Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools

The Accelerating the Impact of CGIAR Climate Research for Africa (AICCRA) project aims to enhance access to climate information services and validated climate-smart agriculture technologies in Africa, to help these countries strengthen the resilience of their agricultural sectors to the threat posed by climate change. Towards these ends, the International Research Institute for Climate and Society (IRI), as part of Columbia Climate School at Columbia University, has been working closely with the national meteorological services in AICCRA target countries (Ethiopia, Kenya Zambia, Senegal, Ghana, Mali) alongside their associated regional climate centres (RCCs), the IGAD Climate Prediction and Applications Centre (ICPAC) in East Africa and the Regional Centre for Training and Application in Agrometeorology and Operational Hydrology (AGRHYMET) in West Africa, to improve seasonal and subseasonal forecasting capacities using the NextGen (PyCPT) approach. The “NextGen” forecasting system, which is based on more than 25 years of research at the IRI, helps countries to quickly produce high-resolution, location-specific forecasts that can be easily communicated to agricultural decision makers and planners. Its state-of-the-art approach, which has already been adopted by more than a dozen countries in Central and Southern America and incorporated into the operational product suites of ICPAC (Hansen et al., 2022) and AGRHYMET (Segnon et al., 2022), helps forecasters assess past model performance, which can inform how best to correct and combine different global climate models. It also helps forecasters select the best climate models for any region of interest through a process-based evaluation, and it automates the generation and verification of tailored predictions at multiple timescales at the regional, national or sub-national level. And importantly, it is an open-source, community-owned and collaborative interface and approach for seasonal forecasting. While AICCRA project investments in NextGen regional trainings in East and Southern Africa (ESA) in 2021 (Grossi et al., 2021) and 2022 (Grossi et al., 2022a) and West Africa in early (Minoungou et al., 2022) and late 2022 (Grossi et al., 2022b) resulted in significant increased regional forecasting capacity and the concomitant introduction of this high-need seasonal forecasting system to 18 national meteorological agencies and member states of both regions, one of the largest articulated demands, namely awareness and capacitation on the NextGen forecasting system at the subseasonal timescale (2-4 weeks of lead time) remained unmet. The generation of accurate and timely forecasts on this timescale is critical for the predictability of and early warnings for extreme, high-impact events such as recurrent droughts and floods that have plagued both regions.

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Main Authors: Grossi, Amanda, Robertson, Andrew, Rose, Alison, Singh, Bohar, Trzaska, Sylwia, Ehsan, Azhar, Kaplan, Aaron, Dinku, Tufa
Format: Report biblioteca
Language:English
Published: Accelerating Impacts of CGIAR Climate Research for Africa 2023-09
Subjects:forecasting, capacity development, climate information services, agriculture, climate change,
Online Access:https://hdl.handle.net/10568/135339
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spelling dig-cgspace-10568-1353392023-12-27T12:00:05Z Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools Grossi, Amanda Robertson, Andrew Rose, Alison Singh, Bohar Trzaska, Sylwia Ehsan, Azhar Kaplan, Aaron Dinku, Tufa forecasting capacity development climate information services agriculture climate change The Accelerating the Impact of CGIAR Climate Research for Africa (AICCRA) project aims to enhance access to climate information services and validated climate-smart agriculture technologies in Africa, to help these countries strengthen the resilience of their agricultural sectors to the threat posed by climate change. Towards these ends, the International Research Institute for Climate and Society (IRI), as part of Columbia Climate School at Columbia University, has been working closely with the national meteorological services in AICCRA target countries (Ethiopia, Kenya Zambia, Senegal, Ghana, Mali) alongside their associated regional climate centres (RCCs), the IGAD Climate Prediction and Applications Centre (ICPAC) in East Africa and the Regional Centre for Training and Application in Agrometeorology and Operational Hydrology (AGRHYMET) in West Africa, to improve seasonal and subseasonal forecasting capacities using the NextGen (PyCPT) approach. The “NextGen” forecasting system, which is based on more than 25 years of research at the IRI, helps countries to quickly produce high-resolution, location-specific forecasts that can be easily communicated to agricultural decision makers and planners. Its state-of-the-art approach, which has already been adopted by more than a dozen countries in Central and Southern America and incorporated into the operational product suites of ICPAC (Hansen et al., 2022) and AGRHYMET (Segnon et al., 2022), helps forecasters assess past model performance, which can inform how best to correct and combine different global climate models. It also helps forecasters select the best climate models for any region of interest through a process-based evaluation, and it automates the generation and verification of tailored predictions at multiple timescales at the regional, national or sub-national level. And importantly, it is an open-source, community-owned and collaborative interface and approach for seasonal forecasting. While AICCRA project investments in NextGen regional trainings in East and Southern Africa (ESA) in 2021 (Grossi et al., 2021) and 2022 (Grossi et al., 2022a) and West Africa in early (Minoungou et al., 2022) and late 2022 (Grossi et al., 2022b) resulted in significant increased regional forecasting capacity and the concomitant introduction of this high-need seasonal forecasting system to 18 national meteorological agencies and member states of both regions, one of the largest articulated demands, namely awareness and capacitation on the NextGen forecasting system at the subseasonal timescale (2-4 weeks of lead time) remained unmet. The generation of accurate and timely forecasts on this timescale is critical for the predictability of and early warnings for extreme, high-impact events such as recurrent droughts and floods that have plagued both regions. 