Focus: Enhance water and land productivity in key non- tropical dry area agro-ecologies (rainfed, irrigated, and agro-pastoral). Water resources are the most limiting component of agricultural production in dry areas. ICARDA will therefore continue to improve agricultural water productivity and, in collaboration with our sister center the International Water Management Institute (IWMI) and others, develop its framework further for wider adoption. Core to the research effort of SRP5 is enhancing and restoring the provisioning, regulating, and supporting ecosystem services in dry areas. SRP5 will build upon past achievements, which range from rainwater harvesting using landscape modification to supplemental and deficit irrigation. We will take a more integrated approach to managing soil, land, and water resources across the extensive rangelands of non-tropical dry areas through links with the rangeland, livestock, and value chain expertise embedded in the Center. Further, with partner ARIs we will investigate alternative opportunities to diversify the livelihoods of the communities in rangelands, for example in renewable energy.
ICARDA Strategic Plan 2017 - 2026: https://dx.doi.org/20.500.11766/8237
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141 to 150 of 687 Results
Feb 11, 2023
Sharma, Ram; Amanov, Shukhrat; Akramkhanov, Akmal, 2020, "Soil analysis before and after mungbean crop production - Tajikistan 2018", https://hdl.handle.net/20.500.11766.1/FK2/DIW9MM, MELDATA, V2
The data was collected for the project: "Collaborative Research Project on Sustainable Soil Management to Enhance Agricultural Productivity in Central Asia" as part of its Activity 2.2: "On_farm evaluation and demonstration of integrated soil, land, crop and water management tech...
Feb 11, 2023
Haddad, Mira; Strohmeier, Stefan, 2020, "SWAT model weather input data", https://hdl.handle.net/20.500.11766.1/FK2/KOAYW6, MELDATA, V3
Weather input as used for the weather generator (wgn) in SWAT (Soil and Water Assessment Tool)
Feb 11, 2023
Govind, Ajit, 2022, "Projected Climate Variables for Different Governorates of Iraq under Two IPCC Scenarios (RCP4.5 and RCP 8.5)", https://hdl.handle.net/20.500.11766.1/FK2/S3DRTO, MELDATA, V3
This is the projected Temperature (Mean Annual) and Precipitation (Annual Sum) average over the different Governorates of Iraq from 1980-2100. The data is provided for the two IPCC Scenarios (RCP4.5 and RCP 8.5). For the long term future climate change analysis presented, an ense...
Feb 11, 2023
Nangia, Vinay, 2019, "Sediment yield data used for SWAT modeling", https://hdl.handle.net/20.500.11766.1/FK2/AOUQEL, MELDATA, V3
The dataset contains sediment erosion data used in SWAT modeling, in order to estimate soil erosion estimation on small watersheds.
Feb 11, 2023
Strohmeier, Stefan, 2020, "Soil cracking baseline - preliminary monitoring results", https://hdl.handle.net/20.500.11766.1/FK2/XNKBCN, MELDATA, V4
The dataset contains a baseline on soil cracking: it includes preliminary monitoring results on the effect of different crops on soil cracking.
Feb 11, 2023
Tarekegn, Alemu; Demsew, Yengusie, 2020, "Adaptability of Different Sweet Lupin Varieties for Feed production", https://hdl.handle.net/20.500.11766.1/FK2/LIMQJ3, MELDATA, V2
Final dataset from agronomic experiment in Gumara Maksegnit (2016), as elaborated by GARC researchers in charge for this trial (Alemu Tarekegn and Yengusie Demsew). Please contact author and contact person at ICARDA to obtain more detailed metadata or to propose collaboration.
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