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Main Authors: Makarov, Valeri V., Lambert, Sébastien, Cigan, Phil, DiLullo, Christopher, Gordon, David
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.12324
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author Makarov, Valeri V.
Lambert, Sébastien
Cigan, Phil
DiLullo, Christopher
Gordon, David
author_facet Makarov, Valeri V.
Lambert, Sébastien
Cigan, Phil
DiLullo, Christopher
Gordon, David
contents Astronomical time series often have non-uniform sampling in time, or irregular cadences, with long gaps separating clusters of observations. Some of these data sets are also explicitly non-Gaussian with respect to the expected model fit, or the simple mean. The standard Lomb-Scargle periodogram is based on the least squares solution for a set of test periods and, therefore, is easily corrupted by a subset of statistical outliers or an intrinsically non-Gaussian population. It can produce completely misleading results for heavy-tailed distribution of residuals. We propose a robust 1-norm periodogram technique, which is based on the principles of robust statistical estimation. This technique can be implemented in weighted or unweighted options. The method is described in detail and compared with the classical least squares periodogram on a set of astrometric VLBI measurements of the ICRF quasar IERS B0642+449. It is uniformly applied to a collection of 259 ICRF3 quasars each with more than 200 epoch VLBI measurements, resulting in a list of 49 objects with quasi-periodic position changes above the $3σ$ level, which warrant further investigation.
format Preprint
id arxiv_https___arxiv_org_abs_2405_12324
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Robust 1-norm periodograms for analysis of noisy non-Gaussian time series with irregular cadences: Application to VLBI astrometry of quasars
Makarov, Valeri V.
Lambert, Sébastien
Cigan, Phil
DiLullo, Christopher
Gordon, David
Instrumentation and Methods for Astrophysics
Astronomical time series often have non-uniform sampling in time, or irregular cadences, with long gaps separating clusters of observations. Some of these data sets are also explicitly non-Gaussian with respect to the expected model fit, or the simple mean. The standard Lomb-Scargle periodogram is based on the least squares solution for a set of test periods and, therefore, is easily corrupted by a subset of statistical outliers or an intrinsically non-Gaussian population. It can produce completely misleading results for heavy-tailed distribution of residuals. We propose a robust 1-norm periodogram technique, which is based on the principles of robust statistical estimation. This technique can be implemented in weighted or unweighted options. The method is described in detail and compared with the classical least squares periodogram on a set of astrometric VLBI measurements of the ICRF quasar IERS B0642+449. It is uniformly applied to a collection of 259 ICRF3 quasars each with more than 200 epoch VLBI measurements, resulting in a list of 49 objects with quasi-periodic position changes above the $3σ$ level, which warrant further investigation.
title Robust 1-norm periodograms for analysis of noisy non-Gaussian time series with irregular cadences: Application to VLBI astrometry of quasars
topic Instrumentation and Methods for Astrophysics
url https://arxiv.org/abs/2405.12324