DRL-Based Beam Positioning for LEO Satellite Constellations with Weighted Least Squares

arXiv — cs.LGThursday, November 13, 2025 at 5:00:00 AM
The recent study on DRL-based beam positioning for LEO satellite constellations introduces a novel framework that leverages reinforcement learning to enhance positioning accuracy. By utilizing uplink pilot responses and geometry features, the method circumvents traditional CSI-dependent approaches, leading to a remarkable 99.3% reduction in mean positioning error. This advancement is crucial for the growing demand for precise satellite communication, particularly as LEO constellations become more prevalent. The augmented weighted least squares estimator further improves numerical stability under dynamic beam conditions, achieving a root mean square error of just 0.395 meters. Such innovations promise to facilitate more reliable and efficient satellite operations, marking a significant step forward in satellite technology.
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