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  4. Sustainable Groundwater Management in Water-Scarce Regions: A Spatial Machine Learning Analysis from Rajshahi, Bangladesh
 
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Sustainable Groundwater Management in Water-Scarce Regions: A Spatial Machine Learning Analysis from Rajshahi, Bangladesh

Journal
Research in Ecology
ISSN
2661-3379
Date Issued
2025-08-12
Author(s)
Sumaya Tabassum
Likhon Chandra Roy
Amit Kumar Sarkar
Yassine Ezaier
Hader Ahmed
Lghazi Youssef
HESAM, KAMYAB  
Facultad de Arquitectura y Urbanismo  
Hussameldin Ibrahim
Mohammad Yusuf
DOI
https://doi.org/10.30564/re.v7i3.10453
Abstract
Ensuring the availability and sustainable management of water (SDG 6) is particularly challenging in dry regions like Rajshahi, Bangladesh, where communities rely heavily on groundwater with limited recharge potential. Issues such as declining water levels and contamination by iron, arsenic, and chloride compromise both user satisfaction and public health. This study aimed to assess groundwater quality risks through regional mapping to guide the installation depth of new water sources. In collaboration with the Department of Public Health Engineering (DPHE), data were collected from 7,388 tube wells across nine upazilas, including well depth, geographic coordinates, and contaminant concentrations. Water quality was evaluated against World Health Organization and Bangladesh standards. Machine learning (XGBoost) and spatial analysis were applied to model contaminant levels based on location and well depth. An initial model showed poor performance, but after identifying and correcting key errors, the refined model yielded significant improvements: R² increased from 0.0345 to 0.62 for iron, from −0.0015 to 0.38 for arsenic, and from 0.12 to 0.71 for chloride. A comprehensive water quality risk map was developed by integrating these results at the upazila level. This map provides actionable insights for government agencies and NGOs to prioritize areas for water quality testing, remediation, and public awareness initiatives, contributing to more informed and sustainable water resource management in the region.
Subjects

Arsenic Contamination...

SDG 6

Iron Contamination

Health Risk

Groundwater Accessibi...

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