NIPFOct 29, 2025

Evaluating Learning Congestion control Schemes for LEO Constellations

arXiv:2510.25498h-index: 12
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For network researchers and satellite operators, this work identifies critical limitations in existing congestion control schemes for LEO networks, providing insights for future protocol design.

This paper presents the first comprehensive, emulation-driven evaluation of congestion control schemes in LEO satellite networks, revealing that learning-based schemes severely underperform under dynamic conditions while handover-aware loss-based schemes reclaim bandwidth at the cost of increased latency.

Low Earth Orbit (LEO) satellite networks introduce unique congestion control (CC) challenges due to frequent handovers, rapidly changing round-trip times (RTTs), and non-congestive loss. This paper presents the first comprehensive, emulation-driven evaluation of CC schemes in LEO networks, combining realistic orbital dynamics via the LeoEM framework with targeted Mininet micro-benchmarks. We evaluated representative CC algorithms from three classes, loss-based (Cubic, SaTCP), model-based (BBRv3), and learning-based (Vivace, Sage, Astraea), across diverse single-flow and multi-flow scenarios, including interactions with active queue management (AQM). Our findings reveal that: (1) handover-aware loss-based schemes can reclaim bandwidth but at the cost of increased latency; (2) BBRv3 sustains high throughput with modest delay penalties, yet reacts slowly to abrupt RTT changes; (3) RL-based schemes severely underperform under dynamic conditions, despite being notably resistant to non-congestive loss; (4) fairness degrades significantly with RTT asymmetry and multiple bottlenecks, especially in human-designed CC schemes; and (5) AQM at bottlenecks can restore fairness and boost efficiency. These results expose critical limitations in current CC schemes and provide insight for designing LEO-specific data transport protocols.

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