NASA Logo

NTRS

NTRS - NASA Technical Reports Server

Back to Results
Evaluation of a Regional Crop Model Implementation for Sub-National Yield Assessments in KenyaCONTEXT: Cropping system models can be used to both assess regional food security and to monitor and predict agricultural drought. Agriculture in Kenya is extremely important to both the economy and food security of the country.

OBJECTIVE: This study evaluated a regional implementation of a widely used crop model, the Decision Support System for Agrotechnology Transfer (DSSAT), within a coupled modeling framework, the Regional Hydrologic Extremes Assessment System (RHEAS), over Kenya. The goal of this study was to assess the ability of RHEAS to simulate the annual variability of maize yields at the county level and evaluate the uncertainty inherent in the model and inputs.

METHODS: The RHEAS system implements a stochastic ensemble approach to account for field scale variabilities in crop management practices and underlying soil and weather conditions. Satellite-derived datasets were used to evaluate the land surface component of the system and seasonally disaggregated yield for 5 years was used to assess the performance of the cropping system model.

RESULTS AND CONCLUSIONS: The median correlation between RHEAS and satellite-derived soil moisture and evapotranspiration estimates were 0.78, and 0.51, respectively, indicating that the model is able to capture the key drivers of the hydrological budget. Overall, RHEAS simulated yearly yield variations with a median correlation of 0.7 with reported yields, with the best performance in the short rains season. However, across both seasons, the RHEAS model was positively biased on the order of ~1.6 MT/ha. The overall median unbiased RMSE was 0.66 MT/ha. The RHEAS system shows skill at simulating extreme departures in anomalies, and a majority of the time (62.5%) the reported yields fall within the interquartile range of the simulations.

SIGNIFICANCE: One of the most important areas of improvement for the next generation of agricultural data and models is to better understand and communicate the inherent uncertainties. This is especially critical in data-limited regions. Here we present a modeling system and its implementation that begins to address these concerns. We demonstrate the ability to simulate broad trends in yields at the county level for sub-annual yields with skills that commensurate previous national/annual level studies.
Document ID
20230018252
Acquisition Source
Marshall Space Flight Center
Document Type
Reprint (Version printed in journal)
Authors
W Lee Ellenburg ORCID
(University of Alabama in Huntsville Huntsville, United States)
Sara E Miller
(University of Alabama in Huntsville Huntsville, United States)
Vikalp Mishra ORCID
(University of Alabama in Huntsville Huntsville, United States)
Lilian Ndungu ORCID
(University of Nairobi Nairobi, Nairobi, Kenya)
Emily Adams
(University of Alabama in Huntsville Huntsville, United States)
Narendra Das ORCID
(Michigan State University East Lansing, United States)
Konstantinos M Andreadis ORCID
(University of Massachusetts Amherst Amherst Center, United States)
Ashutosh Limaye
(Marshall Space Flight Center Redstone Arsenal, United States)
Date Acquired
December 14, 2023
Publication Date
December 9, 2023
Publication Information
Publication: Agricultural Systems
Publisher: Elsevier
Volume: 214
Issue Publication Date: February 1, 2024
ISSN: 0308-521X
Subject Category
Earth Resources and Remote Sensing
Funding Number(s)
WBS: 970315.02.01.01.74
CONTRACT_GRANT: NNM11AA01A
Distribution Limits
Public
Copyright
Portions of document may include copyright protected material.
Technical Review
Single Expert
Keywords
Crop model
Kenya
Maize
Land surface model
Yield
Evaluation
No Preview Available