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High-resolution global maps of yield potential with local relevance for targeted crop production improvement.

Fernando Aramburu-MerlosMarloes P van LoonMartin K van IttersumPatricio Grassini
Published in: Nature food (2024)
Identifying untapped opportunities for crop production improvement in current cropland is crucial to guide food availability interventions. Here we integrated an agronomically robust bottom-up approach with machine learning to generate global maps of yield potential of high resolution (ca. 1 km 2 at the Equator) and accuracy for maize, wheat and rice. These maps serve as a robust reference to benchmark farmers' yields in the context of current cropping systems and water regimes and can help to identify areas with large room to increase crop yields.
Keyphrases
  • high resolution
  • climate change
  • machine learning
  • human health
  • mass spectrometry
  • cancer therapy
  • risk assessment
  • tandem mass spectrometry
  • artificial intelligence
  • deep learning
  • high speed