Changepoint Detection in Periodic and Autocorrelated Time Series

Author:

Lund Robert1,Wang Xiaolan L.2,Lu Qi Qi3,Reeves Jaxk4,Gallagher Colin1,Feng Yang2

Affiliation:

1. Department of Mathematical Sciences, Clemson University, Clemson, South Carolina

2. Climate Research Division, Atmospheric Science and Technology Directorate, Science and Technology Branch, Environment Canada, Toronto, Ontario, Canada

3. Department of Mathematics and Statistics, Mississippi State University, Mississippi State, Mississippi

4. Department of Statistics, The University of Georgia, Athens, Georgia

Abstract

Abstract Undocumented changepoints (inhomogeneities) are ubiquitous features of climatic time series. Level shifts in time series caused by changepoints confound many inference problems and are very important data features. Tests for undocumented changepoints from models that have independent and identically distributed errors are by now well understood. However, most climate series exhibit serial autocorrelation. Monthly, daily, or hourly series may also have periodic mean structures. This article develops a test for undocumented changepoints for periodic and autocorrelated time series. Classical changepoint tests based on sums of squared errors are modified to take into account series autocorrelations and periodicities. The methods are applied in the analyses of two climate series.

Publisher

American Meteorological Society

Subject

Atmospheric Science

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