TY - JOUR
T1 - Parallel hybrid modeling methods for a full-scale cokes wastewater treatment plant
AU - Lee, Dae Sung
AU - Vanrolleghem, Peter A.
AU - Jong, Moon Park
PY - 2005/2/9
Y1 - 2005/2/9
N2 - Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Within the hybrid model structure, a mechanistic model specifies the basic dynamics of the relevant process and a non-parametric model compensates for the inaccuracy of the mechanistic model. First, a simplified mechanistic model is developed based on Activated Sludge Model No. 1 and the specific process knowledge of the cokes wastewater treatment process. Then, the mechanistic model is combined with five different non-parametric models - feedforward back-propagation neural network, radial basis function network, linear partial least squares (PLS), quadratic PLS and neural network PLS (NNPLS) - in parallel configuration. These models are identified with the same data obtained from the plant operation to predict dynamic behavior of the process. The performance of each parallel hybrid model is compared based on their ease of model building, prediction accuracy and interpretability. For this application, the parallel hybrid model with NNPLS as non-parametric model gives better performance than other parallel hybrid models. In addition, the NNPLS model is used to analyze the behavior of the operation data in the reduced space and allows for fault detection and isolation.
AB - Parallel hybrid modeling methods are applied to a full-scale cokes wastewater treatment plant. Within the hybrid model structure, a mechanistic model specifies the basic dynamics of the relevant process and a non-parametric model compensates for the inaccuracy of the mechanistic model. First, a simplified mechanistic model is developed based on Activated Sludge Model No. 1 and the specific process knowledge of the cokes wastewater treatment process. Then, the mechanistic model is combined with five different non-parametric models - feedforward back-propagation neural network, radial basis function network, linear partial least squares (PLS), quadratic PLS and neural network PLS (NNPLS) - in parallel configuration. These models are identified with the same data obtained from the plant operation to predict dynamic behavior of the process. The performance of each parallel hybrid model is compared based on their ease of model building, prediction accuracy and interpretability. For this application, the parallel hybrid model with NNPLS as non-parametric model gives better performance than other parallel hybrid models. In addition, the NNPLS model is used to analyze the behavior of the operation data in the reduced space and allows for fault detection and isolation.
KW - Hybrid modeling
KW - Industrial wastewater treatment plant
KW - Mechanistic model
KW - Non-parametric model
KW - Partial least squares
UR - http://www.scopus.com/inward/record.url?scp=18944372441&partnerID=8YFLogxK
U2 - 10.1016/j.jbiotec.2004.09.001
DO - 10.1016/j.jbiotec.2004.09.001
M3 - Article
C2 - 15639094
AN - SCOPUS:18944372441
SN - 0168-1656
VL - 115
SP - 317
EP - 328
JO - Journal of Biotechnology
JF - Journal of Biotechnology
IS - 3
ER -