Context-sensitive recommender system in the approach of industry 4.0 technologies for application in intelligent tourism in santander: santurbán paramo case

dc.contributor.advisorCarrillo Zambrano, Eduardo
dc.contributor.apolounabCarrillo Zambrano, Eduardo [eduardo-carrillo-zambrano]spa
dc.contributor.authorFlórez Franco, Marco Fidel
dc.contributor.cvlacCarrillo Zambrano, Eduardo [0000068780spa
dc.contributor.cvlacFlórez Franco, Marco Fidel [0000907111]spa
dc.contributor.googlescholarCarrillo Zambrano, Eduardo [es&oi=ao]spa
dc.contributor.orcidCarrillo Zambrano, Eduardo [0000-0002-0868-940X]spa
dc.contributor.orcidFlórez Franco, Marco Fidel [0000-0002-2386-5117]spa
dc.contributor.researchgateCarrillo Zambrano, Eduardo [Eduardo_Carrillo_Zambrano]spa
dc.contributor.researchgroupGrupo de Investigación en Ciencias Aplicadas - GINCAPspa
dc.contributor.scopusCarrillo Zambrano, Eduardo [15622921600]spa
dc.contributor.scopusFlórez Franco, Marco Fidel [57191196981]spa
dc.coverage.campusUNAB Campus Bucaramangaspa
dc.coverage.spatialPáramo de Santurbán (Santander, Colombia)spa
dc.coverage.temporal2022-2024spa
dc.date.accessioned2025-08-12T13:18:36Z
dc.date.available2025-08-12T13:18:36Z
dc.date.issued2025-07-11
dc.degree.nameDoctorado en Ingenieríaspa
dc.description.abstractEsta tesis doctoral desarrolla un sistema de recomendaciones sensible al contexto orientado al turismo inteligente en el Páramo de Santurbán, bajo el paradigma de la Industria 4.0. Este ecosistema de alta montaña, estratégico por su biodiversidad y provisión de agua, enfrenta amenazas derivadas de actividades extractivas y de una gestión turística inadecuada. La propuesta integra ontologías y aprendizaje profundo en un modelo híbrido capaz de operar en entornos con conectividad limitada, proporcionando recomendaciones personalizadas alineadas con objetivos de conservación y desarrollo local. Estructurada como un compendio de artículos, la investigación aborda la identificación y caracterización de actores, el desarrollo de una ontología para turismo sostenible en áreas protegidas y la implementación de algoritmos de recomendación basados en inteligencia artificial para la identificación de especies y la gestión contextual del visitante. Los resultados, con métricas de alto rendimiento y evaluaciones positivas en campo, evidencian la utilidad, pertinencia y diversidad de las sugerencias. Se demuestra que la integración de tecnologías semánticas y aprendizaje automático en sistemas de recomendación fortalece la conservación, optimiza la experiencia turística y genera oportunidades económicas sostenibles, proponiendo un modelo replicable en otros parques naturales con proyecciones de escalabilidad mediante aprendizaje federado, integración de datos ambientales en tiempo real y colaboración interinstitucional.spa
dc.description.abstractenglishThis doctoral thesis develops a context-sensitive recommendation system aimed at intelligent tourism in the Santurbán Páramo, within the framework of the Industry 4.0 paradigm. This high-mountain ecosystem, strategic for its biodiversity and water provision, faces threats from extractive activities and inadequate tourism management. The proposed approach integrates ontologies and deep learning into a hybrid model capable of operating in environments with limited connectivity, delivering personalized recommendations aligned with conservation objectives and local development goals. Structured as a compendium of articles, the research addresses the identification and characterization of stakeholders, the development of an ontology for sustainable tourism in protected areas, and the implementation of artificial intelligence–based recommendation algorithms for species identification and contextual visitor management. The results, with high-performance metrics and positive field evaluations, highlight the usefulness, relevance, and diversity of the suggestions. The study demonstrates that integrating semantic technologies and machine learning into recommendation systems strengthens conservation, optimizes the tourist experience, and generates sustainable economic opportunities, proposing a replicable model for other natural parks with scalability projections through federated learning, real-time environmental data integration, and inter-institutional collaboration.spa
