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Review and Simulation of Counter-UAS Sensors for Unmanned Traffic Management

Juan A. Besada, Iván Campaña, David Carramiñana, Luca Bergesio, Gonzalo de Miguel

2021Sensors19 citationsDOIOpen Access PDF

Abstract

Noncollaborative surveillance of airborne UAS (Unmanned Aerial System) is a key enabler to the safe integration of UAS within a UTM (Unmanned Traffic Management) ecosystem. Thus, a wide variety of new sensors (known as Counter-UAS sensors) are being developed to provide real-time UAS tracking, ranging from radar, RF analysis and image-based detection to even sound-based sensors. This paper aims to discuss the current state-of-the art technology in this wide variety of sensors (both academically and commercially) and to propose a set of simulation models for them. Thus, the review is focused on identifying the key parameters and processes that allow modeling their performance and operation, which reflect the variety of measurement processes. The resulting simulation models are designed to help evaluate how sensors' performances affect UTM systems, and specifically the implications in their tracking and tactical services (i.e., tactical conflicts with uncontrolled drones). The simulation models cover probabilistic detection (i.e., false alarms and probability of detection) and measurement errors, considering equipment installation (i.e., monostatic vs. multistatic configurations, passive sensing, etc.). The models were integrated in a UTM simulation platform and simulation results are included in the paper for active radars, passive radars, and acoustic sensors.

Topics & Concepts

Key (lock)DroneVariety (cybernetics)Computer scienceReal-time computingRadarSystems engineeringEngineeringSimulationArtificial intelligenceTelecommunicationsComputer securityBiologyGeneticsUAV Applications and OptimizationInfrared Target Detection MethodologiesTarget Tracking and Data Fusion in Sensor Networks
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