Droughts over Pakistan: possible cycles, precursors and associated mechanisms
In the recent few decades, climate variability had severely affected the socio-economic and environmental conditions worldwide. Frequent shifts in the atmospheric circulation patterns affect large parts of the globe, predominantly the arid and semi-arid regions facing severe to moderate droughts. Th...
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doaj-98f07e63726e417bbeb506eea77e7a6e2021-09-06T14:06:25ZengTaylor & Francis GroupGeomatics, Natural Hazards & Risk1947-57051947-57132021-01-011211638166810.1080/19475705.2021.19387031938703Droughts over Pakistan: possible cycles, precursors and associated mechanismsSaadia Hina0Farhan Saleem1Arfan Arshad2Alina Hina3Irfan Ullah4State Key Laboratory of Numerical Modelling for Atmospheric Sciences and Geophysical Fluid Dynamics, Institute of Atmospheric Physics, Chinese Academy of SciencesCollege of Earth and Planetary Sciences, University of the Chinese Academy of SciencesDepartment of Irrigation and Drainage Engineering, University of Agriculture FaisalabadDepartment of Mathematics and Statistics, University of Agriculture FaisalabadSchool of Atmospheric Science, Nanjing University of Information Science and TechnologyIn the recent few decades, climate variability had severely affected the socio-economic and environmental conditions worldwide. Frequent shifts in the atmospheric circulation patterns affect large parts of the globe, predominantly the arid and semi-arid regions facing severe to moderate droughts. Therefore, precursors of drought events and their associated mechanisms are important to understand. This study explores the possible cycles and precursor conditions that might be employed for predicting upcoming droughts in Pakistan. Standardize precipitation index and the single Z-index are used to detect and rank the drought years. Moreover, composite analysis is carried out to explore the large-scale circulation anomalies related to extreme drought events. Results demonstrate that extreme drought events are highly correlated with wind patterns and intrinsic weather system in the Pacific and Indian Oceans. This study analyzed air temperature, sea level pressure and geopotential height in the average time-period of January to March, sea surface temperature from October to December, and wind vectors in March to May as precursors that could be employed to predict the occurrence of droughts in Pakistan. This information is of significance for policymakers to plan climate change adaptive measures accordingly.http://dx.doi.org/10.1080/19475705.2021.1938703pakistandrought severitycomposite analysisdrought precursorsprediction |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Saadia Hina Farhan Saleem Arfan Arshad Alina Hina Irfan Ullah |
spellingShingle |
Saadia Hina Farhan Saleem Arfan Arshad Alina Hina Irfan Ullah Droughts over Pakistan: possible cycles, precursors and associated mechanisms Geomatics, Natural Hazards & Risk pakistan drought severity composite analysis drought precursors prediction |
author_facet |
Saadia Hina Farhan Saleem Arfan Arshad Alina Hina Irfan Ullah |
author_sort |
Saadia Hina |
title |
Droughts over Pakistan: possible cycles, precursors and associated mechanisms |
title_short |
Droughts over Pakistan: possible cycles, precursors and associated mechanisms |
title_full |
Droughts over Pakistan: possible cycles, precursors and associated mechanisms |
title_fullStr |
Droughts over Pakistan: possible cycles, precursors and associated mechanisms |
title_full_unstemmed |
Droughts over Pakistan: possible cycles, precursors and associated mechanisms |
title_sort |
droughts over pakistan: possible cycles, precursors and associated mechanisms |
publisher |
Taylor & Francis Group |
series |
Geomatics, Natural Hazards & Risk |
issn |
1947-5705 1947-5713 |
publishDate |
2021-01-01 |
description |
In the recent few decades, climate variability had severely affected the socio-economic and environmental conditions worldwide. Frequent shifts in the atmospheric circulation patterns affect large parts of the globe, predominantly the arid and semi-arid regions facing severe to moderate droughts. Therefore, precursors of drought events and their associated mechanisms are important to understand. This study explores the possible cycles and precursor conditions that might be employed for predicting upcoming droughts in Pakistan. Standardize precipitation index and the single Z-index are used to detect and rank the drought years. Moreover, composite analysis is carried out to explore the large-scale circulation anomalies related to extreme drought events. Results demonstrate that extreme drought events are highly correlated with wind patterns and intrinsic weather system in the Pacific and Indian Oceans. This study analyzed air temperature, sea level pressure and geopotential height in the average time-period of January to March, sea surface temperature from October to December, and wind vectors in March to May as precursors that could be employed to predict the occurrence of droughts in Pakistan. This information is of significance for policymakers to plan climate change adaptive measures accordingly. |
topic |
pakistan drought severity composite analysis drought precursors prediction |
url |
http://dx.doi.org/10.1080/19475705.2021.1938703 |
work_keys_str_mv |
AT saadiahina droughtsoverpakistanpossiblecyclesprecursorsandassociatedmechanisms AT farhansaleem droughtsoverpakistanpossiblecyclesprecursorsandassociatedmechanisms AT arfanarshad droughtsoverpakistanpossiblecyclesprecursorsandassociatedmechanisms AT alinahina droughtsoverpakistanpossiblecyclesprecursorsandassociatedmechanisms AT irfanullah droughtsoverpakistanpossiblecyclesprecursorsandassociatedmechanisms |
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1717779303534428160 |