Agronomic management response in maize (Zea mays L.) production across three agroecological zones of Kenya

Author:

Kipkulei Harison Kiplagat123ORCID,Bellingrath‐Kimura Sonoko Dorothea12ORCID,Lana Marcos4ORCID,Ghazaryan Gohar15ORCID,Baatz Roland1ORCID,Matavel Custodio67ORCID,Boitt Mark8ORCID,Chisanga Charles B.9ORCID,Rotich Brian10ORCID,Moreira Rodrigo Martins11ORCID,Sieber Stefan12ORCID

Affiliation:

1. Leibniz Centre for Agricultural Landscape Research (ZALF) Müncheberg Germany

2. Faculty of Life Sciences Humboldt Universität zu Berlin Berlin Germany

3. Department of Geomatic Engineering and Geospatial Information Systems Jomo Kenyatta University of Agriculture and Technology Nairobi Kenya

4. Department of Crop Production Ecology Swedish University of Agricultural Sciences Uppsala Sweden

5. Geography Department Humboldt‐Universität zu Berlin Unter den Linden 6, 10099 Berlin Germany

6. Leibniz Institute for Agricultural Engineering and Bioeconomy (ATB) Potsdam Germany

7. Faculty of Agrarian Sciences Universidade Lúrio (Unilúrio) Niassa Mozambique

8. Institute of Geomatics, GIS & Remote Sensing (IGGReS) Dedan Kimathi University of Technology Nyeri Kenya

9. Department of Plant and Environmental Sciences, School of Natural Resources Copperbelt University Kitwe Zambia

10. Institute of Environmental Sciences Hungarian University of Agriculture and Life Sciences Gödöllő Hungary

11. Universidade Federal de Rondônia Porto Velho Rondônia Brazil

Abstract

AbstractMaize (Zea mays L.) productivity in Kenya has witnessed a decline attributed to the effects of climate change and biophysical constraints. The assessment of agronomic practices across agroecological zones (AEZs) is limited by inadequate data quality, hindering a precise evaluation of maize yield on a large scale. In this study, we employed the DSSAT‐CERES‐Maize crop model (where CERES is Crop Environment Resource Synthesis and DSSAT is Decision Support System for Agrotechnology Transfer) to investigate the impacts of different agronomic practices on maize yield across different AEZs in two counties of Kenya. The model was calibrated and evaluated with observed grain yield, biomass, leaf area index, phenology, and soil water content from 2‐year experiments. Remote sensing (RS) images derived from the Sentinel‐2 satellite were integrated to delineate maize areas, and the resulting information was merged with DSSAT‐CERES‐Maize yield simulations. This facilitated a comprehensive quantification of various agronomic measures at pixel scales. Evaluation of agronomic measures revealed that sowing dates and cultivar types significantly influenced maize yield across the AEZs. Notably, AEZ II and AEZ III exhibited elevated yields when implementing combined practices of early sowing and cultivar H614. The impacts of optimal management practices varied across the AEZs, resulting in yield increases of 81, 115, and 202 kg ha−1 in AEZ I, AEZ II, and AEZ III, respectively. This study underscores the potential of the CERES‐Maize model and high‐resolution RS data in estimating production at larger scales. Furthermore, this integrated approach holds promise for supporting agricultural decision‐making and designing optimal strategies to enhance productivity while accounting for site‐specific conditions.

Funder

Deutscher Akademischer Austauschdienst

Publisher

Wiley

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