Article ID Journal Published Year Pages File Type
5480884 Journal of Cleaner Production 2017 21 Pages PDF
Abstract
There are several factors involved in selecting a suitable source of drinking water in each region. For instance, the quality and costs of water treatment are sometimes unreasonable due to the pollution of water sources. This has not so far been considered a hindering factor, while a new model can be developed to predict the variations of costs in the future before a project proves barely cost-effective. This paper attempted to employ the statistical data concerning the groundwater quality during a 13-year period in Bareh Bijeh located in Ilam, Iran, so as to propose a new model for predicting the costs of water treatment through reverse osmosis. For this purpose, concentrations of ions K, Na, Mg, Ca, Sr, Ba, CO3, HCO3, NO3, Cl, and SO4 were assumed to be the independent variable. In fact, the concentrations of these ions were the main variables in estimating the water treatment costs through ROSA. Moreover, 20% of the available data about the aquifer was considered test data. The results obtained from the final neural network model trained by Levenberg-Marquardt algorithm were compared against the calculated RMSE through ROSA until the most efficient model was selected. In this study, the optimal model was a neural network with three hidden layers and 18 neurons in the hidden layers, where the RMSE was obtained to be about 2.02%. Based on the trained neural network, the degree of influence of each parameter was determined by the results of the sensitivity analysis, and it was found that calcium and bicarbonate ions had the maximum influence on changes in the costs of treating water for drinking in the region so that these costs decreased by about 150,000 dollars daily when the concentrations of these ions were lowered by 50 percent.
Related Topics
Physical Sciences and Engineering Energy Renewable Energy, Sustainability and the Environment
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