Corn Yield Prediction with Ensemble CNN-DNN
Mohsen Shahhosseini, Guiping Hu, Saeed Khaki, Sotirios V. Archontoulis

TL;DR
This paper presents novel ensemble CNN-DNN models that significantly improve county-level corn yield predictions across the US Corn Belt, outperforming traditional models and capturing most yield variation.
Contribution
The study introduces and evaluates homogenous and heterogeneous CNN-DNN ensemble models with advanced ensemble methods for crop yield prediction.
Findings
Ensembles outperform individual ML models in yield prediction.
Homogenous ensembles achieve highest accuracy among tested models.
Model explains about 77% of yield variation with 8.5% error.
Abstract
We investigate the predictive performance of two novel CNN-DNN machine learning ensemble models in predicting county-level corn yields across the US Corn Belt (12 states). The developed data set is a combination of management, environment, and historical corn yields from 1980-2019. Two scenarios for ensemble creation are considered: homogenous and heterogeneous ensembles. In homogenous ensembles, the base CNN-DNN models are all the same, but they are generated with a bagging procedure to ensure they exhibit a certain level of diversity. Heterogenous ensembles are created from different base CNN-DNN models which share the same architecture but have different levels of depth. Three types of ensemble creation methods were used to create several ensembles for either of the scenarios: Basic Ensemble Method (BEM), Generalized Ensemble Method (GEM), and stacked generalized ensembles. Results…
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