Paper mills are among the most polluting industries, responsible for many organic and inorganic compounds emissions. The fibres electro-kinetic features strongly affect the ability to retain fillers since the fillers-fibres interactions are charge induced. The control and the prediction of these parameters would represent a precious aid for process management, allowing the fillers retention enhancement, a lower environmental impact and the paper sheet properties streamlining. The work presented deals with the implementation and training of four artificial neural networks (ANNs) for the prediction of the main electrochemical and physical features of cellulose pulp and paper. First, two ANNs predict the electrochemical parameters. Following, they were applied to predict the paper sheet properties and fillers retention. The neural models implemented showed outstanding prediction performance, with R-2 in the order of 0.999 and a low mean error. The results demonstrate how Artificial Neural Networks may be a valuable instrument for paper mill pollutant reduction. However, they suggest a more inclusive investigation for a better fibres behaviour representation. (C) 2021 Elsevier Ltd. All rights reserved.

Almonti, D., Baiocco, G., Ucciardello, N. (2021). Pulp and paper characterization by means of artificial neural networks for effluent solid waste minimization—A case study. JOURNAL OF PROCESS CONTROL, 105, 283-291 [10.1016/j.jprocont.2021.08.012].

Pulp and paper characterization by means of artificial neural networks for effluent solid waste minimization—A case study

Almonti D.;Baiocco G.;Ucciardello N.
2021-01-01

Abstract

Paper mills are among the most polluting industries, responsible for many organic and inorganic compounds emissions. The fibres electro-kinetic features strongly affect the ability to retain fillers since the fillers-fibres interactions are charge induced. The control and the prediction of these parameters would represent a precious aid for process management, allowing the fillers retention enhancement, a lower environmental impact and the paper sheet properties streamlining. The work presented deals with the implementation and training of four artificial neural networks (ANNs) for the prediction of the main electrochemical and physical features of cellulose pulp and paper. First, two ANNs predict the electrochemical parameters. Following, they were applied to predict the paper sheet properties and fillers retention. The neural models implemented showed outstanding prediction performance, with R-2 in the order of 0.999 and a low mean error. The results demonstrate how Artificial Neural Networks may be a valuable instrument for paper mill pollutant reduction. However, they suggest a more inclusive investigation for a better fibres behaviour representation. (C) 2021 Elsevier Ltd. All rights reserved.
2021
Pubblicato
Rilevanza internazionale
Articolo
Esperti anonimi
Settore ING-IND/16 - TECNOLOGIE E SISTEMI DI LAVORAZIONE
English
Manufacturing
Artificial neural network
Optimization
Zeta potential
Charge demand
Sustainability
Almonti, D., Baiocco, G., Ucciardello, N. (2021). Pulp and paper characterization by means of artificial neural networks for effluent solid waste minimization—A case study. JOURNAL OF PROCESS CONTROL, 105, 283-291 [10.1016/j.jprocont.2021.08.012].
Almonti, D; Baiocco, G; Ucciardello, N
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/2108/300431
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