Abstract
Global climate models (GCMs) and Earth system models (ESMs) provide many climate services with environmental relevance. The High Resolution Model Intercomparison Project (HighResMIP) of the Coupled Model Intercomparison Project Phase 6 (CMIP6) provides model runs of GCMs and ESMs to address regional phenomena. Developing a parsimonious ensemble of CMIP6 requires multiple ensemble methods such as independent-model subset selection, prescreening-based subset selection, and model weighting. The work presented here focuses on application-specific optimal model weighting, with prescreening-based subset selection. As such, independent ensemble members are categorized, selected, and weighted based on their ability to reproduce physically-interpretable features of interest that are problem-specific. We discuss the strengths and caveats of optimal model weighting using a case study of red tide prediction in the Gulf of Mexico along the West Florida Shelf. Red tide is a common name of specific harmful algal blooms that occur worldwide, causing adverse socioeconomic and environmental impacts. Our results indicate the importance of prescreening-based subset selection as optimal model weighting can underplay robust ensemble members by optimizing error cancellation. Prescreening-based subset selection also provides insights about the validity of the model weights. By illustrating the caveats of using non-representative models when optimal model weighting is used, the findings and discussion of this study are pertinent to many other climate services.
Original language | English |
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Article number | 100334 |
Journal | Climate Services |
Volume | 28 |
DOIs | |
State | Published - Dec 2022 |
Funding
We thank two anonymous reviewers for their thoughtful comments that helped to improve the manuscript. We thank Emily Lizotte in the Department of Earth, Ocean, and Atmospheric Science (EOAS) at Florida State University (FSU) for contacting the Florida Fish and Wildlife Conservation Commission (FWC) to obtain the Karenia brevis data. We also thank the FWC for their provision of the data. We are grateful to Maria J. Olascoaga in the Department of Ocean Sciences at the University of Miami for our communication regarding the data analysis of Karenia brevis data. We wish to also thank Sally Gorrie, Emily Lizotte, Mike Stukel, and Jing Yang in EOAS at FSU for their fruitful discussions and suggestions relating to this project. We dedicate this paper to the memory of Stephen Kish, former professor in EOAS at FSU, who was inspirational in the research and planning for this project. This work is funded by NSF Award #1939994.
Funders | Funder number |
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EOAS | |
National Science Foundation | 1939994 |
Florida Fish and Wildlife Conservation Commission | |
Florida State University | |
University of Miami |