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Modelling climate change impacts on maize yields under low nitrogen input conditions in sub-Saharan Africa.

Gatien N FalconnierMarc CorbeelsKenneth J BooteFrançois AffholderMyriam AdamDilys S MacCarthyAlex C RuaneClaas NendelAnthony M WhitbreadEric JustesLajpat R AhujaFolorunso M AkinseyeIsaac N AlouKokou A AmouzouSaseendran S AnapalliChristian BaronBruno BassoFrédéric BaudronPatrick BertuzziAndrew J ChallinorYi ChenDelphine DeryngMaha L ElsayedBabacar FayeThomas GaiserMarcelo V GaldosSebastian GaylerEdward GerardeauxMichel GinerBrian B GrantGerrit HoogenboomEsther S IbrahimBahareh KamaliKurt Christian KersebaumSoo-Hyung KimMichael van der LaanLouise LerouxJon I LizasoBernardo MaestriniElizabeth A MeierFasil MequanintAlain NdoliCheryl H PorterEckart PriesackDominique RipocheTesfaye Shiferaw SidaUpendra SinghWard N SmithAmit SrivastavaSumit SinhaFulu TaoPeter J ThorburnDennis TimlinBouba TraoreTracy TwineHeidi A Webber
Published in: Global change biology (2020)
Smallholder farmers in sub-Saharan Africa (SSA) currently grow rainfed maize with limited inputs including fertilizer. Climate change may exacerbate current production constraints. Crop models can help quantify the potential impact of climate change on maize yields, but a comprehensive multimodel assessment of simulation accuracy and uncertainty in these low-input systems is currently lacking. We evaluated the impact of varying [CO2 ], temperature and rainfall conditions on maize yield, for different nitrogen (N) inputs (0, 80, 160 kg N/ha) for five environments in SSA, including cool subhumid Ethiopia, cool semi-arid Rwanda, hot subhumid Ghana and hot semi-arid Mali and Benin using an ensemble of 25 maize models. Models were calibrated with measured grain yield, plant biomass, plant N, leaf area index, harvest index and in-season soil water content from 2-year experiments in each country to assess their ability to simulate observed yield. Simulated responses to climate change factors were explored and compared between models. Calibrated models reproduced measured grain yield variations well with average relative root mean square error of 26%, although uncertainty in model prediction was substantial (CV = 28%). Model ensembles gave greater accuracy than any model taken at random. Nitrogen fertilization controlled the response to variations in [CO2 ], temperature and rainfall. Without N fertilizer input, maize (a) benefited less from an increase in atmospheric [CO2 ]; (b) was less affected by higher temperature or decreasing rainfall; and (c) was more affected by increased rainfall because N leaching was more critical. The model intercomparison revealed that simulation of daily soil N supply and N leaching plays a crucial role in simulating climate change impacts for low-input systems. Climate change and N input interactions have strong implications for the design of robust adaptation approaches across SSA, because the impact of climate change in low input systems will be modified if farmers intensify maize production with balanced nutrient management.
Keyphrases
  • climate change
  • human health
  • physical activity
  • machine learning
  • single cell
  • deep learning
  • convolutional neural network