2021
DOI: 10.1155/2021/5264531
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Employing Artificial Neural Networks to Predict the Performance of Domestic Sewage Treatment Terminals in the Rural Region

Abstract: Domestic sewage in rural regions is mainly treated by small-scale treatment terminals in China. The large quantities and high dispersion of these terminals render the chemical measurement of effluent to be a time and energy intensive work and further hinder the efficient surveillance of terminals’ performance. After a thorough investigation of 136 operating terminals, this study successfully employs two artificial neural network (ANN) models to predict effluent total nitrogen (TN) and COD (R2 both higher than … Show more

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Cited by 4 publications
(2 citation statements)
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“…The one hidden layer standard multilayer feed-forward network has been considered a universal approximator (Lin et al, 2021;Zhang and Pan, 2014). However, this study configures the model with two hidden layers.…”
Section: Process Modeling Using Ann-gamentioning
confidence: 99%
“…The one hidden layer standard multilayer feed-forward network has been considered a universal approximator (Lin et al, 2021;Zhang and Pan, 2014). However, this study configures the model with two hidden layers.…”
Section: Process Modeling Using Ann-gamentioning
confidence: 99%
“…The third approach is following the water quality requirements mode, which adjusts the process conditions of wastewater treatment equipment to achieve adjustable effluent quality based on the characteristics of agricultural water use [31]. This approach addresses the imbalance between wastewater discharge and agricultural water demand [32]. The fourth type is the black and grey water separation model based on source separation and quality-based treatment.…”
Section: Research Status Of Rural Sewage Resource Utilizationmentioning
confidence: 99%