can-train-and-test: A Curated CAN Dataset for Automotive Intrusion Detection
Brooke Lampe, Weizhi Meng

TL;DR
This paper introduces 'can-train-and-test', a comprehensive, labeled CAN dataset from multiple vehicle models and manufacturers, designed to facilitate the development and evaluation of automotive intrusion detection systems (IDS).
Contribution
It provides a publicly available, diverse CAN dataset with multiple attack types, enabling better IDS development and cross-vehicle generalization testing.
Findings
Dataset includes data from four vehicles and nine attack types.
Supports various development and evaluation needs with replayable logs and CSV files.
Facilitates research on IDS generalization across vehicle models and manufacturers.
Abstract
When it comes to in-vehicle networks (IVNs), the controller area network -- CAN -- bus dominates the market; automobiles manufactured and sold around the world depend on the CAN bus for safety-critical communications between various components of the vehicle (e.g., the engine, the transmission, the steering column). Unfortunately, the CAN bus is inherently insecure; in fact, it completely lacks controls such as authentication, authorization, and confidentiality (i.e., encryption). Therefore, researchers have travailed to develop automotive security enhancements. The automotive intrusion detection system (IDS) is especially popular in the literature -- due to its relatively low cost in terms of money, resource utilization, and implementation effort. That said, developing and evaluating an automotive IDS is often challenging; if researchers do not have access to a test vehicle, then they…
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Taxonomy
TopicsVehicular Ad Hoc Networks (VANETs) · Autonomous Vehicle Technology and Safety · Forensic Toxicology and Drug Analysis
