Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index
Spatial distribution of drought plays key role specifically in hydrological research. Drought is a complex stochastic natural hazard caused by prolonging shortage of rainfall and available water resources. The multi-scalar drought indices (based on probability distribution) are commonly used for mak...
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doaj-b9e6d85a1de04bc7b608705c5e1f186a2020-11-25T01:15:22ZengTaylor & Francis GroupTellus: Series A, Dynamic Meteorology and Oceanography1600-08702019-01-0171110.1080/16000870.2019.16040571604057Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought indexZulfiqar Ali0Ijaz Hussain1Muhammad Faisal2Elsayed Elsherbini Elashkar3Showkat Gani4Muhammad Ahmed Shehzad5Quaid-i-Azam UniversityQuaid-i-Azam UniversityFaculty of Health Studies, University of BradfordArriyadh Community College King Saud UniversityCollege of Business Administration, King Saud University MuzahimiyahBahauddin Zakariya UniversitySpatial distribution of drought plays key role specifically in hydrological research. Drought is a complex stochastic natural hazard caused by prolonging shortage of rainfall and available water resources. The multi-scalar drought indices (based on probability distribution) are commonly used for making effective drought mitigation policies. In addition, the multi-scalar drought indices have great extent of the inaccurate determination of drought classes due to its probabilistic nature. However, the interpretation and applicability of various time scales are cumbersome for multi-scalar drought in various meteorological stations at a particular region. In this regards, accurate estimation and continuous monitoring of future drought at regional level requires a more appropriate and important time scale with respect to regions under study. In this study, we aimed to investigate the appropriate time scale for multi-scalar drought indices by using geo-reference points of meteorological stations. We used Boruta algorithm with two random forest adapters of machine learning algorithms for regionalized optimization of drought monitoring time scale. We explored the appropriate time scale for the Standardized Precipitation Temperature Index (SPTI) of 52 meteorological stations that are located across Pakistan. Results show that the significant importance of SPTI-1 (1-month time scale) for further spatial and temporal studies. That is, being high ranked and prominence, SPTI-1 has the ability to capture the characteristics of all other time scales that are in some circumstances applicable for drought characterization and classification.http://dx.doi.org/10.1080/16000870.2019.1604057multi-scalar drought indexdrought monitoringrandom forest |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zulfiqar Ali Ijaz Hussain Muhammad Faisal Elsayed Elsherbini Elashkar Showkat Gani Muhammad Ahmed Shehzad |
spellingShingle |
Zulfiqar Ali Ijaz Hussain Muhammad Faisal Elsayed Elsherbini Elashkar Showkat Gani Muhammad Ahmed Shehzad Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index Tellus: Series A, Dynamic Meteorology and Oceanography multi-scalar drought index drought monitoring random forest |
author_facet |
Zulfiqar Ali Ijaz Hussain Muhammad Faisal Elsayed Elsherbini Elashkar Showkat Gani Muhammad Ahmed Shehzad |
author_sort |
Zulfiqar Ali |
title |
Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index |
title_short |
Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index |
title_full |
Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index |
title_fullStr |
Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index |
title_full_unstemmed |
Selection of appropriate time scale with Boruta algorithm for regional drought monitoring using multi-scaler drought index |
title_sort |
selection of appropriate time scale with boruta algorithm for regional drought monitoring using multi-scaler drought index |
publisher |
Taylor & Francis Group |
series |
Tellus: Series A, Dynamic Meteorology and Oceanography |
issn |
1600-0870 |
publishDate |
2019-01-01 |
description |
Spatial distribution of drought plays key role specifically in hydrological research. Drought is a complex stochastic natural hazard caused by prolonging shortage of rainfall and available water resources. The multi-scalar drought indices (based on probability distribution) are commonly used for making effective drought mitigation policies. In addition, the multi-scalar drought indices have great extent of the inaccurate determination of drought classes due to its probabilistic nature. However, the interpretation and applicability of various time scales are cumbersome for multi-scalar drought in various meteorological stations at a particular region. In this regards, accurate estimation and continuous monitoring of future drought at regional level requires a more appropriate and important time scale with respect to regions under study. In this study, we aimed to investigate the appropriate time scale for multi-scalar drought indices by using geo-reference points of meteorological stations. We used Boruta algorithm with two random forest adapters of machine learning algorithms for regionalized optimization of drought monitoring time scale. We explored the appropriate time scale for the Standardized Precipitation Temperature Index (SPTI) of 52 meteorological stations that are located across Pakistan. Results show that the significant importance of SPTI-1 (1-month time scale) for further spatial and temporal studies. That is, being high ranked and prominence, SPTI-1 has the ability to capture the characteristics of all other time scales that are in some circumstances applicable for drought characterization and classification. |
topic |
multi-scalar drought index drought monitoring random forest |
url |
http://dx.doi.org/10.1080/16000870.2019.1604057 |
work_keys_str_mv |
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