Alessandro Pisano
Probabilistic state estimation for labeled continuous time Markov models with applications to attack detection
Dimitri Lefebvre
First
;Carla Seatzu;Alessandro GiuaLast
2022-01-01
Abstract
This paper is about state estimation in a timed probabilistic setting. The main contribution is a general procedure to design an observer for computing the probabilities of the states for labeled continuous time Markov models as functions of time, based on a sequence of observations and their associated time stamps that have been collected thus far. Two notions of state consistency with respect to such a timed observation sequence are introduced and related necessary and sufficient conditions are derived. The method is then applied to the detection of cyber-attacks. The plant and the possible attacks are described in terms of a labeled continuous time Markov model that includes both observable and unobservable events, and where each attack corresponds to a particular subset of states. Consequently, attack detection is reformulated as a state estimation problem.| File | Size | Format | |
|---|---|---|---|
| 22deds.pdf Solo gestori archivio
Type: versione editoriale
Size 2.34 MB
Format Adobe PDF
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2.34 MB | Adobe PDF | & nbsp; View / Open Request a copy |
| 22deds_up_draft.pdf Open Access from 01/04/2023
Type: Author’s Accepted Manuscript AAM, Post-print, (version accepted by the publisher)
Size 705.04 kB
Format Adobe PDF
|
705.04 kB | Adobe PDF | View/Open |
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