Into the Depths: a new activity metric for high-precision radial velocity measurements based on line depth variations
Jared C. Siegel, Ryan A. Rubenzahl, Samuel Halverson, Andrew W. Howard

TL;DR
This paper introduces a new activity metric, the depth metric $\\mathcal{D}(t)$, derived from spectral line depth variations, which effectively reduces stellar activity noise in radial velocity measurements and improves exoplanet detection sensitivity.
Contribution
The paper presents a novel high signal-to-noise activity indicator based on line depth variations that outperforms existing methods in mitigating stellar activity noise in RV data.
Findings
Reduced RV RMS from 2.67 to 1.02 m/s using the depth metric.
Enabled detection of planetary signals as small as 1 m/s.
Tracks stellar activity with quality comparable to established indicators.
Abstract
The discovery and characterization of extrasolar planets using radial velocity (RV) measurements is limited by noise sources from the surfaces of host stars. Current techniques to suppress stellar magnetic activity rely on decorrelation using an activity indicator (e.g., strength of the Ca II lines, width of the cross-correlation function, broadband photometry) or measurement of the RVs using only a subset of spectral lines that have been shown to be insensitive to activity. Here, we combine the above techniques by constructing a high signal-to-noise activity indicator, the depth metric , from the most activity-sensitive spectral lines using the "line-by-line" method of Dumusque (2018). Analogous to photometric decorrelation of RVs or Gaussian progress regression modeling of activity indices, time series modeling of reduces the amplitude of magnetic…
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