Evaluation of the Thermogravimetric Profile of Hybrid Cellulose Acetate Membranes using Machine Learning Approaches

Authors

  • Filipi França dos Santos Universidade do Estado do Rio de Janeiro, Instituto Politécnico, Nova Friburgo, RJ, Brasil
  • Kelly Cristina Da Silveira Universidade do Estado do Rio de Janeiro, Instituto Politécnico, Nova Friburgo, RJ, Brasil http://orcid.org/0000-0002-6055-6778
  • Daniela Herdy Carrielo Universidade do Estado do Rio de Janeiro, Instituto Politécnico – Nova Friburgo, RJ, Brasil https://orcid.org/0000-0002-0869-4911
  • Gesiane Mendonça Ferreira Universidade do Estado do Rio de Janeiro, Instituto Politécnico, Nova Friburgo, RJ, Brasil https://orcid.org/0000-0001-9338-1217
  • Guilherme de Melo Baptista Domingues Universidade do Estado do Rio de Janeiro, Instituto Politécnico, Nova Friburgo, RJ, Brasil
  • Monica Calixto Andrade Universidade do Estado do Rio de Janeiro, Instituto Politécnico, Nova Friburgo, RJ, Brasil https://orcid.org/0000-0001-6530-0651

DOI:

https://doi.org/10.14295/vetor.v33i1.15167

Keywords:

cellulose acetate membranes, machine learning, Thermogravimetric analysis (TG)

Abstract

Thermogravimetric analysis (TGA) is a characterization technique routinely used in materials science. In this particular case, TGA determines the variation of weight with temperature. The thermogravimetric analysis of cellulose acetate (CA) hybrid membranes can provide similar results, despite their different chemical composition. The present study uses machine learning algorithms to correlate data from thermogravimetric analyses with variations in chemical composition. Experimental points relating to temperature and weight from these analyses were treated in different ways and used to estimate the composition of the membranes. The Extra-Trees Classifier, Random Forest, Decision Tree, and K-Nearest Neighbors (KNN) algorithms were applied to this data and then evaluated using a confusion and accuracy matrix. The decision tree-based algorithms demonstrated a superior capacity for estimating the composition, albeit with negligible disparities in the thermogravimetric profile. The Extra-Trees Classifier algorithm, in particular, stood out for its ability to estimate composition in all tests, achieving 90% accuracy.

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Published

2023-06-28

How to Cite

França dos Santos, F., Da Silveira, K. C., Carrielo, D. H., Ferreira, G. M., Domingues, G. de M. B., & Andrade, M. C. (2023). Evaluation of the Thermogravimetric Profile of Hybrid Cellulose Acetate Membranes using Machine Learning Approaches. VETOR - Journal of Exact Sciences and Engineering, 33(1), 51–59. https://doi.org/10.14295/vetor.v33i1.15167

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