Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model

Mapping of groundwater potential in remote arid and semi-arid regions underneath sand sheets over a very regional scale is a challenge and requires an accurate classifier. The Classification and Regression Trees (CART) model is a robust machine learning classifier used in groundwater potential mappi...

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Main Authors: Samy Elmahdy, Tarig Ali, Mohamed Mohamed
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/12/2300
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spelling doaj-c9b8d8eb84d64fe3b8e1795d18d886b02021-06-30T23:58:11ZengMDPI AGRemote Sensing2072-42922021-06-01132300230010.3390/rs13122300Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees ModelSamy Elmahdy0Tarig Ali1Mohamed Mohamed2GIS and Mapping Laboratory, Civil Engineering Department, College of Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab EmiratesGIS and Mapping Laboratory, Civil Engineering Department, College of Engineering, American University of Sharjah, Sharjah P.O. Box 26666, United Arab EmiratesCivil and Environmental Engineering Department, United Arab Emirates University, Al-Ain P.O. Box 15551, United Arab EmiratesMapping of groundwater potential in remote arid and semi-arid regions underneath sand sheets over a very regional scale is a challenge and requires an accurate classifier. The Classification and Regression Trees (CART) model is a robust machine learning classifier used in groundwater potential mapping over a very regional scale. Ten essential groundwater conditioning factors (GWCFs) were constructed using remote sensing data. The spatial relationship between these conditioning factors and the observed groundwater wells locations was optimized and identified by using the chi-square method. A total of 185 groundwater well locations were randomly divided into 129 (70%) for training the model and 56 (30%) for validation. The model was applied for groundwater potential mapping by using optimal parameters values for additive trees were 186, the value for the learning rate was 0.1, and the maximum size of the tree was five. The validation result demonstrated that the area under the curve (AUC) of the CART was 0.920, which represents a predictive accuracy of 92%. The resulting map demonstrated that the depressions of Mondafan, Khujaymah and Wajid Mutaridah depression and the southern gulf salt basin (SGSB) near Saudi Arabia, Oman and the United Arab Emirates (UAE) borders reserve fresh fossil groundwater as indicated from the observed lakes and recovered paleolakes. The proposed model and the new maps are effective at enhancing the mapping of groundwater potential over a very regional scale obtained using machine learning algorithms, which are used rarely in the literature and can be applied to the Sahara and the Kalahari Desert.https://www.mdpi.com/2072-4292/13/12/2300Saudi Arabiaremote sensinggroundwaterpaleochannelsUmm Al HieshCART model
collection DOAJ
language English
format Article
sources DOAJ
author Samy Elmahdy
Tarig Ali
Mohamed Mohamed
spellingShingle Samy Elmahdy
Tarig Ali
Mohamed Mohamed
Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
Remote Sensing
Saudi Arabia
remote sensing
groundwater
paleochannels
Umm Al Hiesh
CART model
author_facet Samy Elmahdy
Tarig Ali
Mohamed Mohamed
author_sort Samy Elmahdy
title Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
title_short Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
title_full Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
title_fullStr Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
title_full_unstemmed Regional Mapping of Groundwater Potential in Ar Rub Al Khali, Arabian Peninsula Using the Classification and Regression Trees Model
title_sort regional mapping of groundwater potential in ar rub al khali, arabian peninsula using the classification and regression trees model
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-06-01
description Mapping of groundwater potential in remote arid and semi-arid regions underneath sand sheets over a very regional scale is a challenge and requires an accurate classifier. The Classification and Regression Trees (CART) model is a robust machine learning classifier used in groundwater potential mapping over a very regional scale. Ten essential groundwater conditioning factors (GWCFs) were constructed using remote sensing data. The spatial relationship between these conditioning factors and the observed groundwater wells locations was optimized and identified by using the chi-square method. A total of 185 groundwater well locations were randomly divided into 129 (70%) for training the model and 56 (30%) for validation. The model was applied for groundwater potential mapping by using optimal parameters values for additive trees were 186, the value for the learning rate was 0.1, and the maximum size of the tree was five. The validation result demonstrated that the area under the curve (AUC) of the CART was 0.920, which represents a predictive accuracy of 92%. The resulting map demonstrated that the depressions of Mondafan, Khujaymah and Wajid Mutaridah depression and the southern gulf salt basin (SGSB) near Saudi Arabia, Oman and the United Arab Emirates (UAE) borders reserve fresh fossil groundwater as indicated from the observed lakes and recovered paleolakes. The proposed model and the new maps are effective at enhancing the mapping of groundwater potential over a very regional scale obtained using machine learning algorithms, which are used rarely in the literature and can be applied to the Sahara and the Kalahari Desert.
topic Saudi Arabia
remote sensing
groundwater
paleochannels
Umm Al Hiesh
CART model
url https://www.mdpi.com/2072-4292/13/12/2300
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AT tarigali regionalmappingofgroundwaterpotentialinarrubalkhaliarabianpeninsulausingtheclassificationandregressiontreesmodel
AT mohamedmohamed regionalmappingofgroundwaterpotentialinarrubalkhaliarabianpeninsulausingtheclassificationandregressiontreesmodel
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