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Main Authors: Li, Kexin, Rui, Yicheng, Feng, Fabo, Zheng, Shuyue, Pomazan, Anton, Guo, Yiyang, Zheng, Jie, Jiang, Lin-Qiao
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2606.02140
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author Li, Kexin
Rui, Yicheng
Feng, Fabo
Zheng, Shuyue
Pomazan, Anton
Guo, Yiyang
Zheng, Jie
Jiang, Lin-Qiao
author_facet Li, Kexin
Rui, Yicheng
Feng, Fabo
Zheng, Shuyue
Pomazan, Anton
Guo, Yiyang
Zheng, Jie
Jiang, Lin-Qiao
contents Modern time-domain optical surveys produce massive data volumes that require robust, high-fidelity simulated datasets for developing and validating automated pipelines and machine-learning models. We present AstroSkyFlow, a modular sky-image simulator that generates on-demand, time-dependent flux variations and models the full observing stack, from celestial sources and atmospheric effects to sensor response. Given a simulated observing schedule, AstroSkyFlow produces multi-epoch, time-series images with realistic noise and variability. Compared to real observational data, AstroSkyFlow reproduces noise characteristics and point spread function properties more accurately than the widely used SkyMaker simulator. In addition, AstroSkyFlow successfully recovers injected photometric and motion signals, such as exoplanet transits and asteroid trails. AstroSkyFlow enables the generation of labeled, high-fidelity datasets essential for training machine-learning pipelines and conducting rigorous injection-recovery tests for analysis pipelines for next-generation time-domain surveys.
format Preprint
id arxiv_https___arxiv_org_abs_2606_02140
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle AstroSkyFlow: an astronomical sky image flow simulator for time domain survey validation and machine learning
Li, Kexin
Rui, Yicheng
Feng, Fabo
Zheng, Shuyue
Pomazan, Anton
Guo, Yiyang
Zheng, Jie
Jiang, Lin-Qiao
Instrumentation and Methods for Astrophysics
Modern time-domain optical surveys produce massive data volumes that require robust, high-fidelity simulated datasets for developing and validating automated pipelines and machine-learning models. We present AstroSkyFlow, a modular sky-image simulator that generates on-demand, time-dependent flux variations and models the full observing stack, from celestial sources and atmospheric effects to sensor response. Given a simulated observing schedule, AstroSkyFlow produces multi-epoch, time-series images with realistic noise and variability. Compared to real observational data, AstroSkyFlow reproduces noise characteristics and point spread function properties more accurately than the widely used SkyMaker simulator. In addition, AstroSkyFlow successfully recovers injected photometric and motion signals, such as exoplanet transits and asteroid trails. AstroSkyFlow enables the generation of labeled, high-fidelity datasets essential for training machine-learning pipelines and conducting rigorous injection-recovery tests for analysis pipelines for next-generation time-domain surveys.
title AstroSkyFlow: an astronomical sky image flow simulator for time domain survey validation and machine learning
topic Instrumentation and Methods for Astrophysics
url https://arxiv.org/abs/2606.02140