Please use this identifier to cite or link to this item: http://dr.iiserpune.ac.in:8080/xmlui/handle/123456789/10606
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dc.contributor.authorDegen, Deniseen_US
dc.contributor.authorKUMAR, AJAYen_US
dc.contributor.authorScheck-Wenderoth, Magdalenaen_US
dc.contributor.authorCacace, Mauroen_US
dc.date.accessioned2025-12-19T11:42:10Z
dc.date.available2025-12-19T11:42:10Z
dc.date.issued2025-11en_US
dc.identifier.citationGeoscientific Model Development, 18(22), 9219–9236.en_US
dc.identifier.issn1991-9603en_US
dc.identifier.issn1991-962Xen_US
dc.identifier.urihttps://doi.org/10.5194/gmd-18-9219-2025en_US
dc.identifier.urihttp://dr.iiserpune.ac.in:8080/xmlui/handle/123456789/10606
dc.description.abstractGeodynamical processes are important to understand and assess the evolution of the Earth system as well as its natural resources. Given the wide range of characteristic spatial and temporal scales of geodynamic processes, their analysis routinely relies on computer-assisted numerical simulations. To provide reliable predictions such simulations need to consider a wide range of potential input parameters, material properties as they vary in space and time, in order to address associated uncertainties. To obtain any quantifiable measure of these uncertainties is challenging both because of the high computational cost of the forward simulation and because data is typically limited to direct observations at the near surface and for the present-day state. To account for both of these challenges, we present how to construct efficient and reliable surrogate models that are applicable to a wide range of geodynamic problems using a physics-based machine learning method. In this study, we apply our approach to the case study of the Alpine region, as a natural example for a complex geodynamic setting where several subduction slabs as imaged by tomographic methods interact below a heterogeneous lithosphere. We specifically develop surrogates for two sets of observables, topography and surface velocity, to provide models that can be used in probabilistic frameworks to validate the underlying model structure and parametrization. We additionally construct models for the deeper crustal and mantle domains of the model, to improve the system understanding. For this last family of models, we highlight different construction methods to develop models to either allow evaluations in the entirety of the 3D model or only at specific depth intervals.en_US
dc.language.isoenen_US
dc.publisherEuropean Geosciences Unionen_US
dc.subjectAlpine environmenten_US
dc.subjectEarthen_US
dc.subjectGeodynamicsen_US
dc.subjectMachine learningen_US
dc.subjectNumerical modelen_US
dc.subjectParameterizationen_US
dc.subjectSimulationen_US
dc.subjectTopographyen_US
dc.subject2025-DEC-WEEK2en_US
dc.subjectTOC-DEC-2025en_US
dc.subject2025en_US
dc.titleExploiting physics-based machine learning to quantify geodynamic effects – insights from the Alpine regionen_US
dc.typeArticleen_US
dc.contributor.departmentDept. of Earth and Climate Scienceen_US
dc.identifier.sourcetitleGeoscientific Model Developmenten_US
dc.publication.originofpublisherForeignen_US
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