Why predict climate hazards if we need to understand impacts? Putting humans back into the drought equation.
Virtually all climate monitoring and forecasting efforts concentrate on hazards rather than on impacts, while the latter are a priority for planning emergency activities and for the evaluation of mitigation strategies. Effective disaster risk management strategies need to consider the prevailing “human terrain” to predict who is at risk and how communities will be affected. There has been little effort to align the spatio-temporal granularity of socioeconomic assessments with the granularity of weather or climate monitoring. The lack of a high-resolution socioeconomic baseline leaves methodical approaches like machine learning virtually untapped for pattern recognition of extreme climate impacts on livelihood conditions. While the request for “better” socioeconomic data is not new, we highlight the need to collect and analyze environmental and socioeconomic data together and discuss novel strategies for coordinated data collection via mobile technologies from a drought risk management perspective. A better temporal, spatial, and contextual understanding of socioeconomic impacts of extreme climate conditions will help to establish complex causal pathways and quantitative proof about climate-attributable livelihood impacts. Such considerations are particularly important in the context of the latest big data driven initiatives, such as the World Bank’s Famine Action Mechanism (FAM).
ENENKEL Markus;
BROWN Molly;
VOGT Juergen;
MCCARTY J.L.;
REID BELL A.;
GUHA-SAPIR D.;
DORIGO W.A.;
VASILAKY K.;
SVOBODA Marc;
BONIFACIO Rogerio;
ANDERSON Martha;
FUNK Chris;
OSGOOD Dan;
HAIN Christopher;
VINCK Patrick;
2021-01-05
SPRINGER
JRC110534
0165-0009 (online),
https://link.springer.com/article/10.1007/s.10584-020-02878-0,
https://publications.jrc.ec.europa.eu/repository/handle/JRC110534,
10.1007/s10584-020-02878-0 (online),
Additional supporting files
| File name | Description | File type | |