March 6, 2024, 5:11 a.m. | Haili Sun, Yan Huang, Lansheng Han, Cai Fu, Chunjie Zhou

cs.CR updates on arXiv.org arxiv.org

arXiv:2403.02616v1 Announce Type: cross
Abstract: Accurate detection and diagnosis of abnormal behaviors such as network attacks from multivariate time series (MTS) are crucial for ensuring the stable and effective operation of industrial cyber-physical systems (CPS). However, existing researches pay little attention to the logical dependencies among system working states, and have difficulties in explaining the evolution mechanisms of abnormal signals. To reveal the spatio-temporal association relationships and evolution mechanisms of the working states of industrial CPS, this paper proposes a …

abnormal arxiv attacks attention cps cs.ai cs.cr cs.lg cs.ni cs.sy cyber dependencies detection diagnosis eess.sy industrial industrial cyber mts network network attacks pay physical physical systems series state system systems temporal

CyberSOC Technical Lead

@ Integrity360 | Sandyford, Dublin, Ireland

Cyber Security Strategy Consultant

@ Capco | New York City

Cyber Security Senior Consultant

@ Capco | Chicago, IL

Sr. Product Manager

@ MixMode | Remote, US

Corporate Intern - Information Security (Year Round)

@ Associated Bank | US WI Remote

Senior Offensive Security Engineer

@ CoStar Group | US-DC Washington, DC