PERIODIC CORRELATION IN STRATOSPHERIC OZONE DATA |
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Authors: | Peter Bloomfield Harry L. Hurd Robert B. Lund |
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Affiliation: | North Carolina State University, Harry L. Hurd Associates and the University of North Carolina at Chapel Hill |
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Abstract: | Abstract. A 50-year time series of monthly stratospheric ozone readings from Arosa, Switzerland, is analyzed. The time series exhibits the properties of a periodically correlated (PC) random sequence with annual periodicities. Spectral properties of PC random sequences are reviewed and a test to detect periodic correlation is presented. An autoregressive moving-average (ARMA) model with periodically varying coefficients (PARMA) is fitted to the data in two stages. First, a periodic autoregressive model is fitted to the data. This fit yields residuals that are stationary but non-white. Next, a stationary ARMA model is fitted to the residuals and the two models are combined to produce a larger model for the data. The combined model is shown to be a PARMA model and yields residuals that have the correlation properties of white noise. |
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Keywords: | Periodic correlation spectral analysis coherence statistic ARMA model PARMA model Yule-Walker estimation |
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