Spatio-Temporal Characterisation of Drought

Data Analytics, Modelling, Tracking, Impact and Prediction

Doctoral Thesis (2021)
Author(s)

Vitali Diaz Mercado (TU Delft - GIS Technologie, TU Delft - Water Resources)

Research Group
GIS Technologie
Copyright
© 2021 Vitali Diaz
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 Vitali Diaz
Research Group
GIS Technologie
ISBN (print)
978-1-032-24650-5
Reuse Rights

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Abstract

Studies of drought have increased in light of new data availability and advances in spatio-temporal analysis. However, the following gaps still need to be filled: 1) methods to characterise drought that explicitly consider its spatio-temporal features, such as spatial extent (area) and pathway; 2) methods to monitor and predict drought that include the above-mentioned characteristics and 3) approaches for visualising and analysing drought characteristics to facilitate interpretation of its variation. This research aims to explore, analyse and propose improvements to the spatio-temporal characterisation of drought. Outcomes provide new perspectives towards better prediction.

The following objectives were proposed. 1) Improve the methodology for characterising drought based on the phenomenon’s spatial features. 2) Develop a visual approach to analysing drought variations. 3) Develop a methodology for spatial drought tracking. 4) Explore machine learning (ML) techniques to predict crop-yield responses to drought. The four objectives were addressed and results are presented.

Finally, a scope was formulated for integrating ML and the spatio-temporal analysis of drought. Proposed scope opens a new area of potential for drought prediction (i.e. predicting spatial drought tracks and areas). It is expected that the drought tracking and prediction method will help populations cope with drought and its severe impacts.