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Modifying the University of Missouri Corn Canopy Sensor Algorithm Using Soil and Weather Information
1G. Bean, 2N. R. Kitchen, 3J. Camberato, 4P. Carter, 5R. B. Ferguson, 6F. G. Fernandez, 7D. W. Franzen, 8C. Laboski, 1R. J. Miles, 9E. Nafziger, 1C. Ransom, 10J. Sawyer, 1P. Scharf, 11J. Shanahan
1. University of Missouri
2. Advisor
3. Purdue University Lafayette
4. DuPont Pioneer-Johnston
5. University of Nebraska-Lincoln
6. University of Minnesota
7. North Dakota State University
8. University of Wisconsin Madison
9. University of Illinois
10. University of Iowa
11. PG Farms

Corn production across the U.S. Corn belt can be often limited by the loss of nitrogen (N) due to leaching, volatilization and denitrification. The use of canopy sensors for making in-season N fertilizer applications has been proven effective in matching plant N requirements with periods of rapid N uptake (V7-V11), reducing the amount of N lost to these processes. However, N recommendation algorithms used in conjunction with canopy sensor measurements have not proven accurate in making N recommendations for many fields of the U.S. Corn Belt. The objective of this research was to determine if soil and weather information could be used to make the University of Missouri canopy reflectance sensing algorithm more accurate. Nitrogen response trials were conducted across eight states over two growing seasons, totaling 32 sites (four per state) with soils ranging in productivity. Reflectance measurements at ±V9 were used with the University of Missouri canopy sensor algorithm to calculate an in-season N fertilizer recommendation. This recommendation was related to the economic optimal N rate (EONR). The University of Missouri algorithm was only mediocre in predicting EONR, averaging within 74 kg N ha-1 of EONR when target corn received 45 kg N ha-1 at-planting. However, when this algorithm was adjusted using weather and either measured or USDA SSURGO soil properties the suggested N fertilizer recommendation improved. The error as determined by the root mean square error (RMSE), for corn receiving 45 kg N ha-1 at-planting the RMSE was 74 kg N ha-1 without soil and weather and 52 kg N ha-1  with the soil and weather adjustment. This suggests the incorporation of soil and weather information into other canopy sensor algorithms may enhance their accuracy at predicting site-specific EONR.

Keyword: Missouri, Canopy Sensor, Corn, Nitrogen, Algorithm, Adjustment
G. Bean    N. R. Kitchen    J. Camberato    P. Carter    R. B. Ferguson    F. G. Fernandez    D. W. Franzen    C. Laboski    R. J. Miles    E. Nafziger    C. Ransom    J. Sawyer    P. Scharf    J. Shanahan    Precision Nutrient Management    Oral    2016