학술논문

Peanut yield prediction with UAV multispectral imagery using a cooperative machine learning approach
Document Type
article
Source
Electronic Research Archive, Vol 31, Iss 6, Pp 3343-3361 (2023)
Subject
unmanned aerial vehicle
multispectral imagery
machine learning
simulated annealing
peanut yield prediction
random forest
support vector machine
xgboost
Mathematics
QA1-939
Applied mathematics. Quantitative methods
T57-57.97
Language
English
ISSN
2688-1594
Abstract
The unmanned aerial vehicle (UAV), as a remote sensing platform, has attracted many researchers in precision agriculture because of its operational flexibility and capability of producing high spatial and temporal resolution images of agricultural fields. This study proposed machine learning (ML) models and their ensembles for peanut yield prediction using UAV multispectral data. We utilized five bands (red, green, blue, near-infra-red (NIR) and red-edge) multispectral images acquired at various growth stages of peanuts using UAV. The correlation between spectral bands and yield was analyzed for each growth stage, which showed that the maturity stages had a significant correlation between peanut yield and spectral bands: red, green, NIR and red edge (REDE). Using these four bands spectral data, we assessed the potential for peanut yield prediction using multiple linear regression and seven non-linear ML models whose hyperparameters were optimized using simulated annealing (SA). The best three ML models, random forest (RF), support vector machine (SVM) and XGBoost, were then selected to construct a cooperative yield prediction framework with both the best ML model and the ensemble scheme from the best three as comparable recommendations to the farmers.