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dc.contributor.advisorEfendi, Syahril
dc.contributor.advisorFahmi
dc.contributor.advisorBudiman, Mohammad Andri
dc.contributor.authorSoeharwinto, Soeharwinto
dc.date.accessioned2025-07-24T05:30:33Z
dc.date.available2025-07-24T05:30:33Z
dc.date.issued2025
dc.identifier.urihttps://repositori.usu.ac.id/handle/123456789/107036
dc.description.abstractIEEE 802.11 wireless networks (Wi-Fi) deployed within Wireless Sensor Networks have become a cornerstone of modern communication infrastructures. However, the inherently open nature of the wireless transmission medium renders them susceptible to jamming attacks, which can markedly degrade quality of service or even precipitate complete communication failure. Consequently, the detection and mitigation of jamming attacks constitute a critical challenge for maintaining network reliability. This dissertation proposes a machine-learning approach for detecting jamming attacks in WLANs by employing a Convolutional Neural Network (CNN) that receives spectrogram images of the received signals as input. By converting time-domain signals into the frequency domain using the Short-Time Fourier Transform (STFT), a visual representation containing characteristic jamming features is produced; the CNN subsequently learns these features to achieve accurate classification. The CNN architecture is optimised experimentally to attain the best performance in discriminating between normal conditions and various forms of jamming. Beyond detection, the dissertation also introduces a mitigation mechanism via Adaptive Channel Switching (ACS) driven by the CNN’s classification output. When an attack is detected, the system automatically shifts the communication channel to one free from interference, based on adaptive logic, thereby preserving network connectivity in real-time. A Python-based simulation is conducted to evaluate the effectiveness of the combined CNN model and ACS strategy in enhancing the network’s resilience against attacks. The evaluation results indicate that the proposed approach attains a 96.40% classification accuracy in detecting jamming and significantly reduces the adverse impact of interference on network performance. The primary contribution of this research lies in the integration of spectrogram-based CNN detection with a dynamic, channel-switching mitigation strategy, which collectively bolsters the physical-layer security and resilience of IEEE 802.11 WLANs.en_US
dc.language.isoiden_US
dc.publisherUniversitas Sumatera Utaraen_US
dc.titlePendekatan Convolutional Neural Network untuk Mengantisipasi Jamming-attack pada Wireless Sensor Networken_US
dc.title.alternativeA Convolutional Neural Network Approach to Counter Jamming Attacks in Wireless Sensor Networksen_US
dc.typeThesisen_US
dc.identifier.nimNIM188123016
dc.identifier.nidnNIDN0010116706
dc.identifier.nidnNIDN0009127608
dc.identifier.nidnNIDN0008107507
dc.identifier.kodeprodiKODEPRODI55001#Ilmu Komputer
dc.description.pages187 Pagesen_US
dc.description.typeDisertasi Doktoren_US
dc.subject.sdgsSDGs 9. Industry Innovation And Infrastructureen_US


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