Objeto de conferencia
Using Machine-Learning Models for Field-Scale Crop Yield and Condition Modeling in Argentina
Registro en:
issn:2525-0949
Autor
Sahajpal, Ritvik
Fontana, Lucas
Lafluf, Pedro
Leale, Guillermo
Puricelli, Estefania
O’Neill, Dan
Hosseini, Mehdi
Varela, Mauricio
Reshef, Inbal
Institución
Resumen
Accurately determining crop growth progress and crop yields at field-scale can help farmers estimate their net profit, enable insurance companies to ascertain payouts, and help in ensuring food security. At field scales, the troika of management, soil and weather combine to impact crop growth progress, and this progress can be monitored in-season using satellite data. Here, we use satellite derived metrics, from both optical and radar satellites, and machine learning models to model field-scale crop yields for over 3,000 Soybean and Wheat in Argentina. We compare several machine learning models and our results show the promise of combining mixed effect models with non-parametric models in improving yield modeling capabilities. We also demonstrate the utility of specific satellite derived metrics and extracted features in improving model performance and show that our approach can explain greater than 70% of the variation in yields while remaining generalizable across crops and agro-ecological zones. Sociedad Argentina de Informática e Investigación Operativa