Research Info

Title
Assessment of Gini, Entropy, and Ratio based classification trees for groundwater potential modeling and prediction
Type Article
Keywords
Groundwater potentialGISData miningClassification-tree analysisIran
Abstract
Artificial-intelligence and machine-learning algorithms are gaining the attention of researchers in the field of groundwater modeling. This study explored and assessed a new approach based on Gini, Entropy, and Ratio based classification trees to predict spatial patterns of groundwater potential in a mountainous region of Iran. To do this, a springs inventory was undertaken, and 362 springs were identified in the study area. A set of geo-environmental and topo-hydrological factors (slope, aspect, elevation, topographic wetness index, distance from fault, distance from river, precipitation, land use, lithology, plan curvature, and roughness index) were used as predictors of groundwater. Results showed that Gini (AUC =0.865) achieved the best results, followed by entropy (AUC =0.847) and ratio (AUC =0.859). Lithology was determined to be the variable with the best association with groundwater in the study area. These results indicate that all three algorithms provide robust models of groundwater potential in this mountainous region.
Researchers Omid Rahmati (First researcher)
mohammad taghi avand (Second researcher)
peyman yarian (Third researcher)
John Tiefenbacherd (Fourth researcher)
ali Azareh (Fifth researcher)
dieu tien bui (Not in first six researchers)