Integrating APSIM model with machine learning to predict wheat yield spatial distribution

被引:5
|
作者
Kheir, Ahmed M. S. [1 ,2 ,3 ]
Mkuhlani, Siyabusa [4 ]
Mugo, Jane W. [4 ,5 ]
Elnashar, Abdelrazek [6 ,7 ]
Nangia, Vinay [8 ]
Devare, Medha [4 ]
Govind, Ajit [1 ]
机构
[1] Int Ctr Agr Res Dry Areas ICARDA, Maadi 11728, Egypt
[2] Julius Kuhn Inst JKI, Inst Strategies & Technol Assessment, Fed Res Ctr Cultivated Plants, Kleinmachnow, Germany
[3] Agr Res Ctr, Soils Water & Environm Res Inst, Giza, Egypt
[4] ICIPE, Int Inst Trop Agr IITA, Nairobi, Kenya
[5] Univ Nairobi, Dept Earth & Climate Sci, Nairobi, Kenya
[6] Univ Kassel, Fac Organ Agr Sci, Sect Soil Sci, Witzenhausen, Germany
[7] Cairo Univ, Fac African Postgrad Studies, Dept Nat Resources, Giza, Egypt
[8] Int Ctr Agr Res Dry Areas ICARDA, Rabat, Morocco
关键词
GROWTH; CALIBRATION; GENERATION; NITROGEN;
D O I
10.1002/agj2.21470
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Traditional simulation models are often point based; thus, more research is needed to emphasize spatial simulation, providing decision-makers with fast recommendations. Combining machine learning algorithms with spatial process-based models could be considered an appropriate solution. We created a spatial model in R (APSIMx_R) to generate fine-resolution data from coarse-resolution data, which is typically available at the regional level. The APSIM crop model outputs were then deployed to train and test the artificial neural network, creating a hybrid modeling approach for robust spatial simulations. The APSIMx_R package facilitates preparing the required model inputs, executes the prediction, processes, and analyzes the APSIM crop model outputs. This note demonstrates the use of a new approach for creating reproducible crop modeling workflows with the spatial APSIM next-generation model and machine learning algorithms. The tool was deployed for spatial and temporal simulation of potential wheat yield under different nitrogen rates and various wheat cultivars. The spatial APSIMx_R was validated by comparing the simulated yield at 100 kg N ha-1 to the analogues' actual yield at the same grid points, which showed good agreement (d = 0.89) between the spatially predicted and actual yield. The hybrid approach increased such precision, resulting in higher agreement (d = 0.95) with actual yield. When the interaction between cultivars and nitrogen levels was considered, it was found that the novel cultivar Sakha95 is nitrogen voracious, exhibiting a larger drop in yield (65%) under minimal nitrogen treatment (0 kg N ha-1) relative to the potential yield. Crop models are frequently point based, while developing spatial models is required.We developed a spatial Agricultural Production System Simulation model in R to generate fine-resolution data.The spatial model-based R was integrated with an artificial neural network, creating a hybrid approach.The developed approach is used to determine the yield heterogeneity at scale.The hybrid approach's simulated yield correlated positively with farmer yield.
引用
收藏
页码:3188 / 3196
页数:9
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