Article, 2024

Pyrolysis behaviour of ultrafiltration polymer composite membranes (PSF/PET): Kinetic, thermodynamic, prediction modelling using artificial neural network and volatile product analysis

Fuel, ISSN 0016-2361, 1873-7153, Volume 369, Page 131779, 10.1016/j.fuel.2024.131779

Contributors

Yousef, Samy 0000-0002-4846-3202 (Corresponding author) [1] Eimontas, Justas 0000-0003-2655-0054 [2] Striūgas, Nerijus 0000-0002-3594-0903 [2] Mohamed, Alaa E 0000-0002-1439-8617 [3] Abdelnaby, Mohammed Ali 0000-0003-0275-1265 [4]

Affiliations

  1. [1] Kaunas University of Technology
  2. [NORA names: Lithuania; Europe, EU; OECD];
  3. [2] Lithuanian Energy Institute
  4. [NORA names: Lithuania; Europe, EU; OECD];
  5. [3] Aalborg University
  6. [NORA names: AAU Aalborg University; University; Denmark; Europe, EU; Nordic; OECD];
  7. [4] Mechatronics Systems Engineering Department, October University for Modern Sciences and Arts-MSA, Giza, Egypt
  8. [NORA names: Egypt; Africa]

Abstract

This study aims to explore the feasibility of managing ultrafiltration polymer composite membranes (UPCM) waste and converting it into valuable chemicals and energy products using a pyrolysis process. The thermal decomposition experiments were performed on polysulfone (PSF)/polyethylene terephthalate (PET) membranes using thermogravimetric analysis (TG). The vapors generated during the thermochemical process were analyzed under different heating rate conditions using TG-FTIR and GC/MS. In addition, the kinetic and thermodynamic parameters of the pyrolysis process were determined using conventional modeling methods and artificial neural network (ANN) method. The results demonstrated that the PSF/PET feedstock exhibits ahigh volatile matter content (77 % wt.%), which can be completely decomposed up to 600 °C by 79 wt%. While TG-FTIR analysis showed that the released vapors contained aromatic groups and benzoic acid (89.21 wt% at 15˚C/min) as the main GC/MS compound. Moreover, the kinetic analysis demonstrated complete decomposition of the membranes at a lower activation energy (151 kJ/mol). Meanwhile, the ANN model exhibited high performance in predicting the degradation stages of PSF/PET membranes under unknown heating conditions. This approach shows potential for modeling the thermal decomposition of ultrafiltration composite membranes more broadly.

Keywords

GC/MS, TG-FTIR, TG-FTIR analysis, acid, activation energy, activity, analysis, aromatic groups, artificial neural network, artificial neural network model, benzoic acid, chemical, composite membranes, compounds, conditions, content, decomposition, decomposition experiments, degradation, degradation stage, energy, energy production, experiments, feasibility, feedstock, group, heat, heating conditions, heating rate conditions, kinetic analysis, matter content, membrane, method, model, modeling method, network, neural network, parameters, performance, polymer composite membranes, polysulfone, prediction, prediction model, process, product analysis, production, pyrolysis, pyrolysis behavior, pyrolysis process, rate conditions, released vapor, results, study, terephthalate, thermal decomposition, thermal decomposition experiments, thermochemical processes, thermodynamic parameters, thermogravimetric analysis, ultrafiltration, vapor, volatile matter content, volatile products analysis, waste

Funders

  • Lietuvos Mokslo Taryba

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