TL;DR
AAS2RTO is a flexible, Python-based tool designed to prioritize astrophysical transient candidates for follow-up observations, optimizing scientific returns amid the high discovery rate of LSST by considering various observed properties and visibility.
Contribution
Introduces AAS2RTO, a novel, adaptable prioritization algorithm for transient follow-up that integrates multiple criteria and real-time data updates, tailored for LSST-era surveys.
Findings
Effective prioritization of SNe Ia candidates demonstrated.
Potential to observe a significant number of SNe Ia with small telescopes.
Performance validated with archival and simulated LSST data.
Abstract
The upcoming Vera C. Rubin Legacy Survey of Space and Time (LSST) will discover tens of thousands of astrophysical transients per night, far outpacing available spectroscopic follow-up capabilities. Carefully prioritising candidates for follow-up observations will maximise the scientific return from small telescopes with a single-object spectrograph. We introduce AAS2RTO, an astrophysical transient candidate prioritisation tool written in Python. AAS2RTO is flexible in that any number of criteria that consider observed properties of transients can be implemented. The visibility of candidates from a given observing site is also considered. The prioritised list of candidates provided by AAS2RTO is continually updated when new transient data are made available. Therefore, it can be applied to observing campaigns with a wide variety of scientific motivations. AAS2RTO uses a greedy algorithm…
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