A Machine Learning Model for Early Prediction of Crop Yield, Nested in a Web Application in the Cloud: A Case Study in an Olive Grove in Southern Spain
Metadatos
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MDPI
Materia
Machine learning Regression algorithms Web application Early prediction of crop yield
Date
2022-08-31Referencia bibliográfica
Cubillas, J.J... [et al.]. A Machine Learning Model for Early Prediction of Crop Yield, Nested in aWeb Application in the Cloud: A Case Study in an Olive Grove in Southern Spain. Agriculture 2022, 12, 1345. [https://doi.org/10.3390/agriculture12091345]
Patrocinador
European Commission PYC20-RE-005-UJA 1381202-GEU IEG-2021 y PREDIC_I-GOPO-JA-20-0006; Instituto de Estudios Gienneses; Junta de Andalucia; Ministry for Ecological Transition and the Demographic Challenge, Spanish Government (AEMET, Agencia Estatal de Meteorologia)Résumé
Predictive systems are a crucial tool in management and decision-making in any productive
sector. In the case of agriculture, it is especially interesting to have advance information on the
profitability of a farm. In this sense, depending on the time of the year when this information is
available, important decisions can be made that affect the economic balance of the farm. The aim of
this study is to develop an effective model for predicting crop yields in advance that is accessible and
easy to use by the farmer or farm manager from a web-based application. In this case, an olive orchard
in the Andalusia region of southern Spain was used. The model was estimated using spatio-temporal
training data, such as yield data from eight consecutive years, and more than twenty meteorological
parameters data, automatically charged from public web services, belonging to a weather station
located near the sample farm. The workflow requires selecting the parameters that influence the crop
prediction and discarding those that introduce noise into the model. The main contribution of this
research is the early prediction of crop yield with absolute errors better than 20%, which is crucial for
making decisions on tillage investments and crop marketing.