Submitted:
17 December 2025
Posted:
18 December 2025
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Abstract
Climate change poses increasing risks to global food security, with maize production in vulnerable regions such as Nakuru County, Kenya, and Northwest China expected to be significantly affected. This study assessed the impacts of future climate conditions on maize growth and yield in the 2030s (2021–2040) and 2050s (2041–2060) under RCP 4.5 and RCP 8.5, relative to a 1986–2005 baseline. The CERES-Maize model was used to simulate the effects of projected changes in temperature, precipitation, and solar radiation, and to evaluate the effectiveness of key adaptation strategies. Results showed that climate change is likely to shorten maize growing durations by up to 34 days in Nakuru County and 38 days in Northwest China, leading to yield reductions of 2.7–26.5% and 4.6–22.4%, respectively, with stronger impacts in the 2050s and under RCP 8.5. Simulations further demonstrated that adaptation measures—including adjusting planting dates, applying appropriate irrigation, and adopting improved cultivars—could increase maize yields by 20.7–38.6% in Nakuru and 17.6–28.6% in Northwest China, depending on the scenario. These findings indicate that integrating multiple adaptation strategies can substantially reduce climate-induced yield losses, emphasizing the need for investment in irrigation infrastructure, climate services, and cultivar improvement to safeguard future maize production.
Keywords:
1. Introduction
2. Results
2.1. Impact of future climate change on maize yield in Nakuru County, Kenya
2.1.1. Model Calibration in Nakuru County, Kenya
2.1.2. Changes in the Major Meteorological Elements in 2030s and 2050s in Nakuru County, Kenya
2.1.3. Impact of Future Climate Change on Maize Phenology by 2030s and 2050s
2.1.4. Impact of Future Climate Change on Maize Yield in Nakuru County, Kenya

2.1.5. Effect of Adaptation Measures on Maize Yield in Nakuru County, Kenya
Effect of Changing Planting Dates on Maize Yield in Nakuru County, Kenya
Effect of Adding Irrigation Practices on Maize Yield
Effect of Replacing Cultivar on Maize Yield
Effect of Adopting Multiple Measures on Maize Yield

2.2. Impact of future climate change on maize yield in Northwest China
2.2.1. Model Calibration in Northwest China
2.2.2. Changes in the Major Meteorological Elements in 2030s and 2050s in Northwest China
2.2.3. Impact of Future Climate Change on Maize Phenology by 2030s and 2050s
2.2.4. Impact of Future Climate Change on Maize Yield in Northwest China

2.2.5. Effect of Adaptation Measures on Maize Yield in Northwest China
Effect of Adjusting Planting Dates on Maize Yield in Northwest China
Effect of Adding Irrigation Practices on Maize Yield
Effect of Replacing Cultivar on Maize Yield
Effect of Adopting Multiple Measures on Maize Yield

3. Discussion
3.1. Impact of Future Climate Change on Maize Yield under different Parameters in Nakuru County, Kenya and Northwest China
3.2. Effect of Adaptation Measures on Maize Yield in Nakuru County, Kenya and Northwest China
4. Materials and Methods
4.1. Studies Area in Kenya and China
4.1.1. Nakuru County in Kenya
4.1.2. Northwest China
4.2. CERES-Maize Model and Modeling Method
4.3. Criteria for Site Selection for modelling
- Maize cultivars must have been cultivated for a minimum of 3 years and at the same time they should not have been distressed by either diseases, pests, insects or severe climatic events.
- Availability of records on good field management practices e.g., sowing dates, row spacing, cultivar change, fertilization and irrigation.
- The location of the study sites are representative in the sub-areas and should be near the major Agricultural Meteorological Experimental Stations (AMESs) so as to ensure easy accessibility to accurate weather observation data.
4.4. Criteria for Climate Scenario Selection
4.5. Crop Model Input Data
4.6. Genetic coefficients for Maize and Simulation Evaluation
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
| AMESs | Agricultural Meteorological Experimental Stations |
| AR5 | Fifth Assessment Report of the Intergovernmental Panel on Climate Change |
| CERES | Crop Environment Resource Synthesis |
| CIDP | County Integrated Development Plan |
| CMA | China Meteorological Administration |
| CMIP5 | Coupled Model Intercomparison Project Phase 5 |
| DSSAT | Decision Support System for Agrotechnology Transfer |
| ESGF | Earth System Grid Federation |
| GCM | General Circulation Model |
| GLUE | Generalized Likelihood Uncertainty Estimation |
| IPCC | Intergovernmental Panel on Climate Change |
| ISRIC | International Soil Reference and Information Centre |
| KMD | Kenya Meteorological Department |
| KNBS | Kenya National Bureau of Statistics |
| NWC | Northwest China |
| RCP | Representative Concentration Pathway |
| UNFCCC | United Nations Framework Convention on Climate Change |
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