Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses

Abstract We apply a Bayesian structure learning approach to study interactions between global climate modes, so illustrating its use as a framework for developing process‐based diagnostics with which to evaluate climate models. Homogeneous dynamic Bayesian network models are constructed for time ser...

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Main Authors: Dylan Harries, Terence J. O'Kane
Format: Article
Language:English
Published: American Geophysical Union (AGU) 2021-05-01
Series:Journal of Advances in Modeling Earth Systems
Subjects:
Online Access:https://doi.org/10.1029/2020MS002442
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spelling doaj-720c584245b34176b886e6888ef0141d2021-06-15T13:00:34ZengAmerican Geophysical Union (AGU)Journal of Advances in Modeling Earth Systems1942-24662021-05-01135n/an/a10.1029/2020MS002442Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate ReanalysesDylan Harries0Terence J. O'Kane1CSIRO Oceans and Atmosphere Hobart TAS AustraliaCSIRO Oceans and Atmosphere Hobart TAS AustraliaAbstract We apply a Bayesian structure learning approach to study interactions between global climate modes, so illustrating its use as a framework for developing process‐based diagnostics with which to evaluate climate models. Homogeneous dynamic Bayesian network models are constructed for time series of empirical indices diagnosing the activity of major tropical, Northern and Southern Hemisphere modes of climate variability in the NCEP/NCAR and JRA‐55 reanalyses. The resulting probabilistic graphical models are comparable to Granger causal analyses that have recently been advocated. Reversible jump Markov Chain Monte Carlo is employed to provide a quantification of the uncertainty associated with the selection of a single network structure. In general, the models fitted from the NCEP/NCAR reanalysis and the JRA‐55 reanalysis are found to exhibit broad agreement in terms of associations for which there is high posterior confidence. Differences between the two reanalyses are found that involve modes for which known biases are present or that may be attributed to seasonal effects, as well as for features that, while present in point estimates, have low overall posterior mass. We argue that the ability to incorporate such measures of confidence in structural features is a significant advantage provided by the Bayesian approach, as point estimates alone may understate the relevant uncertainties and yield less informative measures of differences between products when network‐based approaches are used for model evaluation.https://doi.org/10.1029/2020MS002442Bayesiangraphical modelsteleconnections
collection DOAJ
language English
format Article
sources DOAJ
author Dylan Harries
Terence J. O'Kane
spellingShingle Dylan Harries
Terence J. O'Kane
Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
Journal of Advances in Modeling Earth Systems
Bayesian
graphical models
teleconnections
author_facet Dylan Harries
Terence J. O'Kane
author_sort Dylan Harries
title Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
title_short Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
title_full Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
title_fullStr Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
title_full_unstemmed Dynamic Bayesian Networks for Evaluation of Granger Causal Relationships in Climate Reanalyses
title_sort dynamic bayesian networks for evaluation of granger causal relationships in climate reanalyses
publisher American Geophysical Union (AGU)
series Journal of Advances in Modeling Earth Systems
issn 1942-2466
publishDate 2021-05-01
description Abstract We apply a Bayesian structure learning approach to study interactions between global climate modes, so illustrating its use as a framework for developing process‐based diagnostics with which to evaluate climate models. Homogeneous dynamic Bayesian network models are constructed for time series of empirical indices diagnosing the activity of major tropical, Northern and Southern Hemisphere modes of climate variability in the NCEP/NCAR and JRA‐55 reanalyses. The resulting probabilistic graphical models are comparable to Granger causal analyses that have recently been advocated. Reversible jump Markov Chain Monte Carlo is employed to provide a quantification of the uncertainty associated with the selection of a single network structure. In general, the models fitted from the NCEP/NCAR reanalysis and the JRA‐55 reanalysis are found to exhibit broad agreement in terms of associations for which there is high posterior confidence. Differences between the two reanalyses are found that involve modes for which known biases are present or that may be attributed to seasonal effects, as well as for features that, while present in point estimates, have low overall posterior mass. We argue that the ability to incorporate such measures of confidence in structural features is a significant advantage provided by the Bayesian approach, as point estimates alone may understate the relevant uncertainties and yield less informative measures of differences between products when network‐based approaches are used for model evaluation.
topic Bayesian
graphical models
teleconnections
url https://doi.org/10.1029/2020MS002442
work_keys_str_mv AT dylanharries dynamicbayesiannetworksforevaluationofgrangercausalrelationshipsinclimatereanalyses
AT terencejokane dynamicbayesiannetworksforevaluationofgrangercausalrelationshipsinclimatereanalyses
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