Análisis de operaciones aeroportuarias y de transporte aéreo

dc.contributor.authorDíaz Olariaga, Oscar Eduardo
dc.contributor.authorPulido Moreno, Luis Manuel
dc.contributor.authorZea Castro, José Fernando
dc.contributor.cvlachttp://scienti.colciencias.gov.co:8081/cvlac/visualizador/ generarCurriculoCv.do?cod_rh=0001561684
dc.contributor.cvlachttps://scienti.colciencias.gov.co/cvlac/visualizador/ generarCurriculoCv.do?cod_rh=0001124501
dc.contributor.cvlachttp://scienti.colciencias.gov.co:8081/cvlac/ visualizador/generarCurriculoCv.do?cod_rh=0001422989
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dc.contributor.orcidhttps://orcid.org/0000-0002-4858-3677
dc.contributor.orcidhttps://orcid.org/0000-0002-8299-5157
dc.contributor.orcidhttps://orcid.org/0000-0002-8935-3800
dc.date.accessioned2020-04-20T16:51:55Z
dc.date.available2020-04-20T16:51:55Z
dc.date.issued2019-08
dc.descriptionEl proyecto, que aquí se presenta y propone, tiene como objetivo estudiar, analizar y evaluar las características y comportamiento de ciertas operaciones que se realizan tanto en un aeropuerto como en un sistema de aeropuertos (a nivel de red). Como caso de estudio se utilizará la red de aeropuertos de Colombia (en conjunto) y de forma individual algunos de los aeropuertos más importantes del sistema. Este proyecto es una continuidad de cuatro proyectos anuales anteriores (2016-2019) (y que ha generado casi 50 productos de investigación, entre artículos en revistas indexadas y en eventos científicos internacionales, además de una docena de trabajos de grado), no es un proyecto monotemático sino de una línea, enfoque, tratamiento y desarrollo fuertemente multidisciplinar, aunque siempre en el campo del transporte aéreo. La estrecha y fluida cooperación existente con las instituciones relacionadas (Aerocivil, ANI, etc.) concede al equipo de investigación acceso casi ilimitado a grandes base de datos (Big Data) existentes, y disponer de este Big Data es esencial para llevar a cabo todos los análisis / cálculos / simulaciones previstas.spa
dc.description.abstractThe project, which is presented and proposed here, aims to study, analyze and evaluate the characteristics and behavior of certain operations that are carried out both in an airport and in an airport system (at the network level). As a case study, the Colombian airport network (as a whole) and some of the most important airports in the system will be used individually. This project is a continuity of four previous annual projects (2016-2019) (and that has generated almost 50 research products, including articles in indexed journals and international scientific events, in addition to a dozen degree projects), it is not a monothematic project but a strongly multidisciplinary line, approach, treatment and development, although always in the field of air transport. The close and fluid cooperation that exists with related institutions (Aerocivil, ANI, etc.) gives the research team almost unlimited access to existing large databases (Big Data), and having this Big Data is essential to carry out all the planned analyzes / calculations / simulations.spa
dc.description.domainhttp://unidadinvestigacion.usta.edu.cospa
dc.format.mimetypeapplication/pdf
dc.identifier.urihttp://hdl.handle.net/11634/22629
dc.publisher.branchCRAI-USTA Bogotáspa
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dc.rightsAtribución-NoComercial-SinDerivadas 2.5 Colombia
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/2.5/co/
dc.subject.keywordAircraft operationsspa
dc.subject.keywordAirport managementspa
dc.subject.keywordOperational efficiencyspa
dc.subject.keywordAir Transportspa
dc.subject.keywordDynamic of systemsspa
dc.subject.keywordData analyticsspa
dc.subject.keywordNetwork analysisspa
dc.subject.keywordExploratory data analysis  spa
dc.subject.proposalOperaciones de aeronavesspa
dc.subject.proposalGestión de aeropuertosspa
dc.subject.proposalEficiencia operacionalspa
dc.subject.proposalTransporte aéreospa
dc.subject.proposalDinámica de sistemasspa
dc.subject.proposalAnalítica de datosspa
dc.subject.proposalAnálisis de redesspa
dc.subject.proposalAnálisis exploratorio de datosspa
dc.titleAnálisis de operaciones aeroportuarias y de transporte aéreospa
dc.type.categoryFormación de Recurso Humano para la Ctel: Proyecto ejecutado con investigadores en empresas, industrias y Estadospa

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