Deployment Challenges of Industrial Intrusion Detection Systems


연구 분야: Software Development



학회: European Symposium on Research in Computer Security


초록

With the escalating threats posed by cyberattacks on Industrial Control Systems (ICSs), the development of customized Industrial Intrusion Detection Systems (IIDSs) received significant attention in research. While the existing literature proposes effective IIDS solutions evaluated in controlled environments, their deployment in real-world industrial settings poses several challenges. Adding to known obstructions, this paper highlights two critical aspects that significantly impact IIDSs’ practical deployment, i.e., the need for sufficient amounts of data to train the IIDS models and the challenges associated with finding suitable hyperparameters, especially for IIDSs training only on normal ICS data. Through empirical experiments conducted on multiple state-of-the-art IIDSs and diverse datasets, we establish the criticality of these issues in deploying IIDSs in ICS environments. Our findings show the necessity of extensive malicious training data for supervised IIDSs, which can be impractical considering the complexity of recording and labeling attacks in actual ICSs. Furthermore, while other IIDSs circumvent the previous issue by requiring only benign training data, these can suffer from the difficulty of setting appropriate hyperparameters, which likewise can diminish their performance. By shedding light on these challenges, we aim to enhance the current understanding of limitations and considerations necessary for deploying effective cybersecurity solutions in ICSs, which might be one reason why IIDSs see few deployments.


Author Profile
Konrad Wolsing

RWTH Aachen University Aachen Germany

Germany
Author Profile
Eric Wagner

Fraunhofer FKIE Wachtberg Germany

Germany
Author Profile
Frederik Basels

RWTH Aachen University Aachen Germany

Germany

📄 논문 정보

발행 연도 2025년
인용수 0
출판 국가 Germany
사이트 Springer
좋아요 수 0

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