ENHANCING UAV SECURITY: A HYBRID MACHINE LEARNING APPROACH TO INTRUSION DETECTION IN UAV NETWORKS
| Advisor | Unal, Devrim |
| Advisor | Gogniat, Guy |
| Advisor | Real, Maria M�endez |
| Author | MISTRY, NIKITA NILESH |
| Available date | 2026-02-03T10:44:59Z |
| Publication Date | 2026-01 |
| Abstract | The widespread integration of Unmanned Aerial Vehicle (UAV) in intelligent transportation, military reconnaissance, and critical infrastructure monitoring has introduced heightened vulnerabilities to sophisticated cyber-physical attacks. Conventional Intrusion Detection System (IDS) typically isolate cyber and physical layers, failing to capture correlations between telemetry anomalies and network threats, and thus struggle to detect multi-vector attacks spanning both domains. This study proposes a hybrid deep learning-based IDS that fuses synchronized telemetry and MAVLink traffic to model spatiotemporal intrusion signatures with high fidelity. The architecture integrates one-dimensional Convolutional Neural Network (1D-CNN), Bidirectional Long Short-Term Memory (BiLSTM), and Temporal Convolutional Network (TCN), jointly capturing local anomalies, sequential dependencies, and long-range deviations, with the final intrusion decision obtained via probability-level ensemble averaging across the three branches. A cyber-physical dataset was developed using ArduPilot Softwarein- the-Loop (SITL) across one-, two-, and four-UAV swarm deployments under three topologies: drone-to-base station (D2BS), leader-follower, and drone-to-drone (D2D) relay. Four representative attack types were included-Denial of Service (DoS), Replay, False Data Injection (FDI), and Evil Twin. The dataset will be made publicly available upon publication to support reproducibility and further research. Beyond cyber-physical fusion, this work addresses key swarm-specific challenges absent in prior studies: syniii chronizing asynchronous data streams and accounting for response-time feasibility in multi-hop UAV communications. Experimental results show over 95% classification accuracy with reduced false positives, outperforming state-of-the-art unimodal baselines. These contributions highlight not only the role of cyber-physical integration but also the importance of swarm-scale evaluation and open datasets in advancing resilient, real-time UAV security systems. |
| Language | en |
| Subject | UAV network security Cyber-physical intrusion detection Hybrid deep learning IDS UAV swarm communications MAVLink traffic analysis |
| Type | Master Thesis |
| Department | Computer Science and Engineering |
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