Prediction of biomass and nutritional quality of tropical pastures using multispectral analysis and machine learning models

dc.contributor.authorTafur Culqui, Josué
dc.contributor.authorAtalaya Marin, Nilton
dc.contributor.authorGómez Fernandez, Darwin
dc.contributor.authorTaboada Mitma, Víctor Hugo
dc.contributor.authorCruz Luis, Juancarlos Alejandro
dc.contributor.authorNeyra, Henri
dc.contributor.authorAnchayhua Torres, Janella Jelin
dc.contributor.authorQuichua Baldeon, Rosalía
dc.contributor.authorSánchez Fuentes, Teiser
dc.contributor.authorOlano Camán, Yadhira Milagros
dc.contributor.authorBarrazueta Campos, Mauro Adel
dc.contributor.authorTineo Flores, Daniel
dc.contributor.authorGoñas Goñas, Malluri
dc.date.accessioned2026-06-04T17:29:14Z
dc.date.available2026-06-04T17:29:14Z
dc.date.issued2026-05-17
dc.description.abstractDetermining pasture productivity and nutritional value through non-destructive approaches aimed at optimizing forage resource management and improving efficiency in livestock systems has become an urgent priority. In this context, the objective of this study was to evaluate the performance of machine learning models in predicting biomass production and the nutritional contribution of different pasture species, as well as to assess the role of vegetation indices (VIs) in these predictions. To this end, a multispectral sensor mounted on a DJI Matrice 350 RTK platform was used, together with agronomic, yield, and nutritional variables. The curated dataset was subsequently analyzed using linear and polynomial models, as well as tree-based algorithms and support vector machines. Model validation was performed using a group-constrained random partitioning scheme (Group Shuffle Split), with species considered as the grouping variable. Model interpretability was addressed through the SHAP (SHapley Additive Explanations) framework. The results indicated better predictive performance for yield-related variables compared to nutritional attributes. In particular, the Extra Trees model achieved the highest coefficients of determination (R²). SHAP analysis revealed that the Visible Atmospherically Resistant Index (VARI) contributed more strongly to yield-related predictions, whereas the Normalized Difference Red Edge (NDRE) showed a more consistent contribution to nutritional variables. In conclusion, these findings highlight the potential of integrating vegetation indices and machine learning models as effective tools for forage management, supporting informed decision-making in livestock production systems.
dc.description.sponsorshipThe authors thank the Instituto Nacional de Innovación Agraria (INIA) through the Investment Project with CUI N° 2472675: "Mejoramiento de los servicios de investigación y transferencia de tecnología agraria en la estación experimental agraria Baños del Inca en la localidad de Baños del Inca del distrito de Baños del Inca - provincia de Cajamarca - departamento de Cajamarca", which financed the execution of the research. The authors also thank Gian M. Monteza, Jorge Delgado and Yolmer Dávila for obtaining information for this study.
dc.formatapplication/pdf
dc.identifier.citationTafur-Culqui, J., Atalaya-Marin, N., Gómes-Fernandez, D., Taboada-Mitma, V. H., Cruz-Luis, J., Neyra, H., Anchayhua, J. Y., Quichua-Baldeon, R., Sánchez-Fuentes, T., Olano, Y. M., Barrazueta, M., Tineo, D., & Goñas, M. (2026). Prediction of biomass and nutritional quality of tropical pastures using multispectral analysis and machine learning models. Smart Agricultural Technology, 14, 102229. https://doi.org/10.1016/j.atech.2026.102229
dc.identifier.doihttps://doi.org/10.1016/j.atech.2026.102229
dc.identifier.issn2772-3755
dc.identifier.urihttp://hdl.handle.net/20.500.12955/3153
dc.language.isoeng
dc.publisherElsevier B.V.
dc.publisher.countryNL
dc.relation.ispartofurn:issn:2772-3755
dc.relation.ispartofseriesSmart Agricultural Technology
dc.rightsinfo:eu-repo/semantics/openAccess
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.sourceInstituto Nacional de Innovación Agraria
dc.source.uriRepositorio Institucional - INIA
dc.subjectCrude protein prediction
dc.subjectPredicción de proteína cruda
dc.subjectDry matter
dc.subjectMateria seca
dc.subjectExtra trees
dc.subjectRandom forest
dc.subjectBosque aleatorio
dc.subjectRemote sensing
dc.subjectTeledetección
dc.subjectUAV multispectral imagery
dc.subjectImágenes multiespectrales UAV
dc.subject.agrovocBiomasa, Biomass; Valor nutritivo, Nutritive value; Aprendizaje automático, Machine learning; Índice de vegetación, Vegetation index; Vehículo aéreos no tripulado, Unmanned aerial vehicles; Forraje, Forage
dc.subject.ocdehttps://purl.org/pe-repo/ocde/ford#4.01.00
dc.titlePrediction of biomass and nutritional quality of tropical pastures using multispectral analysis and machine learning models
dc.typeinfo:eu-repo/semantics/article

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