the GPS signal. We discuss methods of protection against this type of attack and have developed an experimental stand and conducted scenarios of attacks on a drone's GPS system. Data from the UAV's flight log were collected and analyzed in order to see the attack's impact on sensor readings. From this we identify a new method for detecting UAV anomalies by analyzing changes in internal parameters of the UAV. This self-diagnosis method allows a UAV to independently assess the presence of changes in its own subsystems indicative of cyber attacks.