An Accelerated Maximum Flow Algorithm with Prediction Enhancement in Dynamic LEO Networks
Jiayin Sheng, Xinjie Guan, Fuliang Yang, Xili Wan

TL;DR
This paper introduces a faster maximum flow algorithm for dynamic LEO satellite networks using predictions to improve data transmission efficiency.
Contribution
The novel prediction-enhanced algorithm with an energy-time expanded graph and warm-start strategy improves speed and adaptability in dynamic LEO networks.
Findings
The algorithm reduces computation time by up to 32.2% compared to conventional methods.
It performs well under varying storage capacity and network topologies.
Theoretical analysis confirms correctness and time efficiency of the approach.
Abstract
Efficient data transmission in low Earth orbit (LEO) satellite networks is critical for supporting real-time global communication, Earth observation, and numerous data-intensive space missions. A fundamental challenge in these networks involves solving the maximum flow problem, which determines the optimal data throughput across highly dynamic topologies with limited onboard energy and data processing capability. Traditional algorithms often fall short in these environments due to their high computational costs and inability to adapt to frequent topological changes or fluctuating link capacities. This paper introduces an accelerated maximum flow algorithm specifically designed for dynamic LEO networks, leveraging a prediction-enhanced approach to improve both speed and adaptability. The proposed algorithm integrates a novel energy-time expanded graph (e-TEG) framework, which jointly…
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Taxonomy
TopicsSatellite Communication Systems · Software-Defined Networks and 5G · Interconnection Networks and Systems
