Partial least squares (PLS) has been extensively used in process monitoring and modeling to deal with many, noisy, and collinear variables. However, the conventional linear PLS approach may be not effective due to the fundamental inability of linear regression techniques to account for nonlinearity and dynamics in most chemical and biological processes. A hybrid approach, by combining a nonlinear PLS approach with a dynamic modeling method, is potentially very efficient for obtaining more accurate prediction of nonlinear process dynamics. In this study, neural network PLS (NNPLS) were combined with finite impulse response (FIR) and auto-regressive with exogenous (ARX) inputs to model a full-scale biological wastewater treatment plant. It is...
To explore the complex dynamics of a full-scale anaerobic filter process treating the wastewater fro...
Industrial processes generate large quantities of waste, resulting in health problems and adverse en...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
We applied a nonlinear fuzzy partial least squares (FPLS) algorithm for modeling a biological wastew...
In recent years, hybrid neural network approaches, which combine mechanistic and neural network mode...
Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Withi...
A new scheme of robust adaptive partial least squares (PLS) method was proposed for the purpose of p...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
Neural networks can provide effective predictive models for complex processes that are poorly descri...
A Wiener-Laguerre model with artificial neural network (ANN) as its nonlinear static part was employ...
Abstract—To solve the strong nonlinearity and data deterioration due to missing, outliers contained ...
It is difficult to unveil the complicated interrelationships of wastewater parameters using linear ...
The dynamic and complex municipal wastewater treatment plant (MWWTP) process should be handled effic...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
Accurate well-timed measurement of quality variables is essential to the successful monitoring and c...
To explore the complex dynamics of a full-scale anaerobic filter process treating the wastewater fro...
Industrial processes generate large quantities of waste, resulting in health problems and adverse en...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
We applied a nonlinear fuzzy partial least squares (FPLS) algorithm for modeling a biological wastew...
In recent years, hybrid neural network approaches, which combine mechanistic and neural network mode...
Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Withi...
A new scheme of robust adaptive partial least squares (PLS) method was proposed for the purpose of p...
The main challenges to achieving a reliable model which can predict well the process are the nonline...
Neural networks can provide effective predictive models for complex processes that are poorly descri...
A Wiener-Laguerre model with artificial neural network (ANN) as its nonlinear static part was employ...
Abstract—To solve the strong nonlinearity and data deterioration due to missing, outliers contained ...
It is difficult to unveil the complicated interrelationships of wastewater parameters using linear ...
The dynamic and complex municipal wastewater treatment plant (MWWTP) process should be handled effic...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...
Accurate well-timed measurement of quality variables is essential to the successful monitoring and c...
To explore the complex dynamics of a full-scale anaerobic filter process treating the wastewater fro...
Industrial processes generate large quantities of waste, resulting in health problems and adverse en...
A statistical modeling tool called artificial neural network (ANN) is used in this work to predict t...