Abstract
Astronomical observations are affected by several kinds of noise, each with its own causal source; there is photon noise, stochastic source variability, and residuals coming from imperfect calibration of the detector or telescope. The precision of NASA Kepler photometry for exoplanet science—the most precise photometric measurements of stars ever made—appears to be limited by unknown or untracked variations in spacecraft pointing and temperature, and unmodeled stellar variability. Here, we present the causal pixel model (CPM) for Kepler data, a data-driven model intended to capture variability but preserve transit signals. The CPM works at the pixel level so that it can capture very fine-grained information about the variation of the spacecraft. The CPM models the systematic effects in the time series of a pixel using the pixels of many other stars and the assumption that any shared signal in these causally disconnected light curves is caused by instrumental effects. In addition, we use the target star’s future and past (autoregression). By appropriately separating, for each data point, the data into training and test sets, we ensure that information about any transit will be perfectly isolated from the model. The method has four tuning parameters—the number of predictor stars or pixels, the autoregressive window size, and two L2-regularization amplitudes for model components, which we set by cross-validation. We determine values for tuning parameters that works well for most of the stars and apply the method to a corresponding set of target stars. We find that CPM can consistently produce low-noise light curves. In this paper, we demonstrate that pixel-level de-trending is possible while retaining transit signals, and we think that methods like CPM are generally applicable and might be useful for K2, TESS, etc., where the data are not clean postage stamps like Kepler.
Highlights
The photometric measurements of stars made by the Kepler spacecraft are precise enough to permit discovery of exoplanet transits with depths smaller than 10−4
By going to the pixel level, Causal Pixel Model (CPM) makes it easier for the model to capture variability that is coming through variations in the centroids and point-spread function from spacecraft pointing, roll, and temperature
In the CPM, systematics and stellar variabilities are removed by either fitting with other stars’ light curves or auto-regressive components, while transit signals are preserved with a train-and-test framework to control model freedom
Summary
The photometric measurements of stars made by the Kepler spacecraft are precise enough to permit discovery of exoplanet transits with depths smaller than 10−4. The Kepler community is familiar with these kinds of models; to our knowledge, all successful light curve “de-trending” methods are flexible, effective models One such method—one that is designed to describe or model spacecraft-induced problems but not interfere with measurements of stellar variability—is the Kepler Presearch Data Conditioning (PDC, Twicken et al 2010). In the first PDC (Twicken et al 2010), removal of systematic errors was performed based on correlations with a set of ancillary engineering data These data include the temperatures at the local detector electronics below the CCD array, and polynomials describing the centroid motion of the targets from PA(Photometric Analysis). By going to the pixel level (unlike the PDC, which works at the stellar-photometry level), CPM makes it easier for the model to capture variability that is coming through variations in the centroids and point-spread function from spacecraft pointing, roll, and temperature. We provide an interface to the Kepler data that can be used to produce “CPM photometry” for every Kepler target
Talk to us
Join us for a 30 min session where you can share your feedback and ask us any queries you have
More From: Publications of the Astronomical Society of the Pacific
Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.