Enhanced cellulose nanofiber mechanical stability through ionic crosslinking and interpretation of adsorption data using machine learning

Int J Biol Macromol. 2023 May 15:237:124180. doi: 10.1016/j.ijbiomac.2023.124180. Epub 2023 Mar 27.

Abstract

Herein we report the fabrication of cationic functionalized cellulose nanofibers (c-CNF) having 0.13 mmol.g-1 ammonium content and its ionic crosslinking via the pad-batch process. The overall chemical modifications were justified through infrared spectroscopy. It is revealed that the tensile strength of ionic crosslinked c-CNF (zc-CNF) improved from 3.8 MPa to 5.4 MPa over c-CNF. The adsorption capacity of zc--CNF was found to be 158 mg.g-1 followed by the Thomas model. Further, the experimental data were used to train and test a series of machine learning (ML) models. A total of 23 various classical ML models (as a benchmark) were compared simultaneously using Pycaret which helped reduce the programming complexity. However, shallow, and deep neural networks are used that outperformed the classic machine learning models. The best classical-tuned ML model using Random Forests regression had an accuracy of 92.6 %. The deep neural network made effective by early stopping and dropout regularization techniques, with 20 × 6 (Neurons x Layers) configuration, showed an appreciable prediction accuracy of 96 %.

Keywords: Cellulose; Deep neural network; Electrospinning; Ionic crosslinking; Pycaret; Thomas model.

MeSH terms

  • Adsorption
  • Cellulose* / chemistry
  • Ions
  • Nanofibers* / chemistry
  • Spectrophotometry, Infrared
  • Tensile Strength

Substances

  • Cellulose
  • Ions