SDSS unveils a population of intrinsically faint cataclysmic variables at the minimum orbital period
B.T. Gaensicke, M. Dillon, J. Southworth, J.R. Thorstensen, P., Rodriguez-Gil, A. Aungwerojwit, T.R. Marsh, P. Szkody, S.C.C. Barros, J., Casares, D. de Martino, P.J. Groot, P. Hakala, U. Kolb, S.P. Littlefair, I.G., Martinez-Pais, G. Nelemans, M.R. Schreiber

TL;DR
This study analyzes 137 cataclysmic variables from SDSS, revealing a significant population at the period minimum, characterized by low luminosity and low accretion activity, aligning observations with theoretical models.
Contribution
The paper uncovers a large population of faint, low-accretion CVs at the period minimum, confirming the predicted period spike and highlighting SDSS's depth as crucial for discovering these systems.
Findings
Identification of a period minimum spike at 80-86 min.
Most low-luminosity CVs show spectra dominated by white dwarf emission.
SDSS's depth enables discovery of intrinsically faint short-period CVs.
Abstract
We discuss the properties of 137 cataclysmic variables (CVs) which are included in the Sloan Digital Sky Survey (SDSS) spectroscopic data base, and for which accurate orbital periods have been measured. 92 of these systems are new discoveries from SDSS and were followed-up in more detail over the past few years. 45 systems were previously identified as CVs because of the detection of optical outbursts and/or X-ray emission, and subsequently re-identified from the SDSS spectroscopy. The period distribution of the SDSS CVs differs dramatically from that of all the previously known CVs, in particular it contains a significant accumulation of systems in the orbital period range 80--86 min. We identify this feature as the elusive "period minimum spike" predicted by CV population models, which resolves a long-standing discrepancy between compact binary evolution theory and observations. We…
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