Department of Industrial and Manufacturing Systems Engineering, Iowa State University, 2529 Union Drive, Ames, 50011, IA, USA.
Department of Agronomy, Iowa State University, 716 Farm House Lane, Ames, 50011, IA, USA.
Commun Biol. 2023 Apr 21;6(1):439. doi: 10.1038/s42003-023-04833-y.
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.
准确估计作物产量预测对于气候变化影响下的粮食安全至关重要。我们提出了一种数据驱动的作物模型,该模型结合了基于过程建模的知识优势和数据驱动建模的计算优势。所提出的模型跟踪玉米生长季节期间的每日生物量积累过程,并使用每日产生的生物量来估计最终的谷物产量。使用 1981 年至 2020 年美国玉米带地区的作物产量、田间位置、基因型和相应环境数据进行了计算研究。结果表明,所提出的模型可以实现准确的预测性能,在 2020 年平均产量的相对均方根误差为 7.16%,并提供科学可解释的结果。该模型还展示了其检测和分离基因型参数与环境变量之间相互作用的能力。此外,本研究还展示了该模型通过优化种子选择帮助农民实现更高产量的潜在价值。