Alleviating Attack Data Scarcity: SCANIA's Experience Towards Enhancing In-Vehicle Cyber Security Measures
Frida Sundfeldt, Bianca Widstam, Mahshid Helali Moghadam, Kuo-Yun Liang, Anders Vesterberg

TL;DR
This paper introduces a context-aware attack data generator for connected vehicles, enabling the creation of diverse, realistic attack scenarios to improve in-vehicle intrusion detection systems amid data scarcity.
Contribution
It presents a novel attack data generation method that produces high-quality, variable attack scenarios for training and evaluating vehicle cybersecurity systems.
Findings
Generated attack data effectively trains IDS models
IDS models show high detection and classification accuracy
Approach is efficient and scalable for real-world applications
Abstract
The digital evolution of connected vehicles and the subsequent security risks emphasize the critical need for implementing in-vehicle cyber security measures such as intrusion detection and response systems. The continuous advancement of attack scenarios further highlights the need for adaptive detection mechanisms that can detect evolving, unknown, and complex threats. The effective use of ML-driven techniques can help address this challenge. However, constraints on implementing diverse attack scenarios on test vehicles due to safety, cost, and ethical considerations result in a scarcity of data representing attack scenarios. This limitation necessitates alternative efficient and effective methods for generating high-quality attack-representing data. This paper presents a context-aware attack data generator that generates attack inputs and corresponding in-vehicle network log, i.e.,…
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