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Research on plastic pollution is crucial, particularly with the recent emphasis on converting waste plastics into oil for sustainable energy. Very few studies have utilized artificial neural network (ANN) modeling for plastic thermal conversion, such as predicting fuel yield from mixed plastics and performing sensitivity analyses to identify which plastics produce more oil. Meanwhile, no study has conducted a comparative analysis of different models for catalytic and non-catalytic thermal conversion of various plastics, nor has a sensitivity analysis of process parameters using ANN for oil production. This study aims to (1) validate and predict oil yield across different catalytic and non-catalytic thermal conversion processes for plastics using MATLAB-based ANN training; (2) perform sensitivity analysis on process parameters affecting oil production; and (3) forecast oil yield using virtual input parameters not included in real experiments. The models demonstrate R values near 1 and mean squared error (MSE) values close to zero, indicating strong validation. For catalytic polyethylene (PE) pyrolysis, the impact ranking is reaction temperature (36.9 %) > pressure (32.1 %) > Zn loading in ZSM5 (30.9 %). In non-catalytic PE and biomass co-torrefaction, the impact ranking is reaction temperature (47.2 %) > feedstock-to-solvent ratio (23.9 %) > biomass-to-PE ratio (16.6 %) > experimental duration (12.1 %). For catalytic mixed plastic (MP) torrefaction, the ranking is reaction temperature (54.8 %) > duration (18.4 %) > solid-to-liquid ratio (15.9 %) > NaOH amount (10.8 %). In non-catalytic MP pyrolysis, the significance ranking is particle size (44.51 %) > pyrolysis temperature (34.4 %) > pyrolysis duration (21.06 %). Accordingly, temperature, catalyst loading, and duration are critical for catalytic processes, while particle size and temperatures affect non-catalytic pyrolysis. The predicted and experimental outcomes differ by only 1 to 3, demonstrating that the models accurately simulate the predicted values. This study uses ANN sensitivity analysis to compare catalytic and non-catalytic methods, offering insights into scale-up applications and sustainability.
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http://dx.doi.org/10.1016/j.scitotenv.2024.177866 | DOI Listing |
An Acad Bras Cienc
May 2025
Sri Ramakrishna Engineering College, Department of Mechanical Engineering, Coimbatore 641022, Tamil Nadu, India.
This investigation elucidates the co-pyrolysis of neem seed cake in combination with plastic waste across a spectrum of mass ratios namely, 0:1, 3:1, 2:1, 1:1, 1:2, 1:3, and 1:0 subjected to varying pyrolytic temperatures from 350°C to 650°C, employing a CuO catalyst as a facilitating agent. The research concentrated on elucidating the effect of reaction temperature and the blend ratio of neem seed cake to plastic waste on the distribution of products and the chemical composition of the resultant pyrolysis oil. The co-pyrolysis performed at a 1:2 ratio of neem seed cake to plastic waste yielded an optimal oil production of 69.
View Article and Find Full Text PDFBioresour Technol
June 2025
School of Environmental Engineering, University of Seoul, Seoul 02504, Republic of Korea. Electronic address:
Widespread reliance on fossil fuels and their increasing costs have necessitated the search for viable alternatives. This study details a reliable method for generating jet fuel-range aromatic hydrocarbons (C-C) via catalytic pyrolysis of woody biomass. To do this, HZSM-5 was modified using NaOH (N-HZSM-5) and HCl (H-HZSM-5) and utilized in the pyrolysis of three types of sawdust (S1, S2, and S3).
View Article and Find Full Text PDFBioresour Technol
March 2025
Department of Earth Resources and Environmental Engineering, Hanyang University, Seoul 04763 Republic of Korea. Electronic address:
Sci Total Environ
January 2025
Research Center for Smart Sustainable Circular Economy, Tunghai University, Taichung 407, Taiwan; Department of Chemical and Materials Engineering, Tunghai University, Taichung 407, Taiwan.
Research on plastic pollution is crucial, particularly with the recent emphasis on converting waste plastics into oil for sustainable energy. Very few studies have utilized artificial neural network (ANN) modeling for plastic thermal conversion, such as predicting fuel yield from mixed plastics and performing sensitivity analyses to identify which plastics produce more oil. Meanwhile, no study has conducted a comparative analysis of different models for catalytic and non-catalytic thermal conversion of various plastics, nor has a sensitivity analysis of process parameters using ANN for oil production.
View Article and Find Full Text PDFJ Environ Manage
January 2025
Department of Global Smart City, Sungkyunkwan University, Suwon, 16419, Republic of Korea; School of Civil, Architectural Engineering, and Landscape Architecture, Sungkyunkwan University, 2066 Seobu-ro, Suwon, 16419, Republic of Korea. Electronic address: