The dynamic and complex municipal wastewater treatment plant (MWWTP) process should be handled efficiently to safeguard the excellent quality of effluents characteristics. Most of the available mathematical models do not efficiently capture the MWWTP process, in such cases, the data-driven models are reliable and indispensable for effective modeling of effluents characteristics. In the present research, two nonlinear system identification (NSI) models namely; Hammerstein-Wiener model (HW) and nonlinear autoregressive with exogenous (NARX) neural network model, and a classical autoregressive (AR) model were proposed to predict the characteristics of the effluent of total suspended solids (TSSeff) and pHeff from Nicosia MWWTP in Cyprus. In or...
A region’s population growth inevitably results in higher water consumption. This persistent rise in...
Wastewater flow forecasts are key components in the short- and long-term management of sewer systems...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
The dynamic and complex municipal wastewater treatment plant (MWWTP) process should be handled effic...
International audienceThis research focuses on applying artificial neural networks with nonlinear tr...
Recently, process control in wastewater treatment plants (WWTPs) is, mostly accomplished through exa...
The processes at a wastewater treatment plant (WWTP) are complex systems thatclean the wastewater be...
Due to the intrinsic complexity of wastewater treatment plant (WWTP) processes, it is always challen...
Environmental sensors are utilized to collect real-time data that can be viewed and interpreted usin...
Abstract—To solve the strong nonlinearity and data deterioration due to missing, outliers contained ...
Wastewater treatment plants (WWTPs) are complex systems that must maintain high levels of performanc...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
It is difficult to unveil the complicated interrelationships of wastewater parameters using linear ...
In this paper, nonlinear system identification of the activated sludge process in an industrial wast...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
A region’s population growth inevitably results in higher water consumption. This persistent rise in...
Wastewater flow forecasts are key components in the short- and long-term management of sewer systems...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
The dynamic and complex municipal wastewater treatment plant (MWWTP) process should be handled effic...
International audienceThis research focuses on applying artificial neural networks with nonlinear tr...
Recently, process control in wastewater treatment plants (WWTPs) is, mostly accomplished through exa...
The processes at a wastewater treatment plant (WWTP) are complex systems thatclean the wastewater be...
Due to the intrinsic complexity of wastewater treatment plant (WWTP) processes, it is always challen...
Environmental sensors are utilized to collect real-time data that can be viewed and interpreted usin...
Abstract—To solve the strong nonlinearity and data deterioration due to missing, outliers contained ...
Wastewater treatment plants (WWTPs) are complex systems that must maintain high levels of performanc...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
It is difficult to unveil the complicated interrelationships of wastewater parameters using linear ...
In this paper, nonlinear system identification of the activated sludge process in an industrial wast...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
A region’s population growth inevitably results in higher water consumption. This persistent rise in...
Wastewater flow forecasts are key components in the short- and long-term management of sewer systems...
The main challenges to achieving a reliable model which can predict well the process are the nonline...