KLTS: A Rigorous Method to Compute the Confidence Intervals for the Three-Cornered Hat and for Groslambert Covariance

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TitreKLTS: A Rigorous Method to Compute the Confidence Intervals for the Three-Cornered Hat and for Groslambert Covariance
Type de publicationJournal Article
Year of Publication2019
AuteursLantz E, Calosso CE, Rubiola E, Giordano V, Fluhr C, Dubois B, Vernotte F
JournalIEEE TRANSACTIONS ON ULTRASONICS FERROELECTRICS AND FREQUENCY CONTROL
Volume66
Pagination1942-1949
Date PublishedDEC
Type of ArticleArticle
ISSN0885-3010
Mots-clésAllan variance (AVAR), Bayes methods, Bayesian analysis, clock stability, Clocks, confidence interval, Covariance matrices, covariances, Noise measurement, Probability density function, Random variables, Stability analysis, three-cornered hat
Résumé

The three-cornered hat/Groslambert Covariance (GCov) methods are widely used to estimate the stability of each individual clock in a set of three, but no method gives reliable confidence intervals for large integration times. We propose a new KLTS (Karhunen-Love Tansform using Sufficient statistics) method which uses these estimators to consider the statistics of all the measurements between the pairs of clocks in a Bayesian way. The resulting cumulative density function (CDF) yields confidence intervals for each clock Allan variance (AVAR). This CDF provides also a stability estimator that is always positive. Checked by massive Monte Carlo simulations, KLTS proves to be perfectly reliable even for one degree of freedom. An example of experimental measurement is given.

DOI10.1109/TUFFC.2019.2931911