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Machine Learning Emulators and Empirical Models Combining Climate and Global Crop Models for Seasonal Agricultural ProductionWe present results from several connected efforts to apply machine learning methods to estimates of seasonal agricultural production anomalies around the world. First, we apply the XGBoost Random Forest method to fit emulators that mimic global crop models participating in the Agricultural Model Intercomparison and Improvement Project (AgMIP) Global Gridded Crop Model Intercomparison (GGCMI). These are the same models used in the agricultural sector simulations of the Inter-Sectoral Impacts Model Intercomparison Project (ISIMIP). These emulators use 8 climate variables split across 5 sub-seasonal representations of the growing season for each ½ degree grid cell around the world for maize, wheat, rice and soybeans. Emulators are useful for estimating conditions that have not already been simulated by GGCMI (e.g., in a seasonal prediction model) and also to diagnose model differences and capabilities. For example, emulators of the pDSSAT maize model tend to be more reliant on mean temperatures than the LPJmL model, and few models have strong responses to cold extremes.

Second, we use a similar XGBoost approach to fit empirical models for national production data for the top 20 producing countries according to the United Nations Food and Agricultural Organization (FAO). Models utilize both climate observations and the GGCM models as predictors, resulting in skillful models for many (but not all) top producing-countries. The patterns of climate and crop model features selected indicate regions and systems that are better or worse simulated by the GGCMs. For example, information in cold extreme predictors is often combined with GGCM output predictors to provide sensitivity that models may underrepresent.
Document ID
20230012472
Acquisition Source
Goddard Space Flight Center
Document Type
Presentation
Authors
Alexander Ruane
(Goddard Institute for Space Studies New York, New York, United States)
Andres Castellano
(Autonomic Integra, LLC)
Jonas Jaegermeyr
(Columbia University New York, New York, United States)
Date Acquired
August 23, 2023
Subject Category
Meteorology and Climatology
Earth Resources and Remote Sensing
Report/Patent Number
GC45C-09
Meeting Information
Meeting: AGU Fall Meeting 2022
Location: Chicago, IL
Country: US
Start Date: December 12, 2022
End Date: December 16, 2022
Sponsors: American Geophysical Union
Funding Number(s)
WBS: 509496.02.80.01.03
CONTRACT_GRANT: 80GSFC23CA041
CONTRACT_GRANT: 80NSSC20M0282
Distribution Limits
Public
Copyright
Use by or on behalf of the US Gov. Permitted.
Technical Review
Single Expert
Keywords
machine learning
seasonal agricultural production anomalies
climate models
crop models
seasonal agricultural production
XGBoost
Random Forest method
Agricultural Model Intercomparison and Improvement Project
Global Gridded Crop Model Intercomparison
Inter-Sectoral Impacts Model Intercomparison Project
maize
wheat
rice
soybeans
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