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Published July 15, 2022 | Version 1.0.1
Dataset Open

RadarPWN

  • 1. Fraunhofer FKIE / RWTH Aachen University
  • 2. Fraunhofer FKIE
  • 3. RWTH Aachen University
  • 4. RWTH Aachen University / Fraunhofer FKIE

Description

RadarPWN is a comprehensive, easy-to-use, and documented dataset, including cyberattacks against radar communication in modern Integrated Bridge Systems. RadarPWN was recorded using a simulation environment consisting of the BridgeCommand ship simulator, our Radar Attack Tool and the OpenCPN chart plotter. The resulting data consists of  Navico BR24 and NMEA 0183 network traffic in benign and "attack" scenarios.

The dataset is available in two forms:

  • radarpwn-x-y-z contains all network captures as pcaps as well as configuration files used for the simulation runs and logs
  • radarpwn-x-y-z-screen-captures contains all of the above in addition to screen recording videos of all of the simulation runs showing the chart plotter, the radar screen and the logs of the Radar Attack Tool, which can be helpful to visualize the attacks contained in the network captures.

Details on the structure and content of the dataset are provided in the README.md file (or README.html).

For more information, please see K. Wolsing et al., "Network Attacks Against Marine Radar Systems: A Taxonomy, Simulation Environment, and Dataset," 2022 IEEE 47th Conference on Local Computer Networks (LCN), 2022, pp. 114-122, DOI: 10.1109/LCN53696.2022.9843801.

Changelog:

  • 1.0.1: Removed Docker-compose logs, renamed scenario list files to ensure the dataset archive is the default preview file on Zenodo.

Files

radarpwn-1-0-1-screen-captures.zip

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