Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia

Seasonal-to-interannual variations of rainfall over southern Africa, key to predicting extreme climatic events, are predictable over certain regions and during specific periods of the year. This predictability had been established by testing seasonal forecasts from models of varying complexity again...

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Main Authors: Willem A. Landman, Emma R. M. Archer, Mark A. Tadross
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-09-01
Series:Frontiers in Climate
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fclim.2020.00005/full
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spelling doaj-663f0c60da4c4fd794d015934a74e9012021-04-02T11:47:47ZengFrontiers Media S.A.Frontiers in Climate2624-95532020-09-01210.3389/fclim.2020.00005567806Citizen Science for the Prediction of Climate Extremes in South Africa and NamibiaWillem A. Landman0Willem A. Landman1Emma R. M. Archer2Mark A. Tadross3Department of Geography, Geoinformatics and Meteorology, University of Pretoria, Pretoria, South AfricaInternational Research Institute for Climate and Society, The Earth Institute of Columbia University, New York, NY, United StatesDepartment of Geography, Geoinformatics and Meteorology, University of Pretoria, Pretoria, South AfricaClimate Systems Analysis Group, University of Cape Town, Cape Town, South AfricaSeasonal-to-interannual variations of rainfall over southern Africa, key to predicting extreme climatic events, are predictable over certain regions and during specific periods of the year. This predictability had been established by testing seasonal forecasts from models of varying complexity against official station rainfall records typically managed by weather services, as well as against gridded data sets compiled through a range of efforts. Members of the general public, including farmers, additionally have extended records of rainfall data, often as daily values spanning several decades, which are recorded and updated regularly at their farms and properties. In this paper, we show how seasonal forecast modelers may use site recorded farm rainfall records for the development of skillful forecast systems specific to the farm. Although the uptake of seasonal forecasts in areas with modest predictability such as southern Africa may be challenging, we will show that there is potential for financial gain and improved disaster risk farm management by co-developing with farmers forecast systems based on a combination of state-of-the-art climate models and farm rainfall data. This study investigates the predictability of seasonal rainfall extremes at five commercial farms in southern Africa, four of which are in the austral summer rainfall areas, while one is located in the winter rainfall area of the southwestern Cape. We furthermore calculate a measure of cumulative profits at each farm, assuming a “fair odds” return on investments made according to forecast probabilities. The farmers are presented with hindcasts (re-forecasts) at their farms, and potential financial implications if the hindcasts were used in decision-making. They subsequently described how they would use forecasts for their farm, based on their own data.https://www.frontiersin.org/article/10.3389/fclim.2020.00005/fullSouthern Africaseasonal climate forecastsco-productionprofitsfarm management
collection DOAJ
language English
format Article
sources DOAJ
author Willem A. Landman
Willem A. Landman
Emma R. M. Archer
Mark A. Tadross
spellingShingle Willem A. Landman
Willem A. Landman
Emma R. M. Archer
Mark A. Tadross
Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
Frontiers in Climate
Southern Africa
seasonal climate forecasts
co-production
profits
farm management
author_facet Willem A. Landman
Willem A. Landman
Emma R. M. Archer
Mark A. Tadross
author_sort Willem A. Landman
title Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
title_short Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
title_full Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
title_fullStr Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
title_full_unstemmed Citizen Science for the Prediction of Climate Extremes in South Africa and Namibia
title_sort citizen science for the prediction of climate extremes in south africa and namibia
publisher Frontiers Media S.A.
series Frontiers in Climate
issn 2624-9553
publishDate 2020-09-01
description Seasonal-to-interannual variations of rainfall over southern Africa, key to predicting extreme climatic events, are predictable over certain regions and during specific periods of the year. This predictability had been established by testing seasonal forecasts from models of varying complexity against official station rainfall records typically managed by weather services, as well as against gridded data sets compiled through a range of efforts. Members of the general public, including farmers, additionally have extended records of rainfall data, often as daily values spanning several decades, which are recorded and updated regularly at their farms and properties. In this paper, we show how seasonal forecast modelers may use site recorded farm rainfall records for the development of skillful forecast systems specific to the farm. Although the uptake of seasonal forecasts in areas with modest predictability such as southern Africa may be challenging, we will show that there is potential for financial gain and improved disaster risk farm management by co-developing with farmers forecast systems based on a combination of state-of-the-art climate models and farm rainfall data. This study investigates the predictability of seasonal rainfall extremes at five commercial farms in southern Africa, four of which are in the austral summer rainfall areas, while one is located in the winter rainfall area of the southwestern Cape. We furthermore calculate a measure of cumulative profits at each farm, assuming a “fair odds” return on investments made according to forecast probabilities. The farmers are presented with hindcasts (re-forecasts) at their farms, and potential financial implications if the hindcasts were used in decision-making. They subsequently described how they would use forecasts for their farm, based on their own data.
topic Southern Africa
seasonal climate forecasts
co-production
profits
farm management
url https://www.frontiersin.org/article/10.3389/fclim.2020.00005/full
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