4.7 Article

Modeling groundwater potential using novel GIS-based machine-learning ensemble techniques

Journal

JOURNAL OF HYDROLOGY-REGIONAL STUDIES
Volume 36, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.ejrh.2021.100848

Keywords

Groundwater; Machine learning; Random subspace; Ensemble models; RS-GIS; Iran

Funding

  1. Basic Research Project of the Korea Institute of Geoscience and Mineral Resources (KIGAM)
  2. Project of Environmental Business Big Data Platform and Center Construction - Ministry of Science and ICT

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This study conducted groundwater potential research in the Tabriz River basin in northwestern Iran, successfully mapping GWP with a hybrid model and identifying slope, elevation, TRI, and HAND as the most important predictors of groundwater presence. The study demonstrates that hybrid ensemble models can support sustainable management of groundwater resources.
Study region: The present study has been carried out in the Tabriz River basin (5397 km(2)) in northwestern Iran. Elevations vary from 1274 to 3678 m above sea level, and slope angles range from 0 to 150.9 %. The average annual minimum and maximum temperatures are 2 degrees C and 12 degrees C, respectively. The average annual rainfall ranges from 243 to 641 mm, and the northern and southern parts of the basin receive the highest amounts. Study focus: In this study, we mapped the groundwater potential (GWP) with a new hybrid model combining random subspace (RS) with the multilayer perception (MLP), naive Bayes tree (NBTree), and classification and regression tree (CART) algorithms. A total of 205 spring locations were collected by integrating field surveys with data from Iran Water Resources Management, and divided into 70:30 for training and validation. Fourteen groundwater conditioning factors (GWCFs) were used as independent model inputs. Statistics such as receiver operating characteristic (ROC) and five others were used to evaluate the performance of the models. New hydrological insights for the region: The results show that all models performed well for GWP mapping (AUC > 0.8). The hybrid MLP-RS model achieved high validation scores (AUC = 0.935). The relative importance of GWCFs was revealed that slope, elevation, TRI and HAND are the most important predictors of groundwater presence. This study demonstrates that hybrid ensemble models can support sustainable management of groundwater resources.

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