Forecasting vegetation condition for drought early warning systems in pastoral communities in Kenya
Droughts are a recurring hazard in sub-Saharan Africa, that can wreak huge socioeconomic costs.Acting early based on alerts provided by early warning systems (EWS) can potentially provide substantial mitigation, reducing the financial and human cost. However, existing EWS tend only to monitor curren...
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Zusammenfassung: | Droughts are a recurring hazard in sub-Saharan Africa, that can wreak huge
socioeconomic costs.Acting early based on alerts provided by early warning
systems (EWS) can potentially provide substantial mitigation, reducing the
financial and human cost. However, existing EWS tend only to monitor current,
rather than forecast future, environmental and socioeconomic indicators of
drought, and hence are not always sufficiently timely to be effective in
practice. Here we present a novel method for forecasting satellite-based
indicators of vegetation condition. Specifically, we focused on the 3-month
Vegetation Condition Index (VCI3M) over pastoral livelihood zones in Kenya,
which is the indicator used by the Kenyan National Drought Management
Authority(NDMA). Using data from MODIS and Landsat, we apply linear
autoregression and Gaussian process modeling methods and demonstrate high
forecasting skill several weeks ahead. As a benchmark we predicted the drought
alert marker used by NDMA (VCI3M |
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DOI: | 10.48550/arxiv.1911.10339 |