ArXiv TLDR

Medoid Prototype Alignment for Cross-Plant Unknown Attack Detection in Industrial Control Systems

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2604.25544

Luyao Wang

cs.CRcs.AI

TLDR

This paper introduces Medoid Prototype Alignment for robust cross-plant unknown attack detection in Industrial Control Systems, improving transfer stability.

Key contributions

  • Compresses heterogeneous ICS traffic into a comparable representation space for cross-plant analysis.
  • Extracts robust medoid prototypes to summarize local operational structures in each industrial domain.
  • Aligns target prototypes with source prototypes using a calibrated transfer objective, preserving discrimination.
  • Achieves superior performance (0.843 accuracy, 0.838 F1) on natural gas and water storage systems.

Why it matters

Deploying intrusion detectors across diverse industrial plants is a critical challenge due to unique site characteristics and evolving threats. This paper offers a practical and effective solution, significantly enhancing the ability to detect unknown attacks in new industrial settings. Its prototype-guided approach improves transfer stability and detection accuracy.

Original Abstract

Deploying an intrusion detector trained in one industrial plant to another remains difficult because Industrial Control System (ICS) traffic is highly site-dependent, labels are scarce, and unseen attacks often appear after deployment. To address this challenge, this paper introduces a medoid prototype alignment framework for cross-plant unknown attack detection. Instead of aligning all source and target samples directly, the method first compresses heterogeneous traffic into a comparable representation space and then extracts robust medoid prototypes that summarize local operational structure in each domain. A prototype-calibrated transfer objective is further designed to align target prototypes with source prototypes while preserving source-domain discrimination and encouraging confident target predictions. This strategy reduces noisy cross-domain matching and improves transfer stability under heterogeneous industrial conditions. Experiments conducted on natural gas and water storage control systems show that the proposed method achieves the best average performance among all compared models, reaching an average accuracy of 0.843 and an average F1-score of 0.838 across four unknown-attack transfer tasks. The analysis also shows clear transfer asymmetry between source-target directions and confirms that prototype guidance is especially helpful on challenging reverse-transfer settings. These findings suggest that medoid prototype alignment is a practical solution for robust industrial intrusion detection under domain shift.

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