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Download CLIP Meeting January 31, 2008 - Climate Land Interaction Project
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Maize and Bean Productivity changes in East Africa due to climate change Objectives: To look at: 1. 2. System-based differences in productivity of maize and bean in CLIP domain due to climate change What could be done to adjust for these changes in the future To estimate productivity we need to know where in reality the crops are grown in a country • For simulations we used length of growing season -LGP (>60days) and FAO soil suitability indices – Problem: • • • Could use Global Land cover Classification (GLC 2000) – Problem: • • Grossly over estimates cropped area Does not say where maize and bean crops are grown in a country underestimates because of its inability to pick small-mosaics of crop land In this study we used : – – – modified live-stock systems classification of Sere and Steinfeld (1996) by incorporating cropping systems from Dixon and Gulliver (2001) leading to mixed crop-livestock systems Overlaid Maize and Bean mask to the mixed crop-livestock systems to identify cropped area This corresponded to systems classification: Mixed Rain fed Systems Mixed Rain fed Systems MRA Mixed Rain fed Arid-semiarid MRH Mixed Rain fed Humid/sub-humid MRT Mixed Rain fed Temperate/tropical highland Maize cropping intensity 1999-2001 (You & Wood, 2006) System areas for Burundi, Kenya, Rwanda, Tanzania and Uganda Percentage Land Area Total Area (km2) Mixed Livestock Cropping Other Burundi 87 0 1 12 27,278 Kenya 26 71 0 2 582,721 Rwanda 96 0 0 4 25,580 Tanzania 56 33 4 6 939,138 Uganda 68 16 1 14 244,318 Average or Total 67 24 2 6 1,819,034 Assumptions used in the analyses • • • • • Maize is main crop grown at the start of growing season Bean comes only in those pixels where growing season is long enough for maize and then for bean Looking at indicative and directional change in productivity as affected by climate change Current national productivity is for 2004-2006 from FAO Looking at national productivity and disaggregated productivity in mixed systems MRA, MRH and MRT GCMs used • • • • HadCm3 ECHam4 CCSM (will include in future analysis) SRES Scenarios: A1F1 (high emission) and A1B (low emission) Percentage production changes from current to 2030 and 2050 (HadCM3 model, Scenario A1) by country and system Maize National Production MRT MRH MRA 2030 2050 2030 2050 2030 2050 2030 2050 Burundi 9.4 9.6 11.8 13.5 1.7 -2.9 - - Kenya 15.4 17.6 32.3 45.3 -6.4 -14.0 -0.3 -8.8 Rwanda 11.9 16.9 16.2 22.9 8.2 9.9 0.1 1.7 Tanzania -3.1 -10.1 4.7 3.0 -0.2 -6.5 -5.2 -13.2 Uganda -2.5 -12.3 2.1 -3.7 -4.1 -16.8 -1.1 -5.7 Percentage production changes from current to 2030 and 2050 (HadCM3 model, Scenario A1) by country and system BEANS National Production MRT MRH MRA 2030 2050 2030 2050 2030 2050 2030 2050 Burundi 25.2 23.8 29.2 28.9 11.8 7.1 - - Kenya 12.6 16.2 14.6 20.7 0.7 -10.7 - - Rwanda 19.7 20.4 23.3 26.1 7.4 0.7 - - Tanzania 7.8 -5.0 34.0 54.0 7.0 -7.8 4.6 -12.0 Uganda -4.9 -28.0 5.7 -9.9 -6.2 -31.1 -4.9 -16.9 Considerable spatial variation Maize in Kenya MRT MRH MRA 2030 2050 2030 2050 2030 2050 32.3 45.3 -6.4 -14.0 -0.3 -8.8 Increase in MRT but decrease in MRH and MRA Considerable Temporal switches (besides spatial effects) Bean in Tanzania MRT MRH MRA 2030 2050 2030 2050 2030 2050 34.0 54.0 7.0 -7.8 4.6 -12.0 MRH: 7% increase in 2030 from baseline (2000) followed by a 8% decrease in 2050 MRA: 5% increase in 2030 from baseline (2000) followed by a 12% decrease in 2050 Two basic types of response to overcome climate change effects on crop productivity 1. Internal shift: To offset projected decrease internal shifts of production from lower producing systems to higher producing systems e.g. Shifting bean production from MRH (-11%) to MRT (+21%) system in Kenya (caution: It might have to replace / compete with high value crops presently grown in MRT) 2. Agronomic or Management adjustments: Maize and Bean yield decreased in all systems in 2050 in Uganda. – – No internal shift possible to overcome since all systems are affected Are there any management adjustments possible to deal with such changes? o Can evaluate several options such as application of fertilizer, use longer duration crop varieties, irrigation etc. o Validate with FEWS yield and precip data? Chris Funk To respond to overcome climate change effects on crop productivity : • Need to look at high-resolution impacts as they vary both spatially and temporally • Coping options vary depending on location and situation • There is no single blanket response