RSM and ANN Comparative Modelling with a Granulation Treatment in Mixed Waters

Author:

Sanchez‐Sanchez Celina1ORCID,Morales‐Rivera Juan2ORCID,Moeller‐Chávez Gabriela3ORCID,Moreno‐Rodríguez Ernestina4ORCID,Flores‐Gómez Jean2ORCID

Affiliation:

1. Department of Civil and Environmental Engineering Engineering School Universidad de las Américas Puebla Cholula 72810 México

2. Department of Water and Energy Universidad de Guadalajara‐CUTonalá 555 Av Nuevo periférico Guadalajara 45425 México

3. Department of Environmental Engineering Universidad Politécnica del Estado de Morelos Jiutepec 62550 México

4. Department of Chemical Food and Engineering Engineering School Universidad de las Américas Puebla Cholula 72810 México

Abstract

AbstractA 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 efficiency for modeling the AGS. The RSM model and plot results indicate that the CT and AR were the most influential on COD removal efficiency. When compared with models with statistical indices, GWO‐ANN demonstrated higher performance compared to RSM.

Publisher

Wiley

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