2023-09 2023-12-13T17:15:40Z 2023-12-13T17:15:40Z Report Grossi A, Robertson AW, Rose A, Singh B, Trzaska S, Ehsan A, Kaplan A, Dinku T. 2023. Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools. AICCRA Workshop Report. Accelerating Impacts of CGIAR Climate Research for Africa (AICCRA). https://hdl.handle.net/10568/135339 en CC-BY-NC-4.0 Open Access 23 p. application/pdf Accelerating Impacts of CGIAR Climate Research for Africa
institution CGIAR
collection DSpace
country Francia
countrycode FR
component Bibliográfico
access En linea
databasecode dig-cgspace
tag biblioteca
region Europa del Oeste
libraryname Biblioteca del CGIAR
language English
topic forecasting
capacity development
climate information services
agriculture
climate change
forecasting
capacity development
climate information services
agriculture
climate change
spellingShingle forecasting
capacity development
climate information services
agriculture
climate change
forecasting
capacity development
climate information services
agriculture
climate change
Grossi, Amanda
Robertson, Andrew
Rose, Alison
Singh, Bohar
Trzaska, Sylwia
Ehsan, Azhar
Kaplan, Aaron
Dinku, Tufa
Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
description The Accelerating the Impact of CGIAR Climate Research for Africa (AICCRA) project aims to enhance access to climate information services and validated climate-smart agriculture technologies in Africa, to help these countries strengthen the resilience of their agricultural sectors to the threat posed by climate change. Towards these ends, the International Research Institute for Climate and Society (IRI), as part of Columbia Climate School at Columbia University, has been working closely with the national meteorological services in AICCRA target countries (Ethiopia, Kenya Zambia, Senegal, Ghana, Mali) alongside their associated regional climate centres (RCCs), the IGAD Climate Prediction and Applications Centre (ICPAC) in East Africa and the Regional Centre for Training and Application in Agrometeorology and Operational Hydrology (AGRHYMET) in West Africa, to improve seasonal and subseasonal forecasting capacities using the NextGen (PyCPT) approach. The “NextGen” forecasting system, which is based on more than 25 years of research at the IRI, helps countries to quickly produce high-resolution, location-specific forecasts that can be easily communicated to agricultural decision makers and planners. Its state-of-the-art approach, which has already been adopted by more than a dozen countries in Central and Southern America and incorporated into the operational product suites of ICPAC (Hansen et al., 2022) and AGRHYMET (Segnon et al., 2022), helps forecasters assess past model performance, which can inform how best to correct and combine different global climate models. It also helps forecasters select the best climate models for any region of interest through a process-based evaluation, and it automates the generation and verification of tailored predictions at multiple timescales at the regional, national or sub-national level. And importantly, it is an open-source, community-owned and collaborative interface and approach for seasonal forecasting. While AICCRA project investments in NextGen regional trainings in East and Southern Africa (ESA) in 2021 (Grossi et al., 2021) and 2022 (Grossi et al., 2022a) and West Africa in early (Minoungou et al., 2022) and late 2022 (Grossi et al., 2022b) resulted in significant increased regional forecasting capacity and the concomitant introduction of this high-need seasonal forecasting system to 18 national meteorological agencies and member states of both regions, one of the largest articulated demands, namely awareness and capacitation on the NextGen forecasting system at the subseasonal timescale (2-4 weeks of lead time) remained unmet. The generation of accurate and timely forecasts on this timescale is critical for the predictability of and early warnings for extreme, high-impact events such as recurrent droughts and floods that have plagued both regions.
format Report
topic_facet forecasting
capacity development
climate information services
agriculture
climate change
author Grossi, Amanda
Robertson, Andrew
Rose, Alison
Singh, Bohar
Trzaska, Sylwia
Ehsan, Azhar
Kaplan, Aaron
Dinku, Tufa
author_facet Grossi, Amanda
Robertson, Andrew
Rose, Alison
Singh, Bohar
Trzaska, Sylwia
Ehsan, Azhar
Kaplan, Aaron
Dinku, Tufa
author_sort Grossi, Amanda
title Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
title_short Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
title_full Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
title_fullStr Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
title_full_unstemmed Africa-Wide Training on the Improved NextGen Approach (PyCPT2.5) for Seasonal and Subseasonal Forecasting and Climate Data Analysis and Visualization Tools
title_sort africa-wide training on the improved nextgen approach (pycpt2.5) for seasonal and subseasonal forecasting and climate data analysis and visualization tools
publisher Accelerating Impacts of CGIAR Climate Research for Africa
publishDate 2023-09
url https://hdl.handle.net/10568/135339
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