Modeling and optimization of process parameters of biofilm reactor for wastewater treatment
Citations

WEB OF SCIENCE

20
Citations

SCOPUS

21

초록

The efficiency of heavy metal in biofilm reactors depends on absorption process parameters, and those relationships are complicated. This study explores artificial neural networks (ANNs) feasibility to correlate the biofilm reactor process parameters with absorption efficiency. The heavy metal removal and turbidity were modeled as a function of five process parameters, namely pH, temperature(degrees C), feed flux(ml/min), substrate flow(ml/min), and hydraulic retention time(h). We developed a standalone ANN software for predicting and analyzing the absorption process in handling industrial wastewater. The model was tested extensively to confirm that the predictions are reasonable in the context of the absorption kinetics principles. The model predictions showed that the temperature and pH values are the most influential parameters affecting absorption efficiency and turbidity. (c) 2021 Elsevier B.V. All rights reserved.

키워드

Artificial neural networks (ANN)Biofilm reactorWastewater treatmentHeavy metal removal(IRI)Weight distributionARTIFICIAL NEURAL-NETWORKSMETAL-IONSHYBRID BIOFILMHEAVY-METALSREMOVALBIOMASSCAPACITYBIOSORPTIONPREDICTIONDESIGN
제목
Modeling and optimization of process parameters of biofilm reactor for wastewater treatment
저자
Maurya, A. K.Reddy, B. S.Theerthagiri, J.Narayana, P. L.Park, C. H.Hong, J. K.Yeom, J-TCho, K. K.Reddy, N. S.
DOI
10.1016/j.scitotenv.2021.147624
발행일
2021-09
유형
Article
저널명
Science of the Total Environment
787