The content introduces the Spatial-Temporal Graph Representation Learning for Tactical Networks Future State Prediction. It discusses the challenges in resource allocation in tactical ad-hoc networks and the importance of accurate prediction of future network connectivity. The STGED framework hierarchically utilizes graph-based attention mechanism, recurrent neural network, and fully-connected feed-forward network to predict future state connectivity with high accuracy. Experimental results show STGED consistently outperforms baseline models across different time steps input.
Introduction to Tactical Communication Networks (TCNs)
Challenges in Resource Allocation and QoS in TCNs
Anglova Scenario for Realistic TCN Challenges
Predicting Future Network Connectivity in TCNs
Introduction of STGED Framework
Experimental Validation Results
Comparison with Baseline Models
Ablation Experiments on STGED Framework Components
Conclusion on the Effectiveness of STGED Framework
References provided for further reading.
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by Liu Junhua,A... о arxiv.org 03-22-2024
https://arxiv.org/pdf/2403.13872.pdfГлибші Запити