Mapping sub-field maize yields in Nebraska, USA by combining remote sensing imagery, crop simulation models, and machine learning

被引:0
|
作者
Graham R. Jeffries
Timothy S. Griffin
David H. Fleisher
Elena N. Naumova
Magaly Koch
Brian D. Wardlow
机构
[1] Tufts University,Friedman School of Nutrition Science and Policy
[2] Adaptive Cropping Systems Lab.,Center for Remote Sensing
[3] Boston University,undefined
[4] Center for Advanced Land Mgmt. Info. Tech.,undefined
来源
Precision Agriculture | 2020年 / 21卷
关键词
Remote sensing; Crop simulation; Yield mapping; Machine learning; Yield monitor;
D O I
暂无
中图分类号
学科分类号
摘要
Crop yield maps are valuable for many applications in precision agriculture, but are often inaccessible to growers and researchers wishing to better understand yield determinants and improve site-specific management strategies. A method for mapping sub-field crop yields from remote sensing imagery could increase the availability of crop yield maps. A variation of the scalable crop yield mapping approach (SCYM, Lobell et al. in Remote Sensing of Environment 164:324–333, 2015) was developed and tested for estimating sub-field maize (Zea mays L.) yields at 10–30 m without the use of site-specific input data. The method was validated using harvester yield monitor records for 21 site-years for irrigated and rainfed fields in eastern Nebraska, USA. Prediction error ranged greatly across site-years, with relative RMSE scores of 10.8 to 38.5%, and R2 values of 0.003 to 0.37. Significant proportional bias was detected in the predictions, but could be corrected with a small amount of ground truth data. Crop yield prediction accuracies without calibration were suitable for some precision applications such as mapping relative yields and delineating management zones, but model improvements or calibration datasets are needed for applications requiring absolute yield estimates.
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页码:678 / 694
页数:16
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