Crop Yield Prediction Using Deep Neural Networks

02/07/2019
by   Saeed Khaki, et al.
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Crop yield is a highly complex trait determined by multiple factors such as genotype, environment, and their interactions. Accurate yield prediction requires fundamental understanding of the functional relationship between yield and these interactive factors, and to reveal such relationship requires both comprehensive datasets and powerful algorithms. In the 2018 Syngenta Crop Challenge, Syngenta released several large datasets that recorded the genotype and yield performances of 2,267 maize hybrids planted in 2,247 locations between 2008 and 2016 and asked participants to predict the yield performance in 2017. As one of the winning teams, we designed a deep neural network (DNN) approach that took advantage of state-of-the-art modeling and solution techniques. Our model was found to have a superior prediction accuracy, with a root-mean-square-error (RMSE) being 12 standard deviation for the validation dataset using predicted weather data. With perfect weather data, the RMSE would be reduced to 11 yield and 46 that this model significantly outperformed other popular methods such as Lasso, shallow neural networks (SNN), and regression tree (RT).

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