# Biases in retrieving planetary signals in the presence of quasi-periodic   stellar activity

**Authors:** M. Damasso, M. Pinamonti, G. Scandariato, and A. Sozzetti

arXiv: 1908.02217 · 2019-08-21

## TL;DR

This study uses extensive simulations to evaluate how well Gaussian process regression can recover planetary signals in radial velocity data affected by stellar activity, especially for low-mass planets.

## Contribution

It provides a detailed statistical analysis of biases in planetary parameter estimation caused by stellar activity and compares the effectiveness of different periodogram algorithms.

## Key findings

- Gaussian process regression can recover planetary signals with certain biases.
- Detection reliability varies with stellar activity levels and observation strategies.
- Periodogram algorithms differ in completeness and false alarm rates.

## Abstract

Gaussian process regression is a widespread tool used to mitigate stellar correlated noise in radial velocity time series. It is particularly useful to search for and determine the properties of signals induced by small-size, low-mass planets ($R_p<4R_{\rm \oplus}$, $m_p<10M_{\rm \oplus}$). By using extensive simulations based on a quasi-periodic representation of the stellar activity component, we investigate the ability in retrieving the planetary parameters in 16 different realistic scenarios. We analyse systems composed by one planet and host stars having different levels of activity, focusing on the challenging case represented by low-mass planets, with Doppler semi-amplitudes in the range 1-3 $m s^{-1}$. We consider many different configurations for the quasi-periodic stellar activity component, as well as different combinations of the observing epochs. We use commonly-employed analysis tools to search for and characterize the planetary signals in the datasets. The goal of our injection-recovery statistical analysis is twofold. First, we focus on the problem of planet mass determination. Then, we analyse in a statistical way periodograms obtained with three different algorithms, in order to explore some of their general properties, as the completeness and reliability in retrieving the injected planetary and stellar activity signals with low false alarm probabilities. This work is intended to provide some understanding of the biases introduced in the planet parameters inferred from the analysis of radial velocity time series that contain correlated signals due to stellar activity. It also aims to motivate the use and encourage the improvement of extensive simulations for planning spectroscopic follow-up observations.

## Full text

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## Figures

32 figures with captions in the complete paper: https://tomesphere.com/paper/1908.02217/full.md

## References

50 references — full list in the complete paper: https://tomesphere.com/paper/1908.02217/full.md

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Source: https://tomesphere.com/paper/1908.02217