DeepSurveySim: Simulation Software and Benchmark Challenges for Astronomical Observation Scheduling

M. Voetberg, Brian Nord
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Abstract

Modern astronomical surveys have multiple competing scientific goals. Optimizing the observation schedule for these goals presents significant computational and theoretical challenges, and state-of-the-art methods rely on expensive human inspection of simulated telescope schedules. Automated methods, such as reinforcement learning, have recently been explored to accelerate scheduling. However, there do not yet exist benchmark data sets or user-friendly software frameworks for testing and comparing these methods. We present DeepSurveySim -- a high-fidelity and flexible simulation tool for use in telescope scheduling. DeepSurveySim provides methods for tracking and approximating sky conditions for a set of observations from a user-supplied telescope configuration. We envision this tool being used to produce benchmark data sets and for evaluating the efficacy of ground-based telescope scheduling algorithms, particularly for machine learning algorithms that would suffer in efficacy if limited to real data for training.We introduce three example survey configurations and related code implementations as benchmark problems that can be simulated with DeepSurveySim.
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DeepSurveySim:天文观测调度的模拟软件和基准挑战
现代天文观测有多个相互竞争的科学目标。为实现这些目标而优化观测计划是一项重大的计算和理论挑战,最先进的方法依赖于昂贵的人工检查模拟望远镜计划。最近,人们开始探索自动化方法,如强化学习,以加快日程安排。然而,目前还没有用于测试和比较这些方法的基准数据集或用户友好型软件框架。我们推出了 DeepSurveySim -- 一种用于望远镜调度的高保真、灵活的模拟工具。DeepSurveySim为用户提供的望远镜配置的一系列观测提供了跟踪和近似天空条件的方法。我们设想将该工具用于生成基准数据集和评估地面望远镜调度算法的功效,特别是机器学习算法的功效,因为如果仅限于真实数据进行训练,这些算法的功效将大打折扣。我们介绍了三个巡天配置示例和相关代码实现,作为可以用DeepSurveySim模拟的基准问题。
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DeepSurveySim: Simulation Software and Benchmark Challenges for Astronomical Observation Scheduling
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