Artificial neural network model for extracting knowledge from the electro-Fenton process for acid mine wastewater treatment
Citations

WEB OF SCIENCE

0
Citations

SCOPUS

0

초록

In this study, artificial neural networks (ANNs) were employed to analyze the complex interactions between electro-Fenton (EF) process variables (plate spacing, current intensity [CI], initial pH, aeration rate) and the Fe(II) and Mn(II) removal efficiency from wastewater. After experimenting with 69 different ANN architectures, the 4-8-8-2 architecture was identified as more efficient, achieving higher accuracy (adj. R2 of 0.93 for Fe(II) and 0.96 for Mn(II)) than the published model. The research provides valuable insights into the correlation between EF process parameters and removal efficiency, guiding the optimization of wastewater treatment processes. Sensitivity analysis revealed that CI significantly affects Mn(II) and Fe(II) removal efficiency. A user-friendly graphical interface was created based on the synaptic weights of the best model to enable practical predictions. It is designed to be accessible even to users without programing experience. An artificial neural network (ANN) model was used to explore the interactions among process variables in the electro-Fenton (EF) process. The focus of this research was on Fe(II) and Mn(II) removals from wastewater. The ANN successfully predicted removal efficiency, and this understanding can ultimately enhance the optimization of the EP for efficient wastewater treatment. image

키워드

artificial neural networkselectro-Fenton processFe(II) and Mn(II) removalsmine wastewaterBLUE 181 SOLUTIONMN(II)REMOVALOXIDATIONGROUNDWATERPREDICTIONFE(II)SYSTEMDYES
제목
Artificial neural network model for extracting knowledge from the electro-Fenton process for acid mine wastewater treatment
저자
Maurya, Anoop KumarNarayana, Pasupuleti LakshmiPaturi, Uma Maheshwera ReddyGari, Subba Reddy Nagireddy
DOI
10.1002/clen.202400029
발행일
2024-10
유형
Article
저널명
Clean - Soil, Air, Water
52
10