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Main Authors: Nordlund, David, Maßny, Luis, Wachter-Zeh, Antonia, Larsson, Erik G., Chen, Zheng
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.01778
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author Nordlund, David
Maßny, Luis
Wachter-Zeh, Antonia
Larsson, Erik G.
Chen, Zheng
author_facet Nordlund, David
Maßny, Luis
Wachter-Zeh, Antonia
Larsson, Erik G.
Chen, Zheng
contents In the era of the Internet of Things and massive connectivity, many engineering applications, such as sensor fusion and federated edge learning, rely on efficient data aggregation from geographically distributed users over wireless networks. Over-the-air computation shows promising potential for enhancing resource efficiency and scalability in such scenarios by leveraging the superposition property of wireless channels. However, due to the use of uncoded transmission with linear mapping, it also suffers from security vulnerabilities that must be dealt with to allow widespread adoption. In this work, we consider a scenario where multiple cooperating eavesdroppers attempt to infer information about the aggregation result. We derive the optimal joint estimator for the eavesdroppers and provide bounds on the achievable estimation accuracy for both the eavesdroppers and the intended receiver. We show that significant inherent security exists against individual eavesdroppers due to channel misalignment. However, the security level is greatly compromised when the eavesdroppers can cooperate, motivating the need for deliberate security measures. A common measure is to add carefully calibrated perturbation signals (artificial noise) prior to data transmission to improve the security level. To this end, we propose a zero-forced artificial noise design that achieves a high level of security against cooperative eavesdroppers without compromising the aggregation accuracy.
format Preprint
id arxiv_https___arxiv_org_abs_2512_01778
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Secure Over-the-Air Computation Against Multiple Eavesdroppers using Correlated Artificial Noise
Nordlund, David
Maßny, Luis
Wachter-Zeh, Antonia
Larsson, Erik G.
Chen, Zheng
Signal Processing
Information Theory
Networking and Internet Architecture
In the era of the Internet of Things and massive connectivity, many engineering applications, such as sensor fusion and federated edge learning, rely on efficient data aggregation from geographically distributed users over wireless networks. Over-the-air computation shows promising potential for enhancing resource efficiency and scalability in such scenarios by leveraging the superposition property of wireless channels. However, due to the use of uncoded transmission with linear mapping, it also suffers from security vulnerabilities that must be dealt with to allow widespread adoption. In this work, we consider a scenario where multiple cooperating eavesdroppers attempt to infer information about the aggregation result. We derive the optimal joint estimator for the eavesdroppers and provide bounds on the achievable estimation accuracy for both the eavesdroppers and the intended receiver. We show that significant inherent security exists against individual eavesdroppers due to channel misalignment. However, the security level is greatly compromised when the eavesdroppers can cooperate, motivating the need for deliberate security measures. A common measure is to add carefully calibrated perturbation signals (artificial noise) prior to data transmission to improve the security level. To this end, we propose a zero-forced artificial noise design that achieves a high level of security against cooperative eavesdroppers without compromising the aggregation accuracy.
title Secure Over-the-Air Computation Against Multiple Eavesdroppers using Correlated Artificial Noise
topic Signal Processing
Information Theory
Networking and Internet Architecture
url https://arxiv.org/abs/2512.01778