Application of Machine Learning Methodologies for Predicting Corn Economic Optimal Nitrogen Rate

被引:50
|
作者
Qin, Zhisheng [1 ]
Myers, D. Brenton [1 ]
Ransom, Curtis J. [2 ]
Kitchen, Newell R. [3 ]
Liang, Sang-Zi [1 ]
Camberato, James J. [4 ]
Carter, Paul R. [1 ]
Ferguson, Richard B. [5 ]
Fernandez, Fabian G. [6 ]
Franzen, David W. [7 ]
Laboski, Carrie A. M. [8 ]
Malone, Brad D. [1 ]
Nafziger, Emerson D. [9 ]
Sawyer, John E. [10 ]
Shanahan, John F. [11 ]
机构
[1] Dupont Pioneer, 8325 NW 62nd Ave, Johnston, IA 50131 USA
[2] Univ Missouri, 269 Agr Engn Bldg, Columbia, MO 65211 USA
[3] USDA ARS, Cropping Syst & Water Qual Res Unit, 243 Agr Engn Bldg, Columbia, MO 65211 USA
[4] Purdue Univ, Lilly 3-365, W Lafayette, IN 47907 USA
[5] Univ Nebraska, Keim 367, Lincoln, NE 68583 USA
[6] Univ Minnesota, 1991 Upper Buford Circle, St Paul, MN 55108 USA
[7] North Dakota State Univ, POB 6050, Fargo, ND 58108 USA
[8] Univ Wisconsin Madison, 1525 Observ Dr, Madison, WI 53706 USA
[9] Univ Illinois, W-301 Turner Hall,1102 S Goodwin, Urbana, IL 61801 USA
[10] Iowa State Univ, 3208 Agron Hall, Ames, IA 50011 USA
[11] Fortigen, 6807 Ridge Rd, Lincoln, NE 68512 USA
关键词
FERTILIZER RECOMMENDATIONS; OPTIMIZATION ALGORITHM; USE EFFICIENCY; SOIL; YIELD; MANAGEMENT; TEXTURE; MAIZE;
D O I
10.2134/agronj2018.03.0222
中图分类号
S3 [农学(农艺学)];
学科分类号
0901 ;
摘要
Determination of in-season N requirement for corn (Zea mays L.) is challenging due to interactions of genotype, environment, and management. Machine learning (ML), with its predictive power to tackle complex systems, may solve this barrier in the development of locally based N recommendations. The objective of this study was to explore application of ML methodologies to predict economic optimum nitrogen rate (EONR) for corn using data from 47 experiments across the US Corn Belt. Two features, a water table adjusted available water capacity (AWC(wt)) and a ratio of in-season rainfall to AWC(wt) (RAWC(wt)), were created to capture the impact of soil hydrology on N dynamics. Four ML models-linear regression (LR), ridge regression (RR), least absolute shrinkage and selection operator (LASSO) regression, and gradient boost regression trees (GBRT)-were assessed and validated using "leave-one-location-out" (LOLO) and "leave-one-year-out" (LOYO) approaches. Generally, RR outperformed other models in predicting both at planting and split EONR times. Among the 47 tested sites, for 33 sites the predicted split EONR using RR fell within the 95% confidence interval, suggesting the chance of using the RR model to make an acceptable prediction of split EONR is similar to 70%. When RR was used to test split EONR prediction with input weather features surrogated with 10 yr of historical weather data, the model demonstrated robustness (MAE, 33.6 kg ha(-1); R-2 = 0.46). Incorporating mechanistically derived hydrological features significantly enhanced the ability of the ML procedures to model EONR. Improvement in estimating in-season soil hydrological status seems essential for success in modeling N demand.
引用
收藏
页码:2596 / 2607
页数:12
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