4.6 Article

Random Forests for Global and Regional Crop Yield Predictions

期刊

PLOS ONE
卷 11, 期 6, 页码 -

出版社

PUBLIC LIBRARY SCIENCE
DOI: 10.1371/journal.pone.0156571

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资金

  1. Cooperative Research Program for Agricultural Science and Technology Development, Rural Development Administration, Republic of Korea [PJ01000707]
  2. University of Washington [58-1265-1-074]
  3. USDA-ARS [58-1265-1-074]
  4. USDA-ARS Headquarters Postdoctoral Research Associate Program
  5. USDA-NIFA-AFRI [2011-68004-30057]
  6. USDA AFRI fellowship [2016-67012-25208]
  7. NSF Hydrological Sciences grant [1521210]
  8. Packard Foundation
  9. NERC [NE/M021327/1] Funding Source: UKRI
  10. Natural Environment Research Council [NE/M021327/1] Funding Source: researchfish
  11. Directorate For Geosciences
  12. Division Of Earth Sciences [1521210] Funding Source: National Science Foundation
  13. Directorate For Geosciences
  14. ICER [1540195] Funding Source: National Science Foundation

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Accurate predictions of crop yield are critical for developing effective agricultural and food policies at the regional and global scales. We evaluated a machine-learning method, Random Forests (RF), for its ability to predict crop yield responses to climate and biophysical variables at global and regional scales in wheat, maize, and potato in comparison with multiple linear regressions (MLR) serving as a benchmark. We used crop yield data from various sources and regions for model training and testing: 1) gridded global wheat grain yield, 2) maize grain yield from US counties over thirty years, and 3) potato tuber and maize silage yield from the northeastern seaboard region. RF was found highly capable of predicting crop yields and outperformed MLR benchmarks in all performance statistics that were compared. For example, the root mean square errors (RMSE) ranged between 6 and 14% of the average observed yield with RF models in all test cases whereas these values ranged from 14% to 49% for MLR models. Our results show that RF is an effective and versatile machine-learning method for crop yield predictions at regional and global scales for its high accuracy and precision, ease of use, and utility in data analysis. RF may result in a loss of accuracy when predicting the extreme ends or responses beyond the boundaries of the training data.

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