Wang, Nantao, He, Hongyuan, Wang, Yaolin
ORCID: 0000-0003-1932-9810, Xu, Bin, Harding, Jonathan
ORCID: 0000-0002-9920-7831, Yin, Xiuli and Tu, Xin
ORCID: 0000-0002-6376-0897
(2024)
Machine learning-driven optimization of Ni-based catalysts for catalytic steam reforming of biomass tar
Energy Conversion and Management, 300.
p. 117879.
ISSN 0196-8904
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2024 ECM.pdf - Open Access published version Download (5MB) | Preview |
Abstract
Biomass gasification is a promising process for producing syngas, which is widely used in various industrial processes. However, the presence of tar in syngas poses a significant challenge to biomass gasification due to the difficulties in its removal and potential downstream issues, such as clogging, slagging, and corrosion. Extensive efforts have been made to address this challenge through catalytic tar removal using various catalysts, generating a vast amount of experimental data. Processing this large dataset and gaining new insights into process optimization requires the development of efficient data analysis methods. In this study, a comprehensive database was built, encompassing a total of 584 data points and 14 input parameters collected from literature published between 2005 and 2020. Machine learning algorithms were then trained using this dataset to predict and optimize the catalytic steam reforming of biomass tar. The predicted results were found to agree well with the experimental data. The results show that the reaction temperature is the most important process parameter, with the highest relative importance of 0.24, followed by the support (0.16), additive (0.12), nickel (Ni) loading (0.08), and calcination temperature (0.07), among the 14 input parameters. This work has proposed optimal ranges for the reaction temperature (600–700 °C), Ni loading (5–15 wt%), and calcination temperature (500–650 °C). Furthermore, it was found that a larger specific surface area and higher Ni dispersion are two critical factors for selecting additives and supports. This study provides insights into key parameters for optimizing the catalytic steam reforming of biomass tar, enabling enhanced efficiency and effectiveness in biomass gasification processes.
| Item Type: | Article |
|---|---|
| Uncontrolled Keywords: | 4004 Chemical Engineering, 40 Engineering, Machine Learning and Artificial Intelligence, Networking and Information Technology R&D (NITRD), Data Science, 7 Affordable and Clean Energy |
| Divisions: | Faculty of Science & Engineering > School of Electrical Engineering, Electronics and Computer Science |
| Depositing User: | Symplectic Admin |
| Date Deposited: | 11 Dec 2023 11:33 |
| Last Modified: | 30 Jan 2026 07:25 |
| DOI: | 10.1016/j.enconman.2023.117879 |
| Related Websites: | |
| URI: | https://livrepository.liverpool.ac.uk/id/eprint/3177251 |
| Disclaimer: | The University of Liverpool is not responsible for content contained on other websites from links within repository metadata. Please contact us if you notice anything that appears incorrect or inappropriate. |
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