Arid
Prediction of chemical water quality used for drinking purposes based on artificial neural networks
El Bilali, Ali; Abdeslam, Taleb; Mazigh, Nouhaila; Mokhliss, Mohammed
通讯作者El Bilali, A
来源期刊MOROCCAN JOURNAL OF CHEMISTRY
ISSN2351-812X
出版年2020
卷号8期号:3页码:665-672
英文摘要The Groundwater resources generally have a good water quality and can be used for drinking purposes than water surfaces. However, the anthropogenic activities and climate change effects have been degrading the groundwater quality particularly in the arid and semi-arid areas. In addition, the monitoring of water quality in these regions is poor, as it is expensive and faces financial constraints, notably in rural areas. For this problem, we need to develop a new alternative that allows us to predict the water quality easily. Therefore, the solutions of this challenge would be to develop accurate and reliable models that would allow the prediction of chemical parameters commonly, used for evaluating the suitability of water for drinking uses. This study aims to develop Artificial Neural Networks (ANN) models for predicting the Total Dissolved Solid (TDS in mg/l), Total Hardness (TH), sulphate (SO42-) mg/l and Chloride (Cl-) mg/L parameters using Electrical Conductivity (EC), pH and Temperature as input variables. These models were developed based on the 42 samples collected and analyzed from Tanobart Groundwater in Morocco. Among the 42 samples, 30 samples were used for training of the models while the remaining data were used for the validation processes. The results showed that the ANN models are highly accurate for predicting the TDS, TH, Sulphate and of Chloride with coefficients of determination 0.962, 0.993, 0.986 and 0.957 for the TH, TDS, Sulphate and Chloride parameters respectively, for training processes. Also, the results during the calibration revealed a good accuracy for predicting theses parameters. Hence, these models can improve the water quality monitoring in rural areas to assess the chemical suitability of water for drinking purpose with low costs and in a short time.
英文关键词Artificial Neural Network Total Hardness Total Dissolved Solid Sulphate Chloride
类型Article
语种英语
收录类别ESCI
WOS记录号WOS:000546797600011
WOS关键词SALINIZATION PROCESS ; CHAOUIA
WOS类目Chemistry, Multidisciplinary
WOS研究方向Chemistry
资源类型期刊论文
条目标识符http://119.78.100.177/qdio/handle/2XILL650/334456
作者单位[El Bilali, Ali; Abdeslam, Taleb; Mazigh, Nouhaila; Mokhliss, Mohammed] Univ Hassan 2, Fac Sci & Tech Mohammedia, Casablanca, Morocco
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GB/T 7714
El Bilali, Ali,Abdeslam, Taleb,Mazigh, Nouhaila,et al. Prediction of chemical water quality used for drinking purposes based on artificial neural networks[J],2020,8(3):665-672.
APA El Bilali, Ali,Abdeslam, Taleb,Mazigh, Nouhaila,&Mokhliss, Mohammed.(2020).Prediction of chemical water quality used for drinking purposes based on artificial neural networks.MOROCCAN JOURNAL OF CHEMISTRY,8(3),665-672.
MLA El Bilali, Ali,et al."Prediction of chemical water quality used for drinking purposes based on artificial neural networks".MOROCCAN JOURNAL OF CHEMISTRY 8.3(2020):665-672.
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