RSM and ANN Comparative Modelling with a Granulation Treatment in Mixed Waters
Celina Sanchez‐Sanchez,
Juan Morales‐Rivera,
Gabriela Moeller‐Chávez
et al.
Abstract:A Box‐Behnken design was used for the analysis using a gray wolf optimizer (GWO)‐coupled artificial neural network (ANN) model and response surface methodology (RSM) to analyze the effect of three operating parameters (volumetric exchange ratio [VER], aeration rate [AR], and cycle time [CT]) manipulated during an aerobic granular sludge process (AGS) sequencing batch reactor on modeling the removal of chemical oxygen demand (COD) in mixed wastewater. The most efficient architecture for COD showed the highest e… Show more
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