This paper studies a security problem for a class cloud-connected multi-agent systems, where autonomous agents coordinate via a combination of short-range ad-hoc commu- nication links and long-range cloud services. We consider a simplified model for the dynamics of a cloud-connected multi- agent system and attacks, where the states evolve according to linear time-invariant impulsive dynamics, and attacks are modeled as exogenous inputs designed by an omniscent attacker that alters the continuous and impulsive updates. We propose a definition of attack detectability, characterize the existence of stealthy attacks as a function of the system parameters and attack properties, and design a family of undetectable attacks. We illustrate our results on a cloud-based surveillance example.
Duz, A., Phillips, S., Fagiolini, A., Sanfelice, R.G., Pasqualetti, F. (2018). Stealthy Attacks in Cloud-Connected Linear Impulsive Systems. In Proceeding of IEEE Annual American Control Conference (ACC) (pp. 146-152). Piscataway : IEEE [10.23919/ACC.2018.8431900].
Stealthy Attacks in Cloud-Connected Linear Impulsive Systems
FAGIOLINI, Adriano
;
2018-01-01
Abstract
This paper studies a security problem for a class cloud-connected multi-agent systems, where autonomous agents coordinate via a combination of short-range ad-hoc commu- nication links and long-range cloud services. We consider a simplified model for the dynamics of a cloud-connected multi- agent system and attacks, where the states evolve according to linear time-invariant impulsive dynamics, and attacks are modeled as exogenous inputs designed by an omniscent attacker that alters the continuous and impulsive updates. We propose a definition of attack detectability, characterize the existence of stealthy attacks as a function of the system parameters and attack properties, and design a family of undetectable attacks. We illustrate our results on a cloud-based surveillance example.File | Dimensione | Formato | |
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