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arxiv: 2603.16588 · v2 · pith:TRCZ7VUOnew · submitted 2026-03-17 · 🧮 math.OC · cs.SY· eess.SP· eess.SY

Residual-based attack detection in cyber-physical systems: an optimal transport viewpoint

classification 🧮 math.OC cs.SYeess.SPeess.SY
keywords detectionproblemsystemsunderattackattack-freecusumcyber-physical
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This letter presents an optimal-transport (OT)-driven, distributionally robust attack detection algorithm, OT-DETECT, for cyber-physical systems (CPS) modeled as partially observed linear stochastic systems. The underlying detection problem is formulated as a minmax optimization problem using 1-Wasserstein ambiguity sets constructed from observer residuals under both the nominal (attack-free) and attacked regimes, and show that the minmax detection problem can be reduced to a finite-dimensional linear program for computing the worst-case distribution (WCD). Off-support residuals are handled via a kernel-smoothed score function that drives a CUSUM procedure for sequential detection. We also establish a non-asymptotic tail bound on the false-positive error of the CUSUM statistic under the nominal (attack-free) condition, under mild assumptions. Numerical illustrations are provided to evaluate the robustness properties of OT-DETECT.

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