The security and efficiency of low-power wide area networks (LPWANs) for connecting an ever-growing number of IoT devices, expected to exceed 40 billion by 2030, are becoming increasingly important. LoRaWAN, a leading LPWAN technology, enables long-range, low-power communications but remains susceptible to jamming attacks that degrade network performance at the physical layer. This paper introduces a robust framework for detecting and mitigating jamming in LoRaWAN networks using comprehensive threat modeling and machine learning-based countermeasures. The framework simulates two types of jamming attacks: a channel-oblivious jammer, which transmits continuously to randomly interfere with channels, and a channel-aware jammer, which selectively disrupts active transmissions. We evaluate LoRaWAN's resilience through extended simulations in the ns-3 module, adapted for jamming scenarios. Additionally, we provide a high-precision LSTM-based detection model to identify jamming patterns and a mitigation strategy to counteract the channel-oblivious jammer, including an automatic restoration process for returning devices to normal operation post-disruption. The proposed framework enhances network robustness against jamming, showing that ML-based detection significantly reduces disruptions.

Detection and Mitigation of Jamming Attacks in LoRaWan Using Machine Learning / Di Pinto, Stefano; Locatelli, Pierluigi; Spadaccino, Pietro; Cuomo, Francesca. - (2025), pp. 1-6. ( 2025 IEEE Wireless Communications and Networking Conference, WCNC 2025 Milan; Italy ) [10.1109/wcnc61545.2025.10978351].

Detection and Mitigation of Jamming Attacks in LoRaWan Using Machine Learning

Di Pinto, Stefano;Locatelli, Pierluigi;Spadaccino, Pietro;Cuomo, Francesca
2025

Abstract

The security and efficiency of low-power wide area networks (LPWANs) for connecting an ever-growing number of IoT devices, expected to exceed 40 billion by 2030, are becoming increasingly important. LoRaWAN, a leading LPWAN technology, enables long-range, low-power communications but remains susceptible to jamming attacks that degrade network performance at the physical layer. This paper introduces a robust framework for detecting and mitigating jamming in LoRaWAN networks using comprehensive threat modeling and machine learning-based countermeasures. The framework simulates two types of jamming attacks: a channel-oblivious jammer, which transmits continuously to randomly interfere with channels, and a channel-aware jammer, which selectively disrupts active transmissions. We evaluate LoRaWAN's resilience through extended simulations in the ns-3 module, adapted for jamming scenarios. Additionally, we provide a high-precision LSTM-based detection model to identify jamming patterns and a mitigation strategy to counteract the channel-oblivious jammer, including an automatic restoration process for returning devices to normal operation post-disruption. The proposed framework enhances network robustness against jamming, showing that ML-based detection significantly reduces disruptions.
2025
2025 IEEE Wireless Communications and Networking Conference, WCNC 2025
IoT; Jammer; LoRaWAN; Machine Learning; Network Security
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Detection and Mitigation of Jamming Attacks in LoRaWan Using Machine Learning / Di Pinto, Stefano; Locatelli, Pierluigi; Spadaccino, Pietro; Cuomo, Francesca. - (2025), pp. 1-6. ( 2025 IEEE Wireless Communications and Networking Conference, WCNC 2025 Milan; Italy ) [10.1109/wcnc61545.2025.10978351].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1740415
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