An Artificial Intelligence Approach to Prediction of Corn Yields under Extreme Weather Conditions Using Satellite and Meteorological Data

This paper describes the development of an optimized corn yield prediction model under extreme weather conditions for the Midwestern United States (US). We tested six different artificial intelligence (AI) models using satellite images and meteorological data for the dominant growth period. To exami...

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Veröffentlicht in:Applied sciences 2020-06, Vol.10 (11), p.3785, Article 3785
Hauptverfasser: Kim, Nari, Na, Sang-Il, Park, Chan-Won, Huh, Morang, Oh, Jaiho, Ha, Kyung-Ja, Cho, Jaeil, Lee, Yang-Won
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Sprache:eng
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Zusammenfassung:This paper describes the development of an optimized corn yield prediction model under extreme weather conditions for the Midwestern United States (US). We tested six different artificial intelligence (AI) models using satellite images and meteorological data for the dominant growth period. To examine the effects of extreme weather events, we defined the drought and heatwave by considering the characteristics of corn growth and selected the cases for sensitivity tests from a historical database. In particular, we conducted an optimization for the hyperparameters of the deep neural network (DNN) model to ensure the best configuration for accuracy improvement. The result for drought cases showed that our DNN model was approximately 51-98% more accurate than the other five AI models in terms of root mean square error (RMSE). For the heatwave cases, our DNN model showed approximately 30-77% better accuracy in terms of RMSE. The correlation coefficient was 0.954 for drought cases and 0.887-0.914 for heatwave cases. Moreover, the accuracy of our DNN model was very stable, despite the increases in the duration of the heatwave. It indicates that the optimized DNN model can provide robust predictions for corn yield under conditions of extreme weather and can be extended to other prediction models for various crops in future work.
ISSN:2076-3417
2076-3417
DOI:10.3390/app10113785