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    Transferability and explainability of deep learning emulators for regional climate model projections: perspectives for future applications

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    Identificadores
    URI: https://hdl.handle.net/10902/37725
    DOI: 10.1175/AIES-D-23-0099.1
    ISSN: 2769-7525
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    Autoría
    Baño Medina, JorgeAutoridad Unican; Iturbide Martínez de Albéniz, MaialenAutoridad Unican; Fernández Fernández, Jesús (matemático)Autoridad Unican; Gutiérrez Llorente, José Manuel
    Fecha
    2024-10
    Derechos
    © 2024 American Meteorological Society. This published article is licensed under the terms of the default AMS reuse license. For information regarding reuse of this content and general copyright information, consult the AMS Copyright Policy (www.ametsoc.org/PUBSReuseLicenses).
    Publicado en
    Artificial Intelligence for the Earth Systems, 2024, 3(4), e230099
    Editorial
    American Meteorological Society
    Enlace a la publicación
    https://doi.org/10.1175/AIES-D-23-0099.1
    Palabras clave
    Downscaling
    Neural networks
    Climate variability
    Resumen/Abstract
    Regional climate models (RCMs) are essential tools for simulating and studying regional climate variability and change. However, their high computational cost limits the production of comprehensive ensembles of regional climate projections covering multiple scenarios and driving Global climate models (GCMs) across regions. RCM emulators based on deep learning models have recently been introduced as a cost-effective and promising alternative that requires only short RCM simulations to train the models. Therefore, evaluating their transferability to different periods, scenarios, and GCMs becomes a pivotal and complex task in which the inherent biases of both GCMs and RCMs play a significant role. Here, we focus on this problem by considering the two different emulation approaches introduced in the literature as perfect and imperfect, that we here refer to as perfect prognosis (PP) and model output statistics (MOS), respectively, following the well-established downscaling terminology. In addition to standard evaluation techniques, we expand the analysis with methods from the field of explainable artificial intelligence (XAI), to assess the physical consistency of the empirical links learnt by the models.We find that both approaches are able to emulate certain climatological properties of RCMs for different periods and scenarios (soft transferability), but the consistency of the emulation functions differs between approaches. Whereas PP learns robust and physically meaningful patterns, MOS results are GCM dependent and lack physical consistency in some cases. Both approaches face problems when transferring the emulation function to other GCMs (hard transferability), due to the existence of GCM-dependent biases. This limits their applicability to build RCM ensembles. We conclude by giving prospects for future applications.
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    UNIVERSIDAD DE CANTABRIA

    Repositorio realizado por la Biblioteca Universitaria utilizando DSpace software
    Contacto | Sugerencias
    Metadatos sujetos a:licencia de Creative Commons Reconocimiento 4.0 España