GRRIS: a real-time intra-site observation scheduling scheme for distributed survey telescope arrays
Yajie Zhang, Ce Yu, Chao Sun, Yi Hu, Zhaohui Shang, Jizeng Wei, and Xu, Yang

TL;DR
GRRIS is a real-time scheduling scheme for distributed telescope arrays that uses graph neural networks and multi-agent reinforcement learning to optimize observation tasks efficiently and rapidly.
Contribution
It introduces a novel graph-based reinforcement learning approach for intra-site telescope scheduling, improving solution quality and speed over existing methods.
Findings
Achieves up to 22% better scheduling solutions.
Provides sub-second decision-making speed.
Demonstrates scalability for large telescope arrays.
Abstract
The distributed telescope array offers promise for conducting large-sky-area, high-frequency time domain surveys. Multiple telescopes can be deployed at each observation site, so intra-site observation task scheduling is crucial for enhancing observation efficiency and quality. Efficient use of observable time and rapid response to special situations are critical to maximize scientific discovery in time domain surveys. Besides, the competing scientific priorities, time-varying observation conditions, and capabilities of observation equipment, lead to a vast search space of the scheduling. So with the increasing number of telescopes and observation fields, balancing computational time with solution quality in observation scheduling poses a significant challenge. Informed by the seminal contributions of earlier studies on a multilevel scheduling model and global scheduler for time domain…
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Taxonomy
TopicsSpacecraft Design and Technology · Astronomy and Astrophysical Research · Adaptive optics and wavefront sensing
