A generalized density-based algorithm for the spatio-temporal tracking of drought events
Drought events evolve simultaneously in space and time; hence, a proper characterization of an event requires the tracking of its full spatiotemporal evolution. Here we present a generalized algorithm for the tracking of drought
events based on a three-dimensional application of the DBSCAN (density-based spatial clustering of applications with
noise) clustering approach. The need for a generalized and flexible algorithm is dictated by the absence of a unanimous
consensus on the definition of a drought event, which often depends on the target of the study. The proposed methodology
introduces a set of six parameters that control both the spatial and the temporal connectivity between cells under drought
conditions, also accounting for the local intensity of the drought itself. The capability of the algorithm to adapt to different
drought definitions is tested successfully over a study case in Australia in the period 2017–20 using a set of standardized
precipitation index (SPI) data derived from the ERA5 precipitation reanalysis. Insights on the possible range of variability
of the model parameters, as well as on their effects on the delineation of drought events, are provided for the case of meteorological droughts in order to incentivize further applications of the methodology
CAMMALLERI Carmelo;
TORETI Andrea;
2023-07-26
AMER METEOROLOGICAL SOC
JRC129716
1525-755X (online),
https://journals.ametsoc.org/view/journals/hydr/24/3/JHM-D-22-0115.1.xml,
https://publications.jrc.ec.europa.eu/repository/handle/JRC129716,
10.1175/JHM-D-22-0115.1 (online),
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