Detection and blind channel estimation for UAV-aided wireless sensor networks in smart cities under mobile jamming attack
Donatella Darsena, Giacinto Gelli, Ivan Iudice, Francesco Verde

TL;DR
This paper presents a blind detection and channel estimation method to counteract mobile jamming attacks in UAV-assisted wireless sensor networks within smart cities, enhancing communication robustness under complex multipath and Doppler effects.
Contribution
It introduces a novel blind physical-layer technique for joint detection and estimation in doubly-selective channels affected by mobile jammers, addressing a critical security challenge.
Findings
Effective suppression of high-power jamming signals demonstrated
Robust performance across various jammer mobility scenarios
Blind algorithms exploit signal cyclostationarity for accurate estimation
Abstract
Unmanned aerial vehicles (UAVs) can be integrated into wireless sensor networks (WSNs) for smart city applications in several ways. Among them, a UAV can be employed as a relay in a "store-carry and forward" fashion by uploading data from ground sensors and metering devices and, then, downloading it to a central unit. However, both the uploading and downloading phases can be prone to potential threats and attacks. As a legacy from traditional wireless networks, the jamming attack is still one of the major and serious threats to UAV-aided communications, especially when also the jammer is mobile, e.g., it is mounted on a UAV or inside a terrestrial vehicle. In this paper, we investigate anti-jamming communications for UAV-aided WSNs operating over doubly-selective channels in the downloading phase. In such a scenario, the signals transmitted by the UAV and the malicious mobile jammer…
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