Javascript must be enabled to continue!
Groundwater Potential Mapping Using Remote Sensing and GIS-Based Machine Learning Techniques
View through CrossRef
Adequate groundwater development for the rural population is essential because groundwater is an important source of drinking water and agricultural water. In this study, ensemble models of decision tree-based machine learning algorithms were used with geographic information system (GIS) to map and test groundwater yield potential in Yangpyeong-gun, South Korea. Groundwater control factors derived from remote sensing data were used for mapping, including nine topographic factors, two hydrological factors, forest type, soil material, land use, and two geological factors. A total of 53 well locations with both specific capacity (SPC) data and transmissivity (T) data were selected and randomly divided into two classes for model training (70%) and testing (30%). First, the frequency ratio (FR) was calculated for SPC and T, and then the boosted classification tree (BCT) method of the machine learning model was applied. In addition, an ensemble model, FR-BCT, was applied to generate and compare groundwater potential maps. Model performance was evaluated using the receiver operating characteristic (ROC) method. To test the model, the area under the ROC curve was calculated; the curve for the predicted dataset of SPC showed values of 80.48% and 87.75% for the BCT and FR-BCT models, respectively. The accuracy rates from T were 72.27% and 81.49% for the BCT and FR-BCT models, respectively. Both the BCT and FR-BCT models measured the contributions of individual groundwater control factors, which showed that soil was the most influential factor. The machine learning techniques used in this study showed effective modeling of groundwater potential in areas where data are relatively scarce. The results of this study may be used for sustainable development of groundwater resources by identifying areas of high groundwater potential.
Title: Groundwater Potential Mapping Using Remote Sensing and GIS-Based Machine Learning Techniques
Description:
Adequate groundwater development for the rural population is essential because groundwater is an important source of drinking water and agricultural water.
In this study, ensemble models of decision tree-based machine learning algorithms were used with geographic information system (GIS) to map and test groundwater yield potential in Yangpyeong-gun, South Korea.
Groundwater control factors derived from remote sensing data were used for mapping, including nine topographic factors, two hydrological factors, forest type, soil material, land use, and two geological factors.
A total of 53 well locations with both specific capacity (SPC) data and transmissivity (T) data were selected and randomly divided into two classes for model training (70%) and testing (30%).
First, the frequency ratio (FR) was calculated for SPC and T, and then the boosted classification tree (BCT) method of the machine learning model was applied.
In addition, an ensemble model, FR-BCT, was applied to generate and compare groundwater potential maps.
Model performance was evaluated using the receiver operating characteristic (ROC) method.
To test the model, the area under the ROC curve was calculated; the curve for the predicted dataset of SPC showed values of 80.
48% and 87.
75% for the BCT and FR-BCT models, respectively.
The accuracy rates from T were 72.
27% and 81.
49% for the BCT and FR-BCT models, respectively.
Both the BCT and FR-BCT models measured the contributions of individual groundwater control factors, which showed that soil was the most influential factor.
The machine learning techniques used in this study showed effective modeling of groundwater potential in areas where data are relatively scarce.
The results of this study may be used for sustainable development of groundwater resources by identifying areas of high groundwater potential.
Related Results
Characterizing Groundwater Quality, Recharge and Distribution under Anthropogenic conditions
Characterizing Groundwater Quality, Recharge and Distribution under Anthropogenic conditions
Awareness concerning sustainable groundwater management is gaining traction and calls for adequate understanding of the complexities of natural and anthropogenic processes and how ...
Identification and Mapping Groundwater Potential Areas Using GIS and Remote Sensing in Wolaita Zone, Southern Region, Ethiopia
Identification and Mapping Groundwater Potential Areas Using GIS and Remote Sensing in Wolaita Zone, Southern Region, Ethiopia
Abstract
Recently water is becoming a vital natural resource that can be used for many things in human life i.e. hydropower generation, sanitation, drinking, irrigation, an...
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
Selection of Injectable Drug Product Composition using Machine Learning Models (Preprint)
BACKGROUND
As of July 2020, a Web of Science search of “machine learning (ML)” nested within the search of “pharmacokinetics or pharmacodynamics” yielded over 100...
Forecasting Net Groundwater Depletion in Well Irrigation Areas with Long Short-term Memory Networks
Forecasting Net Groundwater Depletion in Well Irrigation Areas with Long Short-term Memory Networks
<p>Due to the scarcity of available surface water, many irrigated areas in North China Plain (NCP) heavily rely on groundwater, which has resulted in groundwater over...
GIS-based landscape design research
GIS-based landscape design research
Landscape design research is important for cultivating spatial intelligence in landscape architecture. This study explores GIS (geographic information systems) as a tool for landsc...
Comparison of Single-channel and Split-window Methods for Estimating Land Surface Temperature from Landsat 8 Data
Comparison of Single-channel and Split-window Methods for Estimating Land Surface Temperature from Landsat 8 Data
Abstract: Landsat 8 is the eighth satellite in the Landsat program, which provides images at 11 spectral channels, including 2 thermal infrared bands at a spatial resolution of 100...
Internet Role in Remote Sensing and Geo Informatics System
Internet Role in Remote Sensing and Geo Informatics System
Remote sensing and geo informatics system (GIS) are difficult to find the source and accessibility of various applications by end users such as students, scholars, scientists and p...
Indicator-based assessment of groundwater resources sustainability in South Korea
Indicator-based assessment of groundwater resources sustainability in South Korea
Groundwater level decline and quality deterioration is continuously observed nationwide in South Korea. Meanwhile, the demand for groundwater, which is relatively stable and clean ...

