$\tt{KOBEsim}$: a Bayesian observing strategy algorithm for planet detection in radial velocity blind-search surveys
O. Balsalobre-Ruza, J. Lillo-Box, A. Berihuete, A. M. Silva, N. C., Santos, A. Castro-Gonz\'alez, J. P. Faria, N. Hu\'elamo, D. Barrado, O. D. S., Demangeon, E. Marfil, J. Aceituno, V. Adibekyan, M. Azzaro, S. C. C. Barros,, G. Bergond, D. Galad\'i-Enr\'iquez, S. Pedraz

TL;DR
The paper introduces $ t{KOBEsim}$, a Bayesian observing strategy algorithm that optimizes radial velocity survey observations, significantly reducing the number of observations and time needed to detect exoplanets, especially low-mass ones.
Contribution
It presents a novel Bayesian-based algorithm for optimizing radial velocity observations, improving detection efficiency over traditional strategies in exoplanet surveys.
Findings
Accelerates exoplanet detection by 29-33% in observations for low-mass planets.
Reduces dataset timespan by 41-47% for low-mass planets.
Demonstrates up to 2x speed-up in real data applications.
Abstract
Ground-based observing time is precious in the era of exoplanet follow-up and characterization, especially in high-precision radial velocity instruments. Blind-search radial velocity surveys thus require a dedicated observational strategy in order to optimize the observing time, which is particularly crucial for the detection of small rocky worlds at large orbital periods. We develop an algorithm with the purpose of improving the efficiency of radial velocity observations in the context of exoplanet searches, and we apply it to the K-dwarfs Orbited By habitable Exoplanets (KOBE) experiment. We aim at accelerating exoplanet confirmations or, alternatively, rejecting false signals as early as possible in order to save telescope time and increase the efficiency of both blind-search surveys and follow-up of transiting candidates. Once a minimum initial number of radial velocity datapoints…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research · Blind Source Separation Techniques
