Literature DB >> 31472836

Artificial neural network and partial least square regressions for rapid estimation of cellulose pulp dryness based on near infrared spectroscopic data.

Lívia Ribeiro Costa1, Gustavo Henrique Denzin Tonoli2, Flaviana Reis Milagres3, Paulo Ricardo Gherardi Hein4.   

Abstract

The content of water in fiber suspension and affects pulp refining, bleaching and draining operations. Cellulose pulp dryness estimate through near infrared (NIR) spectroscopy coupled with multivariate regressions or artificial neural network (ANN) techniques are not well explored yet. In this study models were developed to estimate cellulose pulp dryness in pads based on the NIR spectra. Thus, the cellulose pulp pads (4 mm thick) were weighed and their NIR spectra were obtained in several stages during desorption from 13.1 to 98.3% of content of solids. Partial least square regression (PLS-R) was developed from whole NIR spectra (1300 Absorbance values) and six spectral variables (from 1300) were selected for developing the PLS-R (6) and the ANN model. Both trained neural network and regression can predict pulp dryness of unknown cellulose pulp pads from their NIR data with an error of 2.5%. PLS-R models based on whole NIR spectra showed accurate predictions (the R² of lab-determined and estimated values plot was 0.99) while the ANN showed the same predictive performance from only six NIR variables. Predictive models developed from full NIR spectra and those based on only 6 variables were compared. Our findings indicate that NIR spectroscopy coupled with multivariate analysis and Artificial neural networks are a promising tool for monitoring the weight variation due to dewatering of the cellulose pulps in real time.
Copyright © 2019 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  ANN; Cellulose fibers; Content of solids; NIR

Year:  2019        PMID: 31472836     DOI: 10.1016/j.carbpol.2019.115186

Source DB:  PubMed          Journal:  Carbohydr Polym        ISSN: 0144-8617            Impact factor:   9.381


  2 in total

1.  Rapid and robust on-scene detection of cocaine in street samples using a handheld near-infrared spectrometer and machine learning algorithms.

Authors:  Ruben F Kranenburg; Joshka Verduin; Yannick Weesepoel; Martin Alewijn; Marcel Heerschop; Ger Koomen; Peter Keizers; Frank Bakker; Fionn Wallace; Annette van Esch; Annemieke Hulsbergen; Arian C van Asten
Journal:  Drug Test Anal       Date:  2020-07-27       Impact factor: 3.345

2.  Determination of the physical state of a drug in amorphous solid dispersions using artificial neural networks and ATR-FTIR spectroscopy.

Authors:  Afroditi Kapourani; Vasiliki Valkanioti; Konstantinos N Kontogiannopoulos; Panagiotis Barmpalexis
Journal:  Int J Pharm X       Date:  2020-12-08
  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.