A machine learning method for predicting telescope cycle time applied to the Cerro Murphy Observatory

IF 2.7 3区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS
Mirosław Kicia, Mikołaj Kałuszyński, Marek Górski, Rolf Chini, Grzegorz Pietrzyński
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引用次数: 0

Abstract

Telescope cycle time estimation is one of the basic issues of observational astronomy. There are not many tools that help to calulate the cycle time for multiple telescopes with multiple instruments. This work presents a new tool for determing the observation time; it was applied at the Cerro Murphy Observatory (OCM) but can be used at any other observatory. The Machine Learning (ML) method was implied, resulting in a fully automatic software module that works without any user intervention. We propose a polynomial multiple regression method and demonstrate all steps to build a reliable ML model like data collecting, data cleaning, model training and error evaluation in relation to the implementation in the observatory software. The method was designed to work for different telescopes with several instruments. Accuracy analysis and the assessment of model errors were based on real data from telescopes, proving the usefulness of the presented method. Error evaluation shows that for 84.2 % of nights, the prediction error in operation time prediction does not exceed 2 %. Converted into a 10-hour observation night, 2 % corresponds to an error of no more than 12 minutes. The described model is already working at the OCM and optimizes the efficiency of the observations.

应用于 Cerro Murphy 天文台的预测望远镜周期时间的机器学习方法
望远镜周期时间估算是观测天文学的基本问题之一。目前还没有很多工具可以帮助计算带有多种仪器的多台望远镜的周期时间。这项工作提出了一种确定观测时间的新工具;它应用于 Cerro Murphy 天文台(OCM),但也可用于任何其他天文台。我们采用了机器学习(ML)方法,从而开发出一个无需用户干预的全自动软件模块。我们提出了一种多项式多元回归方法,并演示了建立可靠的 ML 模型的所有步骤,如数据收集、数据清理、模型训练和与天文台软件实施相关的误差评估。该方法适用于配备多种仪器的不同望远镜。精度分析和模型误差评估以望远镜的真实数据为基础,证明了该方法的实用性。误差评估显示,在 84.2% 的夜晚,运行时间预测误差不超过 2%。换算成每晚 10 小时的观测时间,2% 相当于误差不超过 12 分钟。所述模型已在光学测量中心投入使用,并优化了观测效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Experimental Astronomy
Experimental Astronomy 地学天文-天文与天体物理
CiteScore
5.30
自引率
3.30%
发文量
57
审稿时长
6-12 weeks
期刊介绍: Many new instruments for observing astronomical objects at a variety of wavelengths have been and are continually being developed. Furthermore, a vast amount of effort is being put into the development of new techniques for data analysis in order to cope with great streams of data collected by these instruments. Experimental Astronomy acts as a medium for the publication of papers of contemporary scientific interest on astrophysical instrumentation and methods necessary for the conduct of astronomy at all wavelength fields. Experimental Astronomy publishes full-length articles, research letters and reviews on developments in detection techniques, instruments, and data analysis and image processing techniques. Occasional special issues are published, giving an in-depth presentation of the instrumentation and/or analysis connected with specific projects, such as satellite experiments or ground-based telescopes, or of specialized techniques.
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