CLF-ULP: Cross-Layer Fusion-Based Link Prediction in Dynamic Multiplex UAV Networks
Cunlai Pu, Fangrui Wu, Zhe Wang, Xiangbo Shu

TL;DR
This paper introduces CLF-ULP, a deep learning model that predicts future links in dynamic multiplex UAV networks by capturing complex inter-layer and temporal dependencies using graph attention and LSTM networks.
Contribution
The paper presents a novel cross-layer fusion deep learning model, CLF-ULP, for link prediction in dynamic multiplex UAV networks, integrating graph attention and LSTM for improved accuracy.
Findings
CLF-ULP outperforms existing methods in link prediction accuracy.
The model effectively captures inter-layer dependencies and temporal dynamics.
Experiments demonstrate robustness across diverse UAV mobility patterns.
Abstract
In complex Unmanned Aerial Vehicle (UAV) networks, UAVs can establish dynamic and heterogeneous links with one another for various purposes, such as communication coverage, collective sensing, and task collaboration. These interactions give rise to dynamic multiplex UAV networks, where each layer represents a distinct type of interaction among UAVs. Understanding how such links form and evolve is both of theoretical interest and of practical importance for the control and maintenance of networked UAV systems. In this paper, we first develop a dynamic multiplex network model for UAV networks to characterize their dynamic and heterogeneous link properties. We then propose a cross-layer fusion-based deep learning model, termed CLF-ULP, to predict future inter-UAV links based on historical topology data. CLF-ULP incorporates graph attention networks to extract topological features within…
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Taxonomy
TopicsUAV Applications and Optimization · Opportunistic and Delay-Tolerant Networks · Advanced Neural Network Applications
