Title of article :
Activated sludge wastewater treatment plant modelling and
simulation: state of the art
Author/Authors :
Krist V. Gernaey a، نويسنده , , ?، نويسنده , , Mark C.M. van Loosdrecht، نويسنده , , Mogens Henze and others، نويسنده , , Morten Lind d، نويسنده , , Sten
B. J?rgensen a، نويسنده ,
Issue Information :
ماهنامه با شماره پیاپی سال 2004
Abstract :
This review paper focuses on modelling of wastewater treatment plants (WWTP). White-box modelling is widely applied in this
field, with learning, design and process optimisation as the main applications. The introduction of the ASM model family by the
IWA task group was of great importance, providing researchers and practitioners with a standardised set of basis models. This
paper introduces the nowadays most frequently used white-box models for description of biological nitrogen and phosphorus removal
activated sludge processes. These models are mainly applicable to municipal wastewater systems, but can be adapted easily to
specific situations such as the presence of industrial wastewater. Some of the main model assumptions are highlighted, and their
implications for practical model application are discussed. A step-wise procedure leads from the model purpose definition to a
calibrated WWTP model. Important steps in the procedure are: model purpose definition, model selection, data collection, data
reconciliation, calibration of the model parameters and model unfalsification. The model purpose, defined at the beginning of the
procedure, influences the model selection, the data collection and the model calibration. In the model calibration a process engineering
approach, i.e. based on understanding of the process and the model structure, is needed. A calibrated WWTP model, the result
of an iterative procedure, can usually be obtained by only modifying few model parameters, using the default parameter sets as a
starting point. Black-box, stochastic grey-box and hybrid models are useful in WWTP applications for prediction of the influent
load, for estimation of biomass activities and effluent quality parameters. These modelling methodologies thus complement the
process knowledge included in white-box models with predictions based on data in areas where the white-box model assumptions
are not valid or where white-box models do not provide accurate predictions. Artificial intelligence (AI) covers a large spectrum
of methods, and many of them have been applied in applications related to WWTPs. AI methodologies and white-box models can
interact in many ways; supervisory control systems for WWTPs are one evident application. Modular agent-based systems combining
several AI and modelling methods provide a great potential. In these systems, AI methods on one hand can maximise the knowledge
extracted from data and operator experience, and subsequently apply this knowledge to improve WWTP control. White-box models
on the other hand allow evaluating scenarios based on the available process knowledge about the WWTP. A white-box model
calibration tool, an AI based WWTP design tool and a knowledge representation tool in the WWTP domain are other potential
applications where fruitful interactions between AI methods and white-box models could be developed.
Keywords :
wastewater treatment plant , artificial intelligence , Activated sludge , Modelling
Journal title :
Environmental Modelling and Software
Journal title :
Environmental Modelling and Software