Identification of System Vulnerability under a Smart Sensor Attack via Attack Model Reduction
Ruochen Tai, Liyong Lin, Rong Su

TL;DR
This paper introduces a model reduction approach to identify system vulnerabilities under smart sensor attacks by simplifying attack models while preserving their impact, aiding in system resilience enhancement.
Contribution
It proposes a novel attack model reduction technique based on supervisor reduction, enabling effective vulnerability analysis of control systems against smart sensor attacks.
Findings
Reduced attack models reveal critical observation sequences for attack success
The approach transforms attack model reduction into a supervisor reduction problem
Example demonstrates effectiveness in identifying system vulnerabilities
Abstract
In this work, we investigate how to make use of model reduction techniques to identify the vulnerability of a closed-loop system, consisting of a plant and a supervisor, that might invite attacks. Here, the system vulnerability refers to the existence of key observation sequences that could be exploited by a specific smart sensor attack to cause damage infliction. We consider a nondeterministic smart attack, i.e., there might exist more than one attack choice over each received observation, and adopt our previously proposed modeling framework, where such an attack is captured by a standard finite-state automaton. For a given supervisor S and a smart sensor attack model A, another smart attack model A' is called attack equivalent to A with respect to S, if the resulting compromised supervisor, defined as the composition of the supervisor S and attack model A', is control equivalent to…
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Taxonomy
TopicsFuel Cells and Related Materials · Risk and Safety Analysis · Safety Systems Engineering in Autonomy
