Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library

This report summarizes the interactions, discussions, and analyses of Asher Siebert, Post-Doctoral Research Scientist at the International Research Institute for Climate and Society (IRI), during his three-week visit to Rwanda in late August to mid- September 2017 as part of the Rwanda Climate Serv...

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Main Authors: Siebert, Asher, Kagabo, Desire M., Vuguziga, Floribert
Format: Informe técnico
Language:Inglés
Published: 2017
Subjects:
Online Access:https://hdl.handle.net/10568/89105
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author Siebert, Asher
Kagabo, Desire M.
Vuguziga, Floribert
author_browse Kagabo, Desire M.
Siebert, Asher
Vuguziga, Floribert
author_facet Siebert, Asher
Kagabo, Desire M.
Vuguziga, Floribert
author_sort Siebert, Asher
collection Repository of Agricultural Research Outputs (CGSpace)
description This report summarizes the interactions, discussions, and analyses of Asher Siebert, Post-Doctoral Research Scientist at the International Research Institute for Climate and Society (IRI), during his three-week visit to Rwanda in late August to mid- September 2017 as part of the Rwanda Climate Services for Agriculture project. The project aims to provide climate services widely throughout Rwanda and help farmers better adapt to climate variability and climate change impacts. In doing so, the project seeks to help improve agriculture outcomes and ensure food security. During the visit, trainings were held to discuss seasonal climate forecasting and downscaling methods. A particular national forecast for Rwanda along with downscaled results in probability of exceedance format for ten Rwandan districts (those in the first two phases of the project) was developed using the IRI Climate Predictability Tool (CPT). A critical component of the project’s mission is capacity building and to that end, a number of staff from the Rwanda Meteorology Agency (Météo Rwanda) were trained in CPT, the IRI Data Library, and the Météo Rwanda maprooms. Further discussions addressed longer-term collaborative work on both climatology and further seasonal prediction work, particularly with regard to El Niño - Southern Oscillation (ENSO) and the Indian Ocean Dipole (IOD). Discussions with experts at International Center for Tropical Agriculture (CIAT) and the Rwanda Agriculture Board (RAB) also focused on the newly developed water balance maprooms and the possibilities of updating these maprooms in the future.
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spelling CGSpace891052024-01-23T12:03:34Z Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library Siebert, Asher Kagabo, Desire M. Vuguziga, Floribert climate change agriculture food security This report summarizes the interactions, discussions, and analyses of Asher Siebert, Post-Doctoral Research Scientist at the International Research Institute for Climate and Society (IRI), during his three-week visit to Rwanda in late August to mid- September 2017 as part of the Rwanda Climate Services for Agriculture project. The project aims to provide climate services widely throughout Rwanda and help farmers better adapt to climate variability and climate change impacts. In doing so, the project seeks to help improve agriculture outcomes and ensure food security. During the visit, trainings were held to discuss seasonal climate forecasting and downscaling methods. A particular national forecast for Rwanda along with downscaled results in probability of exceedance format for ten Rwandan districts (those in the first two phases of the project) was developed using the IRI Climate Predictability Tool (CPT). A critical component of the project’s mission is capacity building and to that end, a number of staff from the Rwanda Meteorology Agency (Météo Rwanda) were trained in CPT, the IRI Data Library, and the Météo Rwanda maprooms. Further discussions addressed longer-term collaborative work on both climatology and further seasonal prediction work, particularly with regard to El Niño - Southern Oscillation (ENSO) and the Indian Ocean Dipole (IOD). Discussions with experts at International Center for Tropical Agriculture (CIAT) and the Rwanda Agriculture Board (RAB) also focused on the newly developed water balance maprooms and the possibilities of updating these maprooms in the future. 2017-10-26 2017-10-27T12:43:51Z 2017-10-27T12:43:51Z Report https://hdl.handle.net/10568/89105 en Open Access application/pdf Siebert A, Kagabo DM, Vuguziga F. 2017. Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library. CCAFS Workshop Report. Wageningen, Netherlands: CGIAR Research Program on Climate Change, Agriculture and Food Security (CCAFS).
spellingShingle climate change
agriculture
food security
Siebert, Asher
Kagabo, Desire M.
Vuguziga, Floribert
Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title_full Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title_fullStr Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title_full_unstemmed Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title_short Training on seasonal forecasting using the IRI Climate Predictability Tool and Data Library
title_sort training on seasonal forecasting using the iri climate predictability tool and data library
topic climate change
agriculture
food security
url https://hdl.handle.net/10568/89105
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