Smart Grid Security and Resilience Open access

Attack Detection using Time Series Foundation Models

S.C. Anand, Anh Tung Nguyen, George J. Pappas

arXiv (Cornell University) | Jun 4, 2026

Abstract

Abstract

This paper addresses the problem of attack detection in cyber-physical systems without any knowledge of the plant model or its structure. A remotely located plant transmits sensor measurements to an operator over a network that is assumed to be under attack. We consider two classes of attacks: model-free replay attacks and model-based stealthy attacks. For the latter, we derive closed-form expressions for the optimal stealthy attack policy against a $χ^2$ detector, for both linear and nonlinear systems. We then propose a model-structure-free detector based on TimesFM, a time-series foundation model developed by Google Research, which serves as a surrogate residual generator operating in a zero-shot fashion. We show empirically that the TimesFM-based detector achieves a comparable or superior attack detection performance. The efficacy of the proposed approach is demonstrated numerically on the IEEE 14-bus power system. We also demonstrate that TimesFM predictions can serve as a substitute for corrupted measurements, a practical mitigation technique when classical redundancy assumptions fail.

Direct answer

What can I do from this paper page?

Use this page to scan "Attack Detection using Time Series Foundation Models" quickly: start with the summary and abstract, then check the authors, source, topics, and related papers. From here, open Scollr to follow Smart Grid Security and Resilience research, save the paper, or map adjacent work.

Authors

Researchers on this paper

S.C. Anand

first

Anh Tung Nguyen

middle | ORCID 0000-0001-9316-233X

George J. Pappas

last

Research areas

Follow related topics

Citation

BibTeX

@article{Anand2026Attack,
  title = {Attack Detection using Time Series Foundation Models},
  author = {S.C. Anand and Anh Tung Nguyen and George J. Pappas},
  journal = {arXiv (Cornell University)},
  year = {2026},
  doi = {10.48550/arxiv.2606.06347},
  url = {https://doi.org/10.48550/arxiv.2606.06347}
}

FAQ

Using this paper in a discovery workflow

How do I find related work for this paper?

Use the related papers and topic links on this page as starting points. In Scollr, you can also open the paper and build a literature map around its references, citing papers, and related work.

How can I keep up with new Smart Grid Security and Resilience research papers?

Follow Smart Grid Security and Resilience research in Scollr. New papers from the topic flow into a personalized feed, and you can save useful studies to revisit later.

Can I cite this paper from this page?

This page includes a static BibTeX block for Attack Detection using Time Series Foundation Models. Always verify the DOI, source, and publication details against the publisher record before submitting a manuscript.

Follow this research in Scollr

Follow the topics and authors behind this paper, save useful studies, and build a literature map when you are ready to go deeper.

Get the app