Abstract:
The performance of fluidized bed reactors
treating synthetic acid mine drainage were predicted using
an artificial neural network (ANN). The developed model
gave satisfactory fits to the experimentally obtained sulfate,
COD, alkalinity, and sulfide data; R-values were within
0.92 and 0.98. ANN can be effectively used to predict the
performance of these complex systems and, with the proposed model-based applications, it is possible to reduce
operational costs and risks.