Beyond Static Thresholds: Adaptive RRC Signaling Storm Detection with Extreme Value Theory
Dang Kien Nguyen, Rim El Malki, Filippo Rebecchi, Raymond Knopp, Melek \"Onen

TL;DR
This paper presents an adaptive detection system for signaling storms in 5G networks using Extreme Value Theory, effectively distinguishing attacks from normal traffic with high accuracy and low latency.
Contribution
It introduces a novel EVT-based adaptive threshold method for RRC signaling storm detection, improving robustness across diverse traffic conditions.
Findings
Detection accuracy above 93%
High precision and recall
Low detection latency
Abstract
In 5G and beyond networks, the radio communication between a User Equipment (UE) and a base station (gNodeB or gNB), also known as the air interface, is a critical component of network access and connectivity. During the connection establishment procedure, the Radio Resource Control (RRC) layer can be vulnerable to signaling storms, which threaten the availability of the radio access control plane. These attacks may occur when one or more UEs send a large number of connection requests to the gNB, preventing new UEs from establishing connections. In this paper, we investigate the detection of such threats and propose an adaptive threshold-based detection system based on Extreme Value Theory (EVT). The proposed solution is evaluated numerically by applying simulated attack scenarios based on a realistic threat model on top of real-world RRC traffic data from an operator network. We show…
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Taxonomy
TopicsSmart Grid Security and Resilience · Advanced MIMO Systems Optimization · Software-Defined Networks and 5G
