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Yield prediction with machine learning algorithms and satellite images
Author(s) -
Sharifi Alireza
Publication year - 2021
Publication title -
journal of the science of food and agriculture
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.782
H-Index - 142
eISSN - 1097-0010
pISSN - 0022-5142
DOI - 10.1002/jsfa.10696
Subject(s) - yield (engineering) , machine learning , algorithm , regression , predictive modelling , mean absolute percentage error , computer science , mean squared error , artificial intelligence , satellite , regression analysis , statistics , mathematics , engineering , artificial neural network , materials science , metallurgy , aerospace engineering
BACKGROUND Barley is one of the strategic agricultural products available in the world, and yield prediction is important for ensuring food security. One way of estimating a product is to use remote sensing data in conjunction with field data and meteorological data. One of the main issues surrounding this comprises the use of machine learning techniques to create a multi‐resource data‐based estimation model. Many studies have been conducted on barley yield prediction from planting to harvest. Still, the effect of different time intervals on yield prediction has not been investigated. Furthermore, the effect of different periods on yield prediction has not been investigated. RESULTS In the present study, the whole growth period was divided into three parts. Using one of the major barley production areas in Iran, the performance of the proposed model was evaluated. In the first step, a model for integrating field data, remote sensing data and meteorological data was prepared. The results obtained show that, among the four machine learning methods implemented, the gaussian process regression algorithm performed best and estimated yield with r 2 = 0.84, root mean square error = 737 kg ha −1 and mean absolute = 650 kg ha −1 , 1 month before harvest. CONCLUSION It was found that the estimation results change depending on different agricultural zones and temporal training settings. The findings of the present study provide a powerful potential tool for the yield prediction of barley using multi‐source data and machine learning. © 2020 Society of Chemical Industry