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Estimation of forage biomass in oat (Avena sativa) using agronomic variables through UAV multispectral imaging
Date Issued
2024-10-06
Author(s)
Urquizo Barrera, Julio Cesar
Ccopi Trucios, Dennis
Ortega Quispe, Kevin
Castañeda Tinco, Italo
Patricio Rosales, Solanch
Passuni Huayta, Jorge
Figueroa Venegas, Deyanira
Enriquez Pinedo, Lucia
Ore Aquino, Zoila
Pizarro Carcausto, Samuel
DOI
10.3390/rs16193720
Abstract
Accurate and timely estimation of oat biomass is crucial for the development of sustainable and efficient agricultural practices. This research focused on estimating and predicting forage oat biomass using UAV and agronomic variables. A Matrice 300 equipped with a multispectral camera was used for 14 flights, capturing 21 spectral indices per flight. Concurrently, agronomic data were collected at six stages synchronized with UAV flights. Data analysis involved correlations and Principal Component Analysis (PCA) to identify significant variables. Predictive models for forage biomass were developed using various machine learning techniques: linear regression, Random Forests (RFs), Support Vector Machines (SVMs), and Neural Networks (NNs). The Random Forest model showed the best performance, with a coefficient of determination R2 of 0.52 on the test set, followed by Support Vector Machines with an R2 of 0.50. Differences in root mean square error (RMSE) and mean absolute error (MAE) among the models highlighted variations in prediction accuracy. This study underscores the effectiveness of photogrammetry, UAV, and machine learning in estimating forage biomass, demonstrating that the proposed approach can provide relatively accurate estimations for this purpose.
Project(s)
Creación del servicio de agricultura de precisión en los departamentos de Lambayeque, Huancavelica, Ucayali y San Martín 4 departamentos
Funding(s)
Presupuesto de programación multianual de inversiones (PMI)