CVOct 30, 2025

Towards Realistic Earth-Observation Constellation Scheduling: Benchmark and Methodology

arXiv:2510.26297v12 citationsh-index: 6Has Code
Originality Incremental advance
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This work addresses a domain-specific problem for satellite operations researchers and engineers, providing a standardized benchmark and improved scheduling method.

The paper tackles the challenging problem of scheduling agile Earth observation satellite constellations under realistic constraints by introducing AEOS-Bench, a large-scale benchmark suite with 3,907 satellite assets and 16,410 scenarios, and AEOS-Former, a Transformer-based scheduling model that outperforms baselines in task completion and energy efficiency.

Agile Earth Observation Satellites (AEOSs) constellations offer unprecedented flexibility for monitoring the Earth's surface, but their scheduling remains challenging under large-scale scenarios, dynamic environments, and stringent constraints. Existing methods often simplify these complexities, limiting their real-world performance. We address this gap with a unified framework integrating a standardized benchmark suite and a novel scheduling model. Our benchmark suite, AEOS-Bench, contains $3,907$ finely tuned satellite assets and $16,410$ scenarios. Each scenario features $1$ to $50$ satellites and $50$ to $300$ imaging tasks. These scenarios are generated via a high-fidelity simulation platform, ensuring realistic satellite behavior such as orbital dynamics and resource constraints. Ground truth scheduling annotations are provided for each scenario. To our knowledge, AEOS-Bench is the first large-scale benchmark suite tailored for realistic constellation scheduling. Building upon this benchmark, we introduce AEOS-Former, a Transformer-based scheduling model that incorporates a constraint-aware attention mechanism. A dedicated internal constraint module explicitly models the physical and operational limits of each satellite. Through simulation-based iterative learning, AEOS-Former adapts to diverse scenarios, offering a robust solution for AEOS constellation scheduling. Experimental results demonstrate that AEOS-Former outperforms baseline models in task completion and energy efficiency, with ablation studies highlighting the contribution of each component. Code and data are provided in https://github.com/buaa-colalab/AEOSBench.

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