dc.description.degreelevelDoctoradospa
dc.description.learningmodalityModalidad Presencialspa
dc.description.sponsorshipUniversidad de investigación y desarrollo-UDIspa
dc.description.tableofcontents1. INTRODUCTION 9 1.1 Background 10 1.2 Justification 11 1.3 Hypothesis 12 1.4 Objectives 12 1.4.1 General Objective: 12 1.4.2 Specific objectives: 12 1.5 Contribution of the Articles to the Thesis Development. 12 1.6 Articulating Scientific, Sustainable, and Educational Perspectives. 14 2. THEORETICAL FRAMEWORK 16 3. METHODOLOGICAL FRAMEWORK 18 3.1 Specific Methodological Approaches for Each Study 18 4. DISCUSSION FRAMEWORK 20 4.1 Evaluation of System Accuracy and User Experience 21 5. CONCLUSIONS 24 5.1 Research Question and Hypothesis Validation 24 5.2 Contribution to the Research Gap 24 5.3 Empirical Validation and User Feedback 24 5.3.1 Response to the Research Question 24 5.4 Integration of Conservation and Tourism 25 5.5 Comparative Analysis with Related Works 26 5.6 Final Recommendations and Research Projection 27 5.6.1 Optimization and Scalability of the System 27 5.6.2 Continuous Refinement and New Data Sources and Technologies 28 5.6.3 Impact Evaluation, Sustainability, and Inter-Institutional Collaboration 28 5.7 Synthesis and Closure of the Gap 29 6. IMPLEMENTATION AND REPLICATION GUIDE FOR THE RECOMMENDATION SYSTEM IN OTHER NATURAL PARKS OF COLOMBIA 29 7. BIBLIOGRAPHIC REFERENCES 33 8. REFERENCES 34spa
dc.format.mimetypeapplication/pdfspa
dc.identifier.instnameinstname:Universidad Autónoma de Bucaramanga - UNABspa
dc.identifier.reponamereponame:Repositorio Institucional UNABspa
dc.identifier.repourlrepourl:https://repository.unab.edu.cospa
dc.identifier.urihttp://hdl.handle.net/20.500.12749/30740
dc.language.isospaspa
dc.publisher.facultyFacultad Ingenieríaspa
dc.publisher.grantorUniversidad Autónoma de Bucaramanga UNABspa
dc.publisher.programDoctorado en Ingenieríaspa
dc.publisher.programidDING-1502
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dc.relation.uriapolohttps://apolo.unab.edu.co/en/persons/eduardo-carrillo-zambranospa
dc.rights.accessrightsinfo:eu-repo/semantics/openAccessspa
dc.rights.creativecommonsAtribución-NoComercial-SinDerivadas 2.5 Colombia*
dc.rights.localAbierto (Texto Completo)spa
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/2.5/co/*
dc.subject.keywordsTourism recommendationspa
dc.subject.keywordsDeep learningspa
dc.subject.keywordsHybrid recommendation methodspa
dc.subject.keywordsContext-aware recommender systemspa
dc.subject.keywordsOntology-based knowledgespa
dc.subject.keywordsEngineeringspa
dc.subject.keywordsIndustry 4.0spa
dc.subject.keywordsInternet of thingsspa
dc.subject.keywordsService industryspa
dc.subject.keywordsOntologies (Information retrieval)spa
dc.subject.keywordsEcological tourismspa
dc.subject.lembIngenieríaspa
dc.subject.lembIndustria 4.0spa
dc.subject.lembInternet de las cosasspa
dc.subject.lembIndustria de serviciosspa
dc.subject.lembOntologías (Recuperación de información)spa
dc.subject.lembPáramo (Santander, Colombia)spa
dc.subject.lembTurismo ecológicospa
dc.subject.proposalSistema de recomendación sensible al contextospa
dc.subject.proposalRecomendación turísticaspa
dc.subject.proposalAprendizaje profundospa
dc.subject.proposalMétodo híbrido de recomendaciónspa
dc.subject.proposalConocimiento basado en ontologíasspa
dc.titleContext-sensitive recommender system in the approach of industry 4.0 technologies for application in intelligent tourism in santander: santurbán paramo caseeng
dc.title.translatedSistema de recomendaciones sensible al contexto en el enfoque de tecnologías de la Industria 4.0 para aplicación en turismo inteligente en Santander: Caso Páramo de Santurbánspa
dc.typeThesiseng
dc.type.coarhttp://purl.org/coar/resource_type/c_db06
dc.type.coarversionhttp://purl.org/coar/version/c_ab4af688f83e57aaspa
dc.type.driverinfo:eu-repo/semantics/doctoralThesisspa
dc.type.hasversioninfo:eu-repo/semantics/acceptedVersionspa
dc.type.localTesisspa
dc.type.redcolhttp://purl.org/redcol/resource_type/TDspa

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