Collection: UAV-Based RSS Measurements from the AFAR Challenge in Digital Twin and Real-World Environments
Saad Masrur, Ozgur Ozdemir, Anil Gurses, Ismail Guvenc, Mihail L.Sichitiu, Rudra Dutta, Magreth Mushi, homas Zajkowski, Cole Dickerson, Gautham Reddy, Sergio Vargas Villar, Chau-Wai Wong, Baisakhi Chatterjee, Sonali Chaudhari, Zhizhen Li, Yuchen Liu, Paul Kudyba, Haijian Sun

TL;DR
This paper introduces a comprehensive dataset of UAV-based RSS measurements from a challenge involving RF source localization, collected in both digital twin and real-world environments, to advance UAV-assisted wireless research.
Contribution
It provides a unique, structured dataset from a UAV RF localization challenge, enabling research in trajectory optimization, signal modeling, and deep learning applications in wireless environments.
Findings
29 datasets collected in total, 15 in DT and 14 in real-world environments
Contains 300,000 time-synchronized samples for robust model training
Supports research in UAV navigation, RF propagation, and autonomous localization
Abstract
This paper presents a comprehensive real-world and Digital Twin (DT) dataset collected as part of the AERPAW Find A Rover (AFAR) Challenge, organized by the NSF Aerial Experimentation and Research Platform for Advanced Wireless (AERPAW) testbed and hosted at the Lake Wheeler Field in Raleigh, North Carolina. The AFAR Challenge was a competition involving five finalist university teams, focused on promoting innovation in unmanned aerial vehicle (UAV)-assisted radio frequency (RF) source localization. Participating teams were tasked with designing UAV flight trajectories and localization algorithms to detect the position of a hidden unmanned ground vehicle (UGV), also referred to as a rover, emitting probe signals generated by GNU Radio. The competition was structured to evaluate solutions in a DT environment first, followed by deployment and testing in the AERPAW outdoor wireless…
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Taxonomy
TopicsRobotics and Automated Systems · Technology and Security Systems · Scientific Computing and Data Management
MethodsGreedy Policy Search
