GrandDetAuto: Detecting Malicious Nodes in Large-Scale Autonomous Networks
Tigist Abera (1), Ferdinand Brasser (1), Lachlan J. Gunn (2), Patrick, Jauernig (1), David Koisser (1), Ahmad-Reza Sadeghi (1) ((1) Technical, University of Darmstadt, (2) Aalto University)

TL;DR
GrandDetAuto is a scalable, decentralized scheme for detecting malicious nodes in large autonomous networks, effective for tens of thousands of devices with logarithmic complexity growth.
Contribution
It introduces the first decentralized, scalable method for malicious node detection in large autonomous networks, avoiding reliance on trusted central entities.
Findings
Effective detection in networks of up to 100,000 nodes
Logarithmic growth in runtime and message complexity
Applicable across diverse application scenarios
Abstract
Autonomous collaborative networks of devices are rapidly emerging in numerous domains, such as self-driving cars, smart factories, critical infrastructure, and Internet of Things in general. Although autonomy and self-organization are highly desired properties, they increase vulnerability to attacks. Hence, autonomous networks need dependable mechanisms to detect malicious devices in order to prevent compromise of the entire network. However, current mechanisms to detect malicious devices either require a trusted central entity or scale poorly. In this paper, we present GrandDetAuto, the first scheme to identify malicious devices efficiently within large autonomous networks of collaborating entities. GrandDetAuto functions without relying on a central trusted entity, works reliably for very large networks of devices, and is adaptable to a wide range of application scenarios thanks to…
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