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A data-driven crop model for maize yield prediction

Agriculture

A data-driven crop model for maize yield prediction

Y. Chang, J. Latham, et al.

This innovative research, conducted by Yanbin Chang, Jeremy Latham, Mark Licht, and Lizhi Wang, presents a novel data-driven crop model that merges process-based and data-driven methodologies to accurately predict crop yields. By analyzing extensive US Corn Belt data, this model showcases its potential in enhancing food security and aiding farmers in selecting the best seeds for their crops.

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~3 min • Beginner • English
Abstract
Accurate estimation of crop yield predictions is of great importance for food security under the impact of climate change. We propose a data-driven crop model that combines the knowledge advantage of process-based modeling and the computational advantage of data-driven modeling. The proposed model tracks the daily biomass accumulation process during the maize growing season and uses daily produced biomass to estimate the final grain yield. Computational studies using crop yield, field location, genotype and corresponding environmental data were conducted in the US Corn Belt region from 1981 to 2020. The results suggest that the proposed model can achieve an accurate prediction performance with a 7.16% relative root-mean-square-error of average yield in 2020 and provide scientifically explainable results. The model also demonstrates its ability to detect and separate interactions between genotypic parameters and environmental variables. Additionally, this study demonstrates the potential value of the proposed model in helping farmers achieve higher yields by optimizing seed selection.
Publisher
Communications Biology
Published On
Apr 21, 2023
Authors
Yanbin Chang, Jeremy Latham, Mark Licht, Lizhi Wang
Tags
crop yield prediction
data-driven modeling
biomass accumulation
food security
genotype-environment interactions
US Corn Belt
seed optimization
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