A Comparison Between Major Artificial Intelligence Models for Crop Yield Prediction: Case Study of the Midwestern United States, 2006-2015

  • Kim, Nan
  • Ha, Kyung-Ja
  • Park, No-Wook
  • Cho, Jaeil
  • Hong, Sungwook
  • 외 1명
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초록

This paper compares different artificial intelligence (AI) models in order to develop the best crop yield prediction model for the Midwestern United States (US). Through experiments to examine the effects of phenology using three different periods, we selected the July-August (JA) database as the best months to predict corn and soybean yields. Six different AI models for crop yield prediction are tested in this research. Then, a comprehensive and objective comparison is conducted between the AI models. Particularly for the deep neural network (DNN) model, we performed an optimization process to ensure the best configurations for the layer structure, cost function, optimizer, activation function, and drop-out ratio. In terms of mean absolute error (MAE), our DNN model with the JA database was approximately 21-33% and 17-22% more accurate for corn and soybean yields, respectively, than the other five AI models. This indicates that corn and soybean yields for a given year can be forecasted in advance, at the beginning of September, approximately a month or more ahead of harvesting time. A combination of the optimized DNN model and spatial statistical methods should be investigated in future work, to mitigate partly clustered errors in some regions.

키워드

crop yieldartificial intelligencesatellite productmeteorological datasetNEURAL-NETWORKSWINTER-WHEATCORNCLASSIFICATIONAVHRRINDEX
제목
A Comparison Between Major Artificial Intelligence Models for Crop Yield Prediction: Case Study of the Midwestern United States, 2006-2015
저자
Kim, NanHa, Kyung-JaPark, No-WookCho, JaeilHong, SungwookLee, Yang-Won
DOI
10.3390/ijgi8050240
발행일
2019-05
유형
Article
저널명
ISPRS International Journal of Geo-Information
8
5