TL;DR
This paper introduces a CNN-RNN deep learning framework for crop yield prediction that outperforms traditional methods by effectively capturing environmental and management factors without needing genotype data.
Contribution
The novel CNN-RNN model captures temporal dependencies and generalizes well to untested environments, advancing crop yield prediction techniques.
Findings
Achieved 8-9% RMSE of average yields, outperforming other methods.
Demonstrated ability to predict yields without genotype data.
Revealed key environmental factors influencing crop yields.
Abstract
Crop yield prediction is extremely challenging due to its dependence on multiple factors such as crop genotype, environmental factors, management practices, and their interactions. This paper presents a deep learning framework using convolutional neural networks (CNN) and recurrent neural networks (RNN) for crop yield prediction based on environmental data and management practices. The proposed CNN-RNN model, along with other popular methods such as random forest (RF), deep fully-connected neural networks (DFNN), and LASSO, was used to forecast corn and soybean yield across the entire Corn Belt (including 13 states) in the United States for years 2016, 2017, and 2018 using historical data. The new model achieved a root-mean-square-error (RMSE) 9% and 8% of their respective average yields, substantially outperforming all other methods that were tested. The CNN-RNN have three salient…
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