Site-Specific Nutrient Diagnosis of Orange Groves

dc.contributor.authorYamane, Danilo Ricardo [UNESP]
dc.contributor.authorParent, Serge-Étienne
dc.contributor.authorNatale, William
dc.contributor.authorCecílio Filho, Arthur Bernardes [UNESP]
dc.contributor.authorRozane, Danilo Eduardo [UNESP]
dc.contributor.authorNowaki, Rodrigo Hiyoshi Dalmazzo [UNESP]
dc.contributor.authorMattos Junior, Dirceu de
dc.contributor.authorParent, Léon Etienne
dc.contributor.institutionUniversidade Estadual Paulista (UNESP)
dc.contributor.institutionUniversité Laval
dc.contributor.institutionFederal University of Ceará
dc.contributor.institutionCentro de Citricultura Sylvio Moreira
dc.contributor.institutionFederal University of Santa Maria
dc.date.accessioned2023-07-29T16:01:39Z
dc.date.available2023-07-29T16:01:39Z
dc.date.issued2022-12-01
dc.description.abstractNutrient diagnosis of orange (Citrus sinensis) groves in Brazil relies on regional information from a limited number of studies transferred to other environments under the ceteris paribus assumption. Interpretation methods are based on crude nutrient compositions that are intrinsically biased by genetics X environment interactions. Our objective was to develop accurate and unbiased nutrient diagnosis of orange groves combining machine learning (ML) and compositional methods. Fruit yield and foliar nutrients were quantified in 551 rainfed 7–15-year-old orange groves of ‘Hamlin’, ‘Valência’, and ‘Pêra’ in the state of São Paulo, Brazil. The data set was further documented using soil classification, soil tests, and meteorological indices. Tissue compositions were log-ratio transformed to account for nutrient interactions. Ionomes differed among scions. Regression ML models showed evidence of overfitting. Binary ML classification models showed acceptable values of areas under the curve (>0.7). Regional standards delineating the multivariate elliptical hyperspace depended on the yield cutoff. A shapeless blob hyperspace was delineated using the k-nearest successful neighbors that showed comparable features and reported realistic yield goals. Regionally derived and site-specific reference compositions may lead to differential interpretation. Large-size and diversified data sets must be collected to inform ML models along the learning curve, tackle model overfitting, and evaluate the merit of blob-scale diagnosis.en
dc.description.affiliationDepartment of Plant Production São Paulo State University (UNESP), SP
dc.description.affiliationDepartment of Soils and Agri-Food Engineering Université Laval
dc.description.affiliationDepartment of Plant Science Federal University of Ceará, CE
dc.description.affiliationDepartment of Agronomy São Paulo State University (UNESP), SP
dc.description.affiliationInstituto Agronômico de Campinas (IAC) Centro de Citricultura Sylvio Moreira, SP
dc.description.affiliationDepartment of Soils Federal University of Santa Maria, RS
dc.description.affiliationUnespDepartment of Plant Production São Paulo State University (UNESP), SP
dc.description.affiliationUnespDepartment of Agronomy São Paulo State University (UNESP), SP
dc.description.sponsorshipNatural Sciences and Engineering Research Council of Canada
dc.description.sponsorshipIdNatural Sciences and Engineering Research Council of Canada: #2254
dc.identifierhttp://dx.doi.org/10.3390/horticulturae8121126
dc.identifier.citationHorticulturae, v. 8, n. 12, 2022.
dc.identifier.doi10.3390/horticulturae8121126
dc.identifier.issn2311-7524
dc.identifier.scopus2-s2.0-85144905436
dc.identifier.urihttp://hdl.handle.net/11449/249512
dc.language.isoeng
dc.relation.ispartofHorticulturae
dc.sourceScopus
dc.subjectcentered log ratio
dc.subjectlocal diagnosis
dc.subjectmachine learning
dc.subjectnutrient balance
dc.titleSite-Specific Nutrient Diagnosis of Orange Grovesen
dc.typeArtigo
unesp.author.orcid0000-0002-6706-5496[4]
unesp.author.orcid0000-0003-0518-3689[5]
unesp.author.orcid0000-0002-6149-9189[7]
unesp.author.orcid0000-0002-4384-4495[8]
unesp.departmentProdução Vegetal - FCAVpt

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