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dc.contributor.authorBecerra, Lucas-
dc.contributor.authorDenham, Mónica Malen-
dc.contributor.authorKolton, Alejandro B.-
dc.contributor.authorLaneri, Karina-
dc.date.accessioned2026-05-28T12:38:32Z-
dc.date.available2026-05-28T12:38:32Z-
dc.date.issued2026-04-30-
dc.identifier.citationLucas Becerra; Monica Malen Denham; Alejandro B. Kolton; Karina Laneri (2026) Data-Driven Modeling to predict forest fire spread in the Patagonian region in Argentina. Ecological Modelling. ELSEVIER.es_ES
dc.identifier.issn0304-3800es_ES
dc.identifier.urihttp://rid.unrn.edu.ar/handle/20.500.12049/14358-
dc.description.abstractWildfires are among the most severe disturbances affecting forest ecosystems, with over 50,000 hectares burned in Patagonia, Argentina, during 2025 alone. This study implements a Reaction–Diffusion–Convection (RDC) model to simulate wildfire spread in the Steffen and Martín Lakes area, a region severely impacted by fires. By integrating high-resolution maps of slope, wind velocity, and vegetation, we conducted three computational experiments of increasing complexity to simulate fire propagation across heterogeneous landscapes. We employed a Genetic Algorithm (GA) to recover reference model parameters by maximizing the spatial overlap between simulated and reference burned areas. Subsequently, parameter estimates were refined using XGBoost to improve accuracy. Results demonstrate that the GA accurately recovers reference parameters across all scenarios, while the XGBoost fine-tuning significantly enhances accuracy in simpler cases. This integrated framework offers a systematic approach for estimating difficult-to-measure wildfire parameters, demonstrating the potential of hybrid computational methods for wildfire modeling and forest management.es_ES
dc.format.extentp. 111618es_ES
dc.language.isoenes_ES
dc.publisherELSEVIERes_ES
dc.relation.urihttps://www.sciencedirect.com/science/article/pii/S0304380026001468?dgcid=coauthores_ES
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/-
dc.titleData-Driven Modeling to predict forest fire spread in the Patagonian region in Argentinaes_ES
dc.typeArticuloes_ES
dc.rights.licenseCreative Commons Attribution-NonCommercial-ShareAlike 4.0 International (CC BY-NC-ND 4.0)-
dc.description.filiationBecerra, Lucas. Instituto Balseiro. Universidad Nacional de Cuyo, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationDenham, Mónica Malen. Centro Interdisciplinario de Telecomunicaciones, Electrónica, Computación y Ciencia Aplicada (CITECCA). Universidad Nacional de Río Negro, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationKolton, Alejandro B. Instituto Balseiro. Universidad Nacional de Cuyo, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationLaneri, Karina. Instituto Balseiro. Universidad Nacional de Cuyo, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationBecerra, Lucas. Centro Atómico Bariloche. Comisión Nacional de Energía Atómica, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationDenham, Mónica Malen. Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Buenos Aires, Argentinaes_ES
dc.description.filiationKolton, Alejandro B. Centro Atómico Bariloche. Comisión Nacional de Energía Atómica, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationKolton, Alejandro B. Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Buenos Aires, Argentinaes_ES
dc.description.filiationLaneri, Karina. Centro Atómico Bariloche. Comisión Nacional de Energía Atómica, San Carlos de Bariloche, Río Negro, Argentinaes_ES
dc.description.filiationLaneri, Karina. Consejo Nacional de Investigaciones Científicas y Técnicas (CONICET), Buenos Aires, Argentinaes_ES
dc.subject.keywordForest fire modelinges_ES
dc.subject.keywordGenetic algorithmes_ES
dc.subject.keywordReaction–diffusion–convection modeles_ES
dc.subject.keywordWildfire simulationes_ES
dc.subject.keywordParameter optimizationes_ES
dc.subject.keywordPatagonian regiones_ES
dc.type.versioninfo:eu-repo/semantics/acceptedVersiones_ES
dc.subject.materiaIngeniería, Ciencia y Tecnologíaes_ES
dc.origin.lugarDesarrolloUniversidad Nacional de Rio Negro - Centro Interdisciplinario de Telecomunicaciones, Electrónica, Computación y Ciencia Aplicada (CITECCA)es_ES
dc.origin.lugarDesarrolloCentro Atómico Bariloche - FIESTINes_ES
dc.origin.lugarDesarrolloCONICETes_ES
dc.relation.journalissue518es_ES
dc.description.reviewtruees_ES
dc.description.resumenWildfires are among the most severe disturbances affecting forest ecosystems, with over 50,000 hectares burned in Patagonia, Argentina, during 2025 alone. This study implements a Reaction–Diffusion–Convection (RDC) model to simulate wildfire spread in the Steffen and Martín Lakes area, a region severely impacted by fires. By integrating high-resolution maps of slope, wind velocity, and vegetation, we conducted three computational experiments of increasing complexity to simulate fire propagation across heterogeneous landscapes. We employed a Genetic Algorithm (GA) to recover reference model parameters by maximizing the spatial overlap between simulated and reference burned areas. Subsequently, parameter estimates were refined using XGBoost to improve accuracy. Results demonstrate that the GA accurately recovers reference parameters across all scenarios, while the XGBoost fine-tuning significantly enhances accuracy in simpler cases. This integrated framework offers a systematic approach for estimating difficult-to-measure wildfire parameters, demonstrating the potential of hybrid computational methods for wildfire modeling and forest management.es_ES
dc.identifier.doihttps://doi.org/10.1016/j.ecolmodel.2026.111618-
dc.relation.journalTitleEcological Modellinges_ES
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