Swen Brands , Maialen Iturbide , Jaime Díez González-Pardo , Sixto Herrera , Joaquín Bedia , Rodrigo Manzanas , Esteban Rodríguez-Guisado , Santiago Beguería , Sergio M. Vicente-Serrano , José Manuel Gutiérrez
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引用次数: 0
Abstract
We evaluate different methodological choices for seasonal drought prediction over the Mediterranean region with the multi-dimensional Standardised Evapotranspiration Precipitation Index accumulated over a 3-month time-scale (SPEI-3), based on the ECMWF SEAS5.1 operational prediction system. We analyse two strategies for constructing the index backfilling data prior to model initialization, using real-time quasi-observations from the ERA5 reanalysis (SPEI-3-R), or model data from previous initializations of the same prediction system (SPEI-3-M), and show that model skill is sensitive to these methodological choices. The long 42-year hindcast/prediction record available for this model (1981–2022) allows for a robust skill assessment. A window of significant skill, extending from May to October, is detected over the Iberian Peninsula. This window arises from the cumulative and multivariate nature of the index and cannot entirely be explained by the individual skill of the components, nor by the warming trend during the validation period. Based on these results, seasonal drought predictions relying on the SPEI are currently being enabled in the framework of a new generation of climate services developed in Spain. These go beyond alternative applications available to-date, which usually rely on simpler indices and/or shorter model verification periods.
期刊介绍:
The journal Climate Services publishes research with a focus on science-based and user-specific climate information underpinning climate services, ultimately to assist society to adapt to climate change. Climate Services brings science and practice closer together. The journal addresses both researchers in the field of climate service research, and stakeholders and practitioners interested in or already applying climate services. It serves as a means of communication, dialogue and exchange between researchers and stakeholders. Climate services pioneers novel research areas that directly refer to how climate information can be applied in methodologies and tools for adaptation to climate change. It publishes best practice examples, case studies as well as theories, methods and data analysis with a clear connection to climate services. The focus of the published work is often multi-disciplinary, case-specific, tailored to specific sectors and strongly application-oriented. To offer a suitable outlet for such studies, Climate Services journal introduced a new section in the research article type. The research article contains a classical scientific part as well as a section with easily understandable practical implications for policy makers and practitioners. The journal''s focus is on the use and usability of climate information for adaptation purposes underpinning climate services.