ROSpace: Intrusion Detection Dataset for a ROS2-Based Cyber-Physical System
CoRR(2024)
摘要
Most of the intrusion detection datasets to research machine learning-based
intrusion detection systems (IDSs) are devoted to cyber-only systems, and they
typically collect data from one architectural layer. Additionally, often the
attacks are generated in dedicated attack sessions, without reproducing the
realistic alternation and overlap of normal and attack actions. We present a
dataset for intrusion detection by performing penetration testing on an
embedded cyber-physical system built over Robot Operating System 2 (ROS2).
Features are monitored from three architectural layers: the Linux operating
system, the network, and the ROS2 services. The dataset is structured as a time
series and describes the expected behavior of the system and its response to
ROS2-specific attacks: it repeatedly alternates periods of attack-free
operation with periods when a specific attack is being performed. Noteworthy,
this allows measuring the time to detect an attacker and the number of
malicious activities performed before detection. Also, it allows training an
intrusion detector to minimize both, by taking advantage of the numerous
alternating periods of normal and attack operations.
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