Quadratic Discriminant Analysis Based Ensemble Machine Learning Models for Groundwater Potential Modeling and Mapping

被引:0
|
作者
Duong Hai Ha
Phong Tung Nguyen
Romulus Costache
Nadhir Al-Ansari
Tran Van Phong
Huu Duy Nguyen
Mahdis Amiri
Rohit Sharma
Indra Prakash
Hiep Van Le
Hanh Bich Thi Nguyen
Binh Thai Pham
机构
[1] Institute for Water and Environment,Department of Civil Engineering
[2] Vietnam Academy for Water Resources,Department of Civil, Environmental and Natural Resources Engineering
[3] Danube Delta National Institute for Research and Development,Institute of Geological Sciences
[4] Transilvania University of Brasov,Faculty of Geography
[5] Research Institute of the University of Bucharest,Department of Watershed & Arid Zone Management
[6] National Institute of Hydrology and Water Management,Department of Electronics & Communication Engineering
[7] Lulea University of Technology,undefined
[8] Vietnam Academy of Sciences and Technology,undefined
[9] VNU University of Science,undefined
[10] Vietnam National University,undefined
[11] Gorgan University of Agricultural Sciences & Natural Resources,undefined
[12] SRM Institute of Science and Technology,undefined
[13] DDG (R) Geological Survey of India,undefined
[14] University of Transport Technology,undefined
来源
关键词
Groundwater potential mapping; GIS; Sustainable groundwater management; Machine learning; Hybrid models;
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学科分类号
摘要
In this study, the AdaBoost, MultiBoost and RealAdaBoost methods were combined with the Quadratic Discriminant Analysis method to develop three new GIS-based Machine Learning ensemble models, i.e., ABQDA, MBQDA, and RABQDA for groundwater potential mapping in the Dak Nong Province, Vietnam. In total, 227 groundwater wells and 12 conditioning factors (infiltration, rainfall, river density, topographic wetness index, sediment transport index, stream power index, elevation, aspect, curvature, slope, soil, and land use) were used for this study. Performance of the models was evaluated using the Area Under the Receiver Operating Characteristics Curve AUC (AUC) and several other performance metrics. The results showed that the ABQDA model that achieved AUC = 0.741 was superior to the other models in producing an accurate map of groundwater potential for the Dak Nong Province. The models and potential maps produced here can help policymakers and water resources managers to preserve an optimal exploit from these vital resources.
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页码:4415 / 4433
页数:18
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