Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)

Today, supplying water to meet the sustainable development goals is one of the most important concerns and challenges in most countries. Therefore, identification of the areas with groundwater potential is an important tool for conservation, management and exploitation of water resources. The purpos...

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Main Authors: S. V. Razavi Termeh, K. Shirani, M. Soltani Rabii
Format: Article
Language:fas
Published: Isfahan University of Technology 2019-09-01
Series:علوم آب و خاک
Subjects:
Online Access:http://jstnar.iut.ac.ir/article-1-3649-en.html
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spelling doaj-d3dd70cde97b4727b6e6e1b42ca804b42021-04-20T08:17:17ZfasIsfahan University of Technology علوم آب و خاک2476-35942476-55542019-09-012322743Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)S. V. Razavi Termeh0K. Shirani1M. Soltani Rabii2 1. Department of GIS and RS, Faculty of Geodesy and Geomatics Engineering, K. N. Toosi University of Technology, Tehran, Iran. 2. Soil Conservation and Watershed Management Research Department, Isfahan Agricultural and Natural Resources, Research and Education Center, AREEO, Isfahan, Iran. 3. Department of GIS and RS, Faculty of Engineering and Thechnical, Hamedan University of Technology, Hamedan, Iran. Today, supplying water to meet the sustainable development goals is one of the most important concerns and challenges in most countries. Therefore, identification of the areas with groundwater potential is an important tool for conservation, management and exploitation of water resources. The purpose of this research was to prepare the potential groundwater map in Nahavand, Hamedan Province, using the weight of evidence model and combining it with logistic regression. For this purpose,  the information layers of slope angle, slope aspect, slope length, altitude, plan curvature, profile curvature, TWI, SPI, distance from fault, fault density, distance from river, drainage density, lithology and land use were identified as the  factors affecting groundwater potential and digitized in the ArcGIS software. After designing the groundwater potential map with these three methods, ROCs were used to evaluate the results. Of 273 springs identified in this study, 191 (70%) were used to prepare the groundwater potential map and 82 springs (30%) were used to evaluate the model. The area under curve (AUC) obtained from the ROC curve showed an accuracy of 80.4% for the weight of evidence model and 82.5% for the weight of the evidence- regression combined modelhttp://jstnar.iut.ac.ir/article-1-3649-en.htmlspatial predictionspringstatistics modelsnahavand town
collection DOAJ
language fas
format Article
sources DOAJ
author S. V. Razavi Termeh
K. Shirani
M. Soltani Rabii
spellingShingle S. V. Razavi Termeh
K. Shirani
M. Soltani Rabii
Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
علوم آب و خاک
spatial prediction
spring
statistics models
nahavand town
author_facet S. V. Razavi Termeh
K. Shirani
M. Soltani Rabii
author_sort S. V. Razavi Termeh
title Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
title_short Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
title_full Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
title_fullStr Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
title_full_unstemmed Groundwater Potential Mapping Using the Integration of the Weight of Evidence and Logistic Regression Models (A Case Study: Nahavand)
title_sort groundwater potential mapping using the integration of the weight of evidence and logistic regression models (a case study: nahavand)
publisher Isfahan University of Technology
series علوم آب و خاک
issn 2476-3594
2476-5554
publishDate 2019-09-01
description Today, supplying water to meet the sustainable development goals is one of the most important concerns and challenges in most countries. Therefore, identification of the areas with groundwater potential is an important tool for conservation, management and exploitation of water resources. The purpose of this research was to prepare the potential groundwater map in Nahavand, Hamedan Province, using the weight of evidence model and combining it with logistic regression. For this purpose,  the information layers of slope angle, slope aspect, slope length, altitude, plan curvature, profile curvature, TWI, SPI, distance from fault, fault density, distance from river, drainage density, lithology and land use were identified as the  factors affecting groundwater potential and digitized in the ArcGIS software. After designing the groundwater potential map with these three methods, ROCs were used to evaluate the results. Of 273 springs identified in this study, 191 (70%) were used to prepare the groundwater potential map and 82 springs (30%) were used to evaluate the model. The area under curve (AUC) obtained from the ROC curve showed an accuracy of 80.4% for the weight of evidence model and 82.5% for the weight of the evidence- regression combined model
topic spatial prediction
spring
statistics models
nahavand town
url http://jstnar.iut.ac.ir/article-1-3649-en.html
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AT kshirani groundwaterpotentialmappingusingtheintegrationoftheweightofevidenceandlogisticregressionmodelsacasestudynahavand
AT msoltanirabii groundwaterpotentialmappingusingtheintegrationoftheweightofevidenceandlogisticregressionmodelsacasestudynahavand
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