LGCRSYMar 3, 2025

Enhancing Network Security Management in Water Systems using FM-based Attack Attribution

arXiv:2503.01229v11 citationsh-index: 8NOMS
Originality Incremental advance
AI Analysis

This work addresses the critical need for effective attack attribution in water systems to enhance security and public safety, representing an incremental improvement over existing methods.

The paper tackles the problem of attributing cyber attacks in water systems by proposing a novel model-agnostic Factorization Machines-based approach that leverages sensor-actuator interactions, achieving approximately 20% average improvement over traditional methods like SHAP and LEMNA in ranking attack root causes.

Water systems are vital components of modern infrastructure, yet they are increasingly susceptible to sophisticated cyber attacks with potentially dire consequences on public health and safety. While state-of-the-art machine learning techniques effectively detect anomalies, contemporary model-agnostic attack attribution methods using LIME, SHAP, and LEMNA are deemed impractical for large-scale, interdependent water systems. This is due to the intricate interconnectivity and dynamic interactions that define these complex environments. Such methods primarily emphasize individual feature importance while falling short of addressing the crucial sensor-actuator interactions in water systems, which limits their effectiveness in identifying root cause attacks. To this end, we propose a novel model-agnostic Factorization Machines (FM)-based approach that capitalizes on water system sensor-actuator interactions to provide granular explanations and attributions for cyber attacks. For instance, an anomaly in an actuator pump activity can be attributed to a top root cause attack candidates, a list of water pressure sensors, which is derived from the underlying linear and quadratic effects captured by our approach. We validate our method using two real-world water system specific datasets, SWaT and WADI, demonstrating its superior performance over traditional attribution methods. In multi-feature cyber attack scenarios involving intricate sensor-actuator interactions, our FM-based attack attribution method effectively ranks attack root causes, achieving approximately 20% average improvement over SHAP and LEMNA.

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