Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran

Study region: Iran. Study focus: This study evaluates the performance of various drought indices, including SPEI (Standardized Precipitation Evapotranspiration Index), Standardized Soil Moisture Index of the top two layers (SSI1 and SSI2), and the Multivariate Standardized Drought Indices (MSDI1 (P&...

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Main Authors: Saeed Sharafi, Fatemeh Omidvari, Fatemeh Mottaghi
Format: Article
Language:English
Published: Elsevier 2025-06-01
Series:Journal of Hydrology: Regional Studies
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Online Access:http://www.sciencedirect.com/science/article/pii/S2214581825001752
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author Saeed Sharafi
Fatemeh Omidvari
Fatemeh Mottaghi
author_facet Saeed Sharafi
Fatemeh Omidvari
Fatemeh Mottaghi
author_sort Saeed Sharafi
collection DOAJ
description Study region: Iran. Study focus: This study evaluates the performance of various drought indices, including SPEI (Standardized Precipitation Evapotranspiration Index), Standardized Soil Moisture Index of the top two layers (SSI1 and SSI2), and the Multivariate Standardized Drought Indices (MSDI1 (P&ETref), MSDI2 (P&SM1), and MSDI3 (P&SM2)) models, across six distinct climatic zones using data from 30 basins with 621 gridded points (1979–2022). The analysis covers three time scales—1, 3, and 12 ∼ months—and assesses the drought characteristics and criteria in diverse climate regions. New hydrological insights for the region: The MSDI models exhibited superior performance across all climatic zones, achieving an overall precision rate of 85 % and consistently outperforming the SPEI and SSI models in both short-term (1- and 3-month) and long-term (12-month) drought predictions. In coastal wet and mountain regions, the MSDI models demonstrated exceptional precision rates of 90 % and 85 %, respectively, with robust Taylor skill scores of 0.92 and 0.89, significantly surpassing the accuracy of the SPEI and SSI models. In semi desert and desert regions, the MSDI models maintained a precision rate of 77 %, with a slight decline at the 12-month scale. Despite this decrease, they continued to outperform the SPEI and SSI models, particularly in short-term (3-month) drought assessments. These findings underscore the necessity of selecting and calibrating drought indices to enhance monitoring accuracy, with the MSDI models proving particularly reliable in semi-desert and mountainous regions. The study advocates for region-specific drought indices to better capture local climatic variations and emphasizes the importance of improved model calibration in regions exhibiting lower performance. Policymakers are urged to implement tailored drought management strategies to enhance water resource sustainability, strengthen agricultural resilience, and mitigate the adverse impacts of drought. Further research is essential to refine these models and integrate advanced methodologies, such as machine learning (ML), to enhance drought prediction accuracy and support climate adaptation efforts.
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spelling doaj-art-d79ad65337aa4e319d466e40839220162025-08-20T02:25:28ZengElsevierJournal of Hydrology: Regional Studies2214-58182025-06-015910235010.1016/j.ejrh.2025.102350Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of IranSaeed Sharafi0Fatemeh Omidvari1Fatemeh Mottaghi2Corresponding author.; Department of Environment Science and Engineering, Arak University, Arak, IranDepartment of Environment Science and Engineering, Arak University, Arak, IranDepartment of Environment Science and Engineering, Arak University, Arak, IranStudy region: Iran. Study focus: This study evaluates the performance of various drought indices, including SPEI (Standardized Precipitation Evapotranspiration Index), Standardized Soil Moisture Index of the top two layers (SSI1 and SSI2), and the Multivariate Standardized Drought Indices (MSDI1 (P&ETref), MSDI2 (P&SM1), and MSDI3 (P&SM2)) models, across six distinct climatic zones using data from 30 basins with 621 gridded points (1979–2022). The analysis covers three time scales—1, 3, and 12 ∼ months—and assesses the drought characteristics and criteria in diverse climate regions. New hydrological insights for the region: The MSDI models exhibited superior performance across all climatic zones, achieving an overall precision rate of 85 % and consistently outperforming the SPEI and SSI models in both short-term (1- and 3-month) and long-term (12-month) drought predictions. In coastal wet and mountain regions, the MSDI models demonstrated exceptional precision rates of 90 % and 85 %, respectively, with robust Taylor skill scores of 0.92 and 0.89, significantly surpassing the accuracy of the SPEI and SSI models. In semi desert and desert regions, the MSDI models maintained a precision rate of 77 %, with a slight decline at the 12-month scale. Despite this decrease, they continued to outperform the SPEI and SSI models, particularly in short-term (3-month) drought assessments. These findings underscore the necessity of selecting and calibrating drought indices to enhance monitoring accuracy, with the MSDI models proving particularly reliable in semi-desert and mountainous regions. The study advocates for region-specific drought indices to better capture local climatic variations and emphasizes the importance of improved model calibration in regions exhibiting lower performance. Policymakers are urged to implement tailored drought management strategies to enhance water resource sustainability, strengthen agricultural resilience, and mitigate the adverse impacts of drought. Further research is essential to refine these models and integrate advanced methodologies, such as machine learning (ML), to enhance drought prediction accuracy and support climate adaptation efforts.http://www.sciencedirect.com/science/article/pii/S2214581825001752Climatic zonesDrought indicesModel performanceMSDI modelsRegional calibration
spellingShingle Saeed Sharafi
Fatemeh Omidvari
Fatemeh Mottaghi
Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
Journal of Hydrology: Regional Studies
Climatic zones
Drought indices
Model performance
MSDI models
Regional calibration
title Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
title_full Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
title_fullStr Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
title_full_unstemmed Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
title_short Enhancing drought monitoring through regional adaptation: Performance and calibration of drought indices across varied climatic zones of Iran
title_sort enhancing drought monitoring through regional adaptation performance and calibration of drought indices across varied climatic zones of iran
topic Climatic zones
Drought indices
Model performance
MSDI models
Regional calibration
url http://www.sciencedirect.com/science/article/pii/S2214581825001752
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