National Center for Studies and Research on Water and Energy (CNEREE), Cadi Ayyad University, Marrakech, Morocco; Laboratory of Water, Biodiversity and Climate Change, Faculty of Sciences Semlalia, Cadi Ayyad University, Marrakech, Morocco.
National Center for Studies and Research on Water and Energy (CNEREE), Cadi Ayyad University, Marrakech, Morocco.
Ecotoxicol Environ Saf. 2020 Nov;204:111118. doi: 10.1016/j.ecoenv.2020.111118. Epub 2020 Aug 11.
Many indicators are involved in monitoring water quality. For instance, the fecal indicator bacteria are extremely important to detect the water quality. For this purpose, to better predict the total coliforms at the outlet of a Multi-Soil-Layering (MSL) system designed to treat domestic wastewater in rural areas, a neural network model has been developed and compared with linear regression model. The data was collected from the raw and treated wastewater of a three MSL systems during a one-year period in rural village, in Al-Haouz Province, Morocco. Fifteen physicochemical and bacteriological variables have undergone feature selection to select the best ones for predicting the total coliforms concentration in the effluent of MSL system. Furthermore, 80% of the available dataset were used to train and optimize the neural model using repeated cross validation technique. The remaining part (20%) was used to test the developed model. The neural network indicated excellent results compared to the linear regression. The optimal model was a neural network with one hidden layer and 11 neurons, where the R was about 97%. The importance analysis of each predictor was established, and it was found that pH and total suspended solids had the greatest influence on the total coliforms removal.
许多指标都涉及水质监测。例如,粪便指示细菌对于检测水质极其重要。为此,为了更好地预测设计用于处理农村地区生活污水的多层土壤过滤(MSL)系统出口处的总大肠菌群,已经开发了一个神经网络模型,并与线性回归模型进行了比较。数据是从摩洛哥阿哈祖省一个农村地区的三个 MSL 系统的原水和处理水中收集的,为期一年。经过特征选择,15 个理化和细菌变量被用来选择预测 MSL 系统出水中总大肠菌群浓度的最佳变量。此外,80%的可用数据集用于使用重复交叉验证技术训练和优化神经网络模型。其余部分(20%)用于测试开发的模型。与线性回归相比,神经网络显示出优异的结果。最佳模型是一个具有一个隐藏层和 11 个神经元的神经网络,其中 R 约为 97%。建立了每个预测因子的重要性分析,结果发现 pH 值和总悬浮固体对总大肠菌群的去除有最大的影响。