Abstract
Background: Paddy is one of the crops with the largest production worldwide, after corn and wheat. In Indonesia, paddy crops play a role as one of the main boosters of national economic growth based on their contribution to Indonesia's gross domestic product (GDP). Therefore, it is imperative to do research aimed at predicting the yield of paddy crops. Methods: This research exploits the technology of remote sensing and machine learning methods (i.e. Gradient Boosting Regressor) to predict the yield of lowland paddy crops. Remote sensing with a Landsat 8 satellite was used to obtain the input data in the form of the vegetation index (i.e. NDVI) value, surface temperature, and total pixels of the observed area. Afterward, the input data was arranged into training data by combining paddy yield data and the paddy harvest period. Results: The obtained training data was modelled to predict the yield of paddy crops using a Gradient Boosting Regressor. The results obtained from experiments conducted in Bandung, Indonesia, showed the scenario with the best parameter combination is an estimator of 2000, a learning rate of 0.001, minimum samples split of 2, and a maximum depth of 4, which has RMSE of 9766.72. Conclusions: This research succeeded in designing a computational model to predict the yield of lowland paddy crops by involving remote sensing and Gradient Boosting Regressor.
Subject
General Pharmacology, Toxicology and Pharmaceutics,General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine
Cited by
3 articles.
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