Title of article :
Optimization of DRASTIC method by artificial neural network, nitrate vulnerability index, and composite DRASTIC models to assess groundwater vulnerability for unconfined aquifer of Shiraz Plain, Iran
Author/Authors :
Baghapour، Mohammad Ali نويسنده Department of Environmental Health Engineering, School of Health and Nutrition, Shiraz University of Medical Sciences, Shiraz, Iran , , Fadaei Nobandegani، Amir نويسنده Department of Environmental Health Engineering, School of Health, Shiraz University of Medical Sciences, Shiraz, Iran; , , Talebbeydokhti، Nasser نويسنده Department of Civil & Environmental Engineering, Shiraz University , , Bagherzadeh-Khodashahri، Somayeh نويسنده M.Sc. Student, Department of Microbiology, Kerman Science and Research Branch, Islamic Azad University, Kerman, Iran. Bagherzadeh-Khodashahri, Somayeh , Nadiri، Ata Allah نويسنده Department of Earth Science, Faculty of Science, University of Tabriz , , Gharekhani، Maryam نويسنده Department of Earth Science, Faculty of Science, University of Tabriz , , Chitsazan، Nima نويسنده Research Engineer at EnTech Engineering ,
Abstract :
Background: Extensive human activities and unplanned land uses have put groundwater resources of Shiraz plain
at a high risk of nitrate pollution, causing several environmental and human health issues. To address these issues,
water resources managers utilize groundwater vulnerability assessment and determination of protection. This study
aimed to prepare the vulnerability maps of Shiraz aquifer by using Composite DRASTIC index, Nitrate Vulnerability
index, and artificial neural network and also to compare their efficiency.
Methods: The parameters of the indexes that were employed in this study are: depth to water table, net recharge,
aquifer media, soil media, topography, impact of the vadose zone, hydraulic conductivity, and land use. These parameters
were rated, weighted, and integrated using GIS, and then, used to develop the risk maps of Shiraz aquifer.
Results: The results indicated that the southeastern part of the aquifer was at the highest potential risk. Given
the distribution of groundwater nitrate concentrations from the wells in the underlying aquifer, the artificial
neural network model offered greater accuracy compared to the other two indexes. The study concluded that
the artificial neural network model is an effective model to improve the DRASTIC index and provides a confident
estimate of the pollution risk.
Conclusions: As intensive agricultural activities are the dominant land use and water table is shallow in the vulnerable
zones, optimized irrigation techniques and a lower rate of fertilizers are suggested. The findings of our study could be
used as a scientific basis in future for sustainable groundwater management in Shiraz plain.