Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data

Groundwater (GW) is being uncontrollably exploited in various parts of the world resulting from huge needs for water supply as an outcome of population growth and industrialization. Bearing in mind the importance of GW potential assessment in reaching sustainability, this study seeks to use remote s...

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Main Authors: Ehsan Kamali Maskooni, Seyed Amir Naghibi, Hossein Hashemi, Ronny Berndtsson
Format: Article
Language:English
Published: MDPI AG 2020-08-01
Series:Remote Sensing
Subjects:
GIS
Online Access:https://www.mdpi.com/2072-4292/12/17/2742
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spelling doaj-f55c2b650ae7495888b3c90b875bb71e2020-11-25T03:48:13ZengMDPI AGRemote Sensing2072-42922020-08-01122742274210.3390/rs12172742Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived DataEhsan Kamali Maskooni0Seyed Amir Naghibi1Hossein Hashemi2Ronny Berndtsson3Division of Water Resources Engineering and Centre for Middle Eastern Studies, Lund University, Lund Box 118, SE 221 00, SwedenDivision of Water Resources Engineering and Centre for Middle Eastern Studies, Lund University, Lund Box 118, SE 221 00, SwedenDivision of Water Resources Engineering and Centre for Middle Eastern Studies, Lund University, Lund Box 118, SE 221 00, SwedenDivision of Water Resources Engineering and Centre for Middle Eastern Studies, Lund University, Lund Box 118, SE 221 00, SwedenGroundwater (GW) is being uncontrollably exploited in various parts of the world resulting from huge needs for water supply as an outcome of population growth and industrialization. Bearing in mind the importance of GW potential assessment in reaching sustainability, this study seeks to use remote sensing (RS)-derived driving factors as an input of the advanced machine learning algorithms (MLAs), comprising deep boosting and logistic model trees to evaluate their efficiency. To do so, their results are compared with three benchmark MLAs such as boosted regression trees, k-nearest neighbors, and random forest. For this purpose, we firstly assembled different topographical, hydrological, RS-based, and lithological driving factors such as altitude, slope degree, aspect, slope length, plan curvature, profile curvature, relative slope position, distance from rivers, river density, topographic wetness index, land use/land cover (LULC), normalized difference vegetation index (NDVI), distance from lineament, lineament density, and lithology. The GW spring indicator was divided into two classes for training (434 springs) and validation (186 springs) with a proportion of 70:30. The training dataset of the springs accompanied by the driving factors were incorporated into the MLAs and the outputs were validated by different indices such as accuracy, kappa, receiver operating characteristics (ROC) curve, specificity, and sensitivity. Based upon the area under the ROC curve, the logistic model tree (87.813%) generated similar performance to deep boosting (87.807%), followed by boosted regression trees (87.397%), random forest (86.466%), and k-nearest neighbors (76.708%) MLAs. The findings confirm the great performance of the logistic model tree and deep boosting algorithms in modelling GW potential. Thus, their application can be suggested for other areas to obtain an insight about GW-related barriers toward sustainability. Further, the outcome based on the logistic model tree algorithm depicts the high impact of the RS-based factor, such as NDVI with 100 relative influence, as well as high influence of the distance from river, altitude, and RSP variables with 46.07, 43.47, and 37.20 relative influence, respectively, on GW potential.https://www.mdpi.com/2072-4292/12/17/2742remote sensingmachine learningGIShydrologygroundwater potential
collection DOAJ
language English
format Article
sources DOAJ
author Ehsan Kamali Maskooni
Seyed Amir Naghibi
Hossein Hashemi
Ronny Berndtsson
spellingShingle Ehsan Kamali Maskooni
Seyed Amir Naghibi
Hossein Hashemi
Ronny Berndtsson
Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
Remote Sensing
remote sensing
machine learning
GIS
hydrology
groundwater potential
author_facet Ehsan Kamali Maskooni
Seyed Amir Naghibi
Hossein Hashemi
Ronny Berndtsson
author_sort Ehsan Kamali Maskooni
title Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
title_short Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
title_full Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
title_fullStr Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
title_full_unstemmed Application of Advanced Machine Learning Algorithms to Assess Groundwater Potential Using Remote Sensing-Derived Data
title_sort application of advanced machine learning algorithms to assess groundwater potential using remote sensing-derived data
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2020-08-01
description Groundwater (GW) is being uncontrollably exploited in various parts of the world resulting from huge needs for water supply as an outcome of population growth and industrialization. Bearing in mind the importance of GW potential assessment in reaching sustainability, this study seeks to use remote sensing (RS)-derived driving factors as an input of the advanced machine learning algorithms (MLAs), comprising deep boosting and logistic model trees to evaluate their efficiency. To do so, their results are compared with three benchmark MLAs such as boosted regression trees, k-nearest neighbors, and random forest. For this purpose, we firstly assembled different topographical, hydrological, RS-based, and lithological driving factors such as altitude, slope degree, aspect, slope length, plan curvature, profile curvature, relative slope position, distance from rivers, river density, topographic wetness index, land use/land cover (LULC), normalized difference vegetation index (NDVI), distance from lineament, lineament density, and lithology. The GW spring indicator was divided into two classes for training (434 springs) and validation (186 springs) with a proportion of 70:30. The training dataset of the springs accompanied by the driving factors were incorporated into the MLAs and the outputs were validated by different indices such as accuracy, kappa, receiver operating characteristics (ROC) curve, specificity, and sensitivity. Based upon the area under the ROC curve, the logistic model tree (87.813%) generated similar performance to deep boosting (87.807%), followed by boosted regression trees (87.397%), random forest (86.466%), and k-nearest neighbors (76.708%) MLAs. The findings confirm the great performance of the logistic model tree and deep boosting algorithms in modelling GW potential. Thus, their application can be suggested for other areas to obtain an insight about GW-related barriers toward sustainability. Further, the outcome based on the logistic model tree algorithm depicts the high impact of the RS-based factor, such as NDVI with 100 relative influence, as well as high influence of the distance from river, altitude, and RSP variables with 46.07, 43.47, and 37.20 relative influence, respectively, on GW potential.
topic remote sensing
machine learning
GIS
hydrology
groundwater potential
url https://www.mdpi.com/2072-4292/12/17/2742
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