Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data

This paper seeks to establish the concept that the analysis of high temporal resolution meteorological data adds value to the investigation of the effect of climatic variability on the prevalence and severity of agricultural pests and diseases. Specifically we attempt to improve disease potential ma...

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Autores principales: Farrow, Andrew, Musoni, D, Cook, Simon E., Buruchara, Robin Arani
Formato: Journal Article
Lenguaje:Inglés
Publicado: Cambridge University Press 2011
Materias:
Acceso en línea:https://hdl.handle.net/10568/43198
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author Farrow, Andrew
Musoni, D
Cook, Simon E.
Buruchara, Robin Arani
author_browse Buruchara, Robin Arani
Cook, Simon E.
Farrow, Andrew
Musoni, D
author_facet Farrow, Andrew
Musoni, D
Cook, Simon E.
Buruchara, Robin Arani
author_sort Farrow, Andrew
collection Repository of Agricultural Research Outputs (CGSpace)
description This paper seeks to establish the concept that the analysis of high temporal resolution meteorological data adds value to the investigation of the effect of climatic variability on the prevalence and severity of agricultural pests and diseases. Specifically we attempt to improve disease potential maps of root rots in common beans, based on a combination of inherent susceptibility and the risk of exposure to critical weather events. We achieve this using simulated datasets of daily rainfall to assess the probability of heavy rainfall events at particular times during the cropping season. We then validate these simulated events with observations from meteorological stations in East Africa. We also assess the utility of remotely sensed daily rainfall estimates in near real time for the purposes of updating the risks of these events over large areas and for providing warnings of potential disease outbreaks. We find that simulated rainfall data provide the means to assess risk over large areas, but there are too few datasets of observed rainfall to definitively validate the probabilities of heavy rainfall events generated using rainfall simulations such as those generated by MarkSim. We also find that selected satellite rainfall estimates are unable to predict observed rainfall events with any power, but data from a sufficiently dense network of rain gauges are not available in the region. Despite these problems we show that remotely sensed rainfall estimates may provide a more realistic assessment of rainfall over large areas where rainfall observations are not available, and alternative satellite estimates should be explored
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spelling CGSpace431982025-03-11T12:14:31Z Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data Farrow, Andrew Musoni, D Cook, Simon E. Buruchara, Robin Arani ecosystems ecosistema This paper seeks to establish the concept that the analysis of high temporal resolution meteorological data adds value to the investigation of the effect of climatic variability on the prevalence and severity of agricultural pests and diseases. Specifically we attempt to improve disease potential maps of root rots in common beans, based on a combination of inherent susceptibility and the risk of exposure to critical weather events. We achieve this using simulated datasets of daily rainfall to assess the probability of heavy rainfall events at particular times during the cropping season. We then validate these simulated events with observations from meteorological stations in East Africa. We also assess the utility of remotely sensed daily rainfall estimates in near real time for the purposes of updating the risks of these events over large areas and for providing warnings of potential disease outbreaks. We find that simulated rainfall data provide the means to assess risk over large areas, but there are too few datasets of observed rainfall to definitively validate the probabilities of heavy rainfall events generated using rainfall simulations such as those generated by MarkSim. We also find that selected satellite rainfall estimates are unable to predict observed rainfall events with any power, but data from a sufficiently dense network of rain gauges are not available in the region. Despite these problems we show that remotely sensed rainfall estimates may provide a more realistic assessment of rainfall over large areas where rainfall observations are not available, and alternative satellite estimates should be explored 2011-04 2014-09-24T08:41:46Z 2014-09-24T08:41:46Z Journal Article https://hdl.handle.net/10568/43198 en Open Access Cambridge University Press
spellingShingle ecosystems
ecosistema
Farrow, Andrew
Musoni, D
Cook, Simon E.
Buruchara, Robin Arani
Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title_full Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title_fullStr Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title_full_unstemmed Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title_short Assessing the risk of root rots in common beans in east Africa using simulated, estimated and observed daily rainfall data
title_sort assessing the risk of root rots in common beans in east africa using simulated estimated and observed daily rainfall data
topic ecosystems
ecosistema
url https://hdl.handle.net/10568/43198
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