A Census of Variability in Globular Cluster M68 (NGC 4590)
N. Kains, A. Arellano Ferro, R. Figuera Jaimes, D. M. Bramich, J., Skottfelt, U. G. J{\o}rgensen, Y. Tsapras, R. A. Street, P. Browne, M., Dominik, K. Horne, M. Hundertmark, S. Ipatov, C. Snodgrass, I. A. Steele,, K.A. Alsubai, V. Bozza, S. Calchi Novati, S. Ciceri, G. D'Ago

TL;DR
This study provides a comprehensive analysis of variable stars in globular cluster M68 using advanced difference image analysis, leading to new variable detections, period measurements, and refined estimates of the cluster's properties.
Contribution
First application of difference image analysis to M68, enabling a complete census of variable stars and improved measurements of cluster parameters.
Findings
Detected 4 new SX Phe stars and confirmed variability of another
Derived cluster metallicity as [Fe/H] = -2.07 ± 0.06
Estimated distance modulus around 15.00 mag
Abstract
We analyse 20 nights of CCD observations in the V and I bands of the globular cluster M68 (NGC 4590), using these to detect variable objects. We also obtained electron-multiplying CCD (EMCCD) observations for this cluster in order to explore its core with unprecedented spatial resolution from the ground. We reduced our data using difference image analysis, in order to achieve the best possible photometry in the crowded field of the cluster. In doing so, we showed that when dealing with identical networked telescopes, a reference image from any telescope may be used to reduce data from any other telescope, which facilitates the analysis significantly. We then used our light curves to estimate the properties of the RR Lyrae (RRL) stars in M68 through Fourier decomposition and empirical relations. The variable star properties then allowed us to derive the cluster's metallicity and…
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