Prediction and Forecast of Short-Term Drought Impacts Using Machine Learning to Support Mitigation and Adaptation Efforts
Hatim M. E. Geli, Islam Omar, Mona Y. Elshinawy, David W. DuBios, Lara Prehodko, Kelly H Smith, Abdel-Hameed A. Badawy

TL;DR
This study leverages machine learning to predict short-term drought impacts using indices and impact records, enabling proactive mitigation efforts with forecasts up to eight weeks ahead.
Contribution
It introduces a novel approach combining drought indices and impact data with machine learning to forecast impacts at actionable lead times.
Findings
Fire and Relief impacts predicted with highest accuracy
Forecasts up to eight weeks in advance achieved for most impact categories
Model successfully applied to New Mexico for drought impact prediction
Abstract
Drought is a complex natural hazard that affects ecological and human systems, often resulting in substantial environmental and economic losses. Recent increases in drought severity, frequency, and duration underscore the need for effective monitoring and mitigation strategies. Predicting drought impacts rather than drought conditions alone offers opportunities to support early warning systems and proactive decision-making. This study applies machine learning techniques to link drought indices with historical drought impact records (2005:2024) to generate short-term impact forecasts. By addressing key conceptual and data-driven challenges regarding temporal scale and impact quantification, the study aims to improve the predictability of drought impacts at actionable lead times. The Drought Severity and Coverage Index (DSCI) and the Evaporative Stress Index (ESI) were combined with…
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Taxonomy
TopicsHydrology and Drought Analysis · Climate variability and models · Climate change impacts on agriculture
