Comparison of climate time series – Part 5: Multivariate annual cycles

This paper develops a method for determining whether two vector time series originate from a common stochastic process. The stochastic process considered incorporates both serial correlations and multivariate annual cycles. Specifically, the process is modeled as a vector autoregressive model with p...

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Published in:Advances in Statistical Climatology, Meteorology and Oceanography
Main Authors: DelSole, Timothy, Tippett, Michael K.
Format: Text
Language:English
Published: 2024
Subjects:
Online Access:https://doi.org/10.5194/ascmo-10-1-2024
https://ascmo.copernicus.org/articles/10/1/2024/
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spelling ftcopernicus:oai:publications.copernicus.org:ascmo112853 2024-09-15T18:23:44+00:00 Comparison of climate time series – Part 5: Multivariate annual cycles DelSole, Timothy Tippett, Michael K. 2024-01-16 application/pdf https://doi.org/10.5194/ascmo-10-1-2024 https://ascmo.copernicus.org/articles/10/1/2024/ eng eng doi:10.5194/ascmo-10-1-2024 https://ascmo.copernicus.org/articles/10/1/2024/ eISSN: 2364-3587 Text 2024 ftcopernicus https://doi.org/10.5194/ascmo-10-1-2024 2024-08-28T05:24:15Z This paper develops a method for determining whether two vector time series originate from a common stochastic process. The stochastic process considered incorporates both serial correlations and multivariate annual cycles. Specifically, the process is modeled as a vector autoregressive model with periodic forcing, referred to as a VARX model (where X stands for exogenous variables). The hypothesis that two VARX models share the same parameters is tested using the likelihood ratio method. The resulting test can be further decomposed into a series of tests to assess whether disparities in the VARX models stem from differences in noise parameters, autoregressive parameters, or annual cycle parameters. A comprehensive procedure for compressing discrepancies between VARX models into a minimal number of components is developed based on discriminant analysis. Using this method, the realism of climate model simulations of monthly mean North Atlantic sea surface temperatures is assessed. As expected, different simulations from the same climate model cannot be distinguished stochastically. Similarly, observations from different periods cannot be distinguished. However, every climate model differs stochastically from observations. Furthermore, each climate model differs stochastically from every other model, except when they originate from the same center. In essence, each climate model possesses a distinct fingerprint that sets it apart stochastically from both observations and models developed by other research centers. The primary factor contributing to these differences is the difference in annual cycles. The difference in annual cycles is often dominated by a single component, which can be extracted and illustrated using discriminant analysis. Text North Atlantic Copernicus Publications: E-Journals Advances in Statistical Climatology, Meteorology and Oceanography 10 1 1 27
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language English
description This paper develops a method for determining whether two vector time series originate from a common stochastic process. The stochastic process considered incorporates both serial correlations and multivariate annual cycles. Specifically, the process is modeled as a vector autoregressive model with periodic forcing, referred to as a VARX model (where X stands for exogenous variables). The hypothesis that two VARX models share the same parameters is tested using the likelihood ratio method. The resulting test can be further decomposed into a series of tests to assess whether disparities in the VARX models stem from differences in noise parameters, autoregressive parameters, or annual cycle parameters. A comprehensive procedure for compressing discrepancies between VARX models into a minimal number of components is developed based on discriminant analysis. Using this method, the realism of climate model simulations of monthly mean North Atlantic sea surface temperatures is assessed. As expected, different simulations from the same climate model cannot be distinguished stochastically. Similarly, observations from different periods cannot be distinguished. However, every climate model differs stochastically from observations. Furthermore, each climate model differs stochastically from every other model, except when they originate from the same center. In essence, each climate model possesses a distinct fingerprint that sets it apart stochastically from both observations and models developed by other research centers. The primary factor contributing to these differences is the difference in annual cycles. The difference in annual cycles is often dominated by a single component, which can be extracted and illustrated using discriminant analysis.
format Text
author DelSole, Timothy
Tippett, Michael K.
spellingShingle DelSole, Timothy
Tippett, Michael K.
Comparison of climate time series – Part 5: Multivariate annual cycles
author_facet DelSole, Timothy
Tippett, Michael K.
author_sort DelSole, Timothy
title Comparison of climate time series – Part 5: Multivariate annual cycles
title_short Comparison of climate time series – Part 5: Multivariate annual cycles
title_full Comparison of climate time series – Part 5: Multivariate annual cycles
title_fullStr Comparison of climate time series – Part 5: Multivariate annual cycles
title_full_unstemmed Comparison of climate time series – Part 5: Multivariate annual cycles
title_sort comparison of climate time series – part 5: multivariate annual cycles
publishDate 2024
url https://doi.org/10.5194/ascmo-10-1-2024
https://ascmo.copernicus.org/articles/10/1/2024/
genre North Atlantic
genre_facet North Atlantic
op_source eISSN: 2364-3587
op_relation doi:10.5194/ascmo-10-1-2024
https://ascmo.copernicus.org/articles/10/1/2024/
op_doi https://doi.org/10.5194/ascmo-10-1-2024
container_title Advances in Statistical Climatology, Meteorology and Oceanography
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