Sludge Volume Index (SVI) is one of the most important operational parameters in an activated sludge process. It is difficult to predict SVI because of the nonlinearity of data and variability operation conditions. With complex time-series data from Wastewater Treatment Plants (WWTPs), the Recurrent Neural Network (RNN) with an Explainable Artificial Intelligence was applied to predict SVI and interpret the prediction result. RNN architecture has been proven to efficiently handle time-series and non-uniformity data. Moreover, due to the complexity of the model, the newly Explainable Artificial Intelligence concept was used to interpret the result. Data were collected from the Nine Springs Wastewater Treatment Plant, Madison, Wisconsin, and ...
Water pollution generated from intensive anthropogenic activities has emerged as a critical issue co...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
There are complex and nonlinear causal relationships among the different quality and quantity parame...
Sludge volume index (SVI) can evaluate and reflect the aggregation of activated sludge sediment prop...
In biological wastewater treatment plants the biomass is separated from the treated wastewater in th...
Sludge bulking is the most common solids settling problem in wastewater treatment plants, which is c...
Thesis (MTech (Electrical Engineering))--Cape Peninsula University of Technology, 2007In order to de...
The processes at a wastewater treatment plant (WWTP) are complex systems thatclean the wastewater be...
Wastewater treatment plants (WWTPs) are complex systems that must maintain high levels of performanc...
In the study, models developed using data mining methods are proposed for predicting wastewater qual...
International audienceThis research focuses on applying artificial neural networks with nonlinear tr...
The control and prediction of wastewater treatment plants poses an important goal: to avoid breaking...
A prediction of the wastewater treatment plant (WWTP) using a genetic algorithm based on historical ...
Context: To increase the efficiency of wastewater treatment, modeling and optimization of pollutant ...
Water pollution generated from intensive anthropogenic activities has emerged as a critical issue co...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
There are complex and nonlinear causal relationships among the different quality and quantity parame...
Sludge volume index (SVI) can evaluate and reflect the aggregation of activated sludge sediment prop...
In biological wastewater treatment plants the biomass is separated from the treated wastewater in th...
Sludge bulking is the most common solids settling problem in wastewater treatment plants, which is c...
Thesis (MTech (Electrical Engineering))--Cape Peninsula University of Technology, 2007In order to de...
The processes at a wastewater treatment plant (WWTP) are complex systems thatclean the wastewater be...
Wastewater treatment plants (WWTPs) are complex systems that must maintain high levels of performanc...
In the study, models developed using data mining methods are proposed for predicting wastewater qual...
International audienceThis research focuses on applying artificial neural networks with nonlinear tr...
The control and prediction of wastewater treatment plants poses an important goal: to avoid breaking...
A prediction of the wastewater treatment plant (WWTP) using a genetic algorithm based on historical ...
Context: To increase the efficiency of wastewater treatment, modeling and optimization of pollutant ...
Water pollution generated from intensive anthropogenic activities has emerged as a critical issue co...
A reliable model for any Wastewater Treatment Plant WWTP is essential in order to provide a tool for...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...