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dc.rights.licenseAtribución-NoComercial-SinDerivadas 4.0 Internacional
dc.contributor.advisorMartínez Martínez, Luis Joel
dc.contributor.advisorRodríguez Molano, Luis Ernesto
dc.contributor.authorVelandia Sánchez, Edisson Andrés
dc.date.accessioned2022-09-01T16:08:40Z
dc.date.available2022-09-01T16:08:40Z
dc.date.issued2022
dc.identifier.urihttps://repositorio.unal.edu.co/handle/unal/82236
dc.descriptionilustraciones, graficas
dc.description.abstractLa papa amarilla diploide (Solanum tuberosum Grupo Phureja) es susceptible a condiciones de déficit hídrico, afectando negativamente el potencial de rendimiento. La variabilidad climática aumenta la frecuencia de la sequía, por lo que es necesario generar estrategias que permitan diagnosticar a tiempo y así mitigar los efectos causados por el estrés hídrico en el cultivo. El objetivo de este trabajo fue evaluar el uso de imágenes térmicas y la respuesta espectral para identificar condiciones de estrés hídrico y estado nutricional con relación al N en papa amarilla diploide (Solanum tuberosum Grupo Phureja) cv. Criolla Colombia bajo invernadero. Se establecieron tubérculos-semilla en bolsas con suelo de siete litros de capacidad regadas cada tercer día a capacidad de campo hasta el inicio de tuberización 45 dds (días después de siembra), sometidas a dos regímenes hídricos: i) riego continuo (CW) y, ii) déficit hídrico por suspensión de riego total (SW) durante 13 días, las dosis de fertilización con N fueron 0%, 50%, 100% y 150% de la dosis comercial utilizada para el cultivo. Se usó un modelo factorial completamente al azar de medidas repetidas y análisis descriptivo. Se encontró que a partir de la TD se pudo determinar la deficiencia de agua en las plantas destacando que, bajo condiciones de invernadero, desde el día cinco ddt fue posible detectar el déficit hídrico que presentaron las plantas del cv. Criolla Colombia por medio de la temperatura proveniente de las imágenes térmicas, y con mayor claridad hacia los siete ddt. Se propuso el índice MED556 como importante para la determinación de N en las plantas. Los resultados revelaron índices espectrales como el NDVI y PRInorm presentaron una relación con el LN desde el primer muestreo a los 3 ddt, siendo parámetros que favorablemente se puede usar para determinar el estado del N en las plantas, mientras que índices como el WI representaron mejor el experimento para la determinación del estado hídrico de las plantas. (Texto tomado de la fuente)
dc.description.abstractDiploid yellow potato (Solanum tuberosum Phureja Group) is susceptible to water deficit conditions, negatively affecting yield potential. Climate variability increases the frequency of drought, so it is necessary to generate strategies that allow early diagnosis and thus mitigate the effects caused by water stress on the crop. The objective of this work was to evaluate the use of thermal imaging and spectral response to identify water stress conditions and nutritional status in relation to N in yellow diploid potato (Solanum tuberosum Phureja Group) cv. Criolla Colombia in greenhouse conditions. Seed tubers were established in seven-liter bags with soil, irrigated every third day at field capacity until the onset of tuberization 45 dds (days after planting), subjected to two water regimes: i) continuous irrigation (CW) and, ii) water deficit by suspension of total irrigation (SW) for 13 days, the N fertilization doses were 0%, 50%, 100% and 150% of the commercial dose used for the crop. A completely randomized factorial model with repeated measures and descriptive analysis was used. It was found that from the TD it was possible to determine the water deficiency in the plants, highlighting that, under greenhouse conditions, from day five ddt it was possible to detect the water deficit in the plants of the Criolla Colombia cv. by means of the temperature from the thermal images, and with greater clarity at seven ddt. The MED556 index was proposed as important for the determination of N in the plants. The results revealed spectral indices such as NDVI and PRInorm presented a relationship with LN from the first sampling at 3 ddt, being parameters that can be favorably used to determine the N status of the plants, while indices such as WI better represented the experiment for the determination of the water status of the plants.
dc.format.extentxvi, 80 páginas
dc.format.mimetypeapplication/pdf
dc.language.isospa
dc.publisherUniversidad Nacional de Colombia
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/4.0/
dc.subject.ddc570 - Biología::571 - Fisiología y temas relacionados
dc.titleImágenes térmicas y respuestas espectrales para identificar condiciones de estrés hídrico y estado nutricional con relación al nitrógeno en papa amarilla diploide (Solanum tuberosum Grupo Phureja)
dc.typeTrabajo de grado - Maestría
dc.type.driverinfo:eu-repo/semantics/masterThesis
dc.type.versioninfo:eu-repo/semantics/acceptedVersion
dc.publisher.programBogotá - Ciencias Agrarias - Maestría en Geomática
dc.description.degreelevelMaestría
dc.description.degreenameMagíster en Geomática
dc.description.researchareaGeoinformación para el uso sostenible de los recursos naturales
dc.identifier.instnameUniversidad Nacional de Colombia
dc.identifier.reponameRepositorio Institucional Universidad Nacional de Colombia
dc.identifier.repourlhttps://repositorio.unal.edu.co/
dc.publisher.departmentDepartamento de Agronomía
dc.publisher.facultyFacultad de Ciencias Agrarias
dc.publisher.placeBogotá, Colombia
dc.publisher.branchUniversidad Nacional de Colombia - Sede Bogotá
dc.relation.indexedRedCol
dc.relation.indexedLaReferencia
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dc.rights.accessrightsinfo:eu-repo/semantics/openAccess
dc.subject.agrovocEstrés de sequia
dc.subject.agrovocdrought stress
dc.subject.agrovocSolanum tuberosum
dc.subject.proposalTemperatura del dosel
dc.subject.proposalÍndices espectrales
dc.subject.proposalEstado hídrico foliar
dc.subject.proposalEstrés por nitrógeno
dc.subject.proposalCanopy temperature
dc.subject.proposalSpectral indices
dc.subject.proposalLeaf water status
dc.subject.proposalNitrogen stress
dc.title.translatedThermal imaging and spectral responses to identify water stress conditions and nutritional status in relation to nitrogen in diploid yellow potato (Solanum tuberosum tuberosum Phureja Group)
dc.type.coarhttp://purl.org/coar/resource_type/c_bdcc
dc.type.coarversionhttp://purl.org/coar/version/c_ab4af688f83e57aa
dc.type.contentText
dc.type.redcolhttp://purl.org/redcol/resource_type/TM
oaire.accessrightshttp://purl.org/coar/access_right/c_abf2
oaire.awardtitleUSO DE IMÁGENES TÉRMICAS EN LA ESTIMACIÓN DEL ESTRÉS HÍDRICO EN PAPA (Solanum tuberosum Grupo Phureja)
oaire.fundernameCentro de Investigación y Extensión Rural (CIER)
dcterms.audience.professionaldevelopmentEstudiantes
dcterms.audience.professionaldevelopmentInvestigadores
dcterms.audience.professionaldevelopmentPúblico general


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