LAPSE:2025.0022
Document
LAPSE:2025.0022
A Novel AI-Driven Approach for Parameter Estimation in Gas-Phase Fixed-Bed Experiments - Support Information
Rui D.G. Matias, Alexandre F.P. Ferreira, Idelfonso B.R. Nogueira, Ana M. Ribeiro
January 30, 2025
The transition to renewable energy sources, such as biogas, requires purification processes to separate methane from carbon dioxide, with adsorption-based methods being widely employed. Accurate simulations of these systems, governed by coupled PDEs, ODEs, and algebraic equations, critically depend on precise parameter determination. While traditional approaches often result in significant errors or complex procedures, optimization algorithms provide a more efficient and reliable means of parameter estimation, simplifying the process, improving simulation accuracy, and enhancing the understanding of these systems.
This work introduces an Artificial Intelligence-based methodology for estimating the isotherm parameters of a mathematical phenomenological model for fixed-bed experiments. The separation of CO₂ and CH₄ is used as case study. This work develops an algorithm for parameter estimation for the system's mathematical model. The results show that the validated model has a close fit with experimental results.
Keywords
Suggested Citation
Matias RD, Ferreira AF, Nogueira IB, Ribeiro AM. A Novel AI-Driven Approach for Parameter Estimation in Gas-Phase Fixed-Bed Experiments - Support Information. (2025). LAPSE:2025.0022
Author Affiliations
Matias RD: Laboratory of Separation and Reaction Engineering−Laboratory of Catalysis and Materials (LSRE-LCM), Department of Chemical Engineering, University of Porto
Ferreira AF: Laboratory of Separation and Reaction Engineering−Laboratory of Catalysis and Materials (LSRE-LCM), Department of Chemical Engineering, University of Porto
Nogueira IB: Chemical Engineering Department, Norwegian University of Science and Technology, Sem Sælandsvei 4, Kjemiblokk 5, Trondheim, 793101, Norway
Ribeiro AM: Laboratory of Separation and Reaction Engineering−Laboratory of Catalysis and Materials (LSRE-LCM), Department of Chemical Engineering, University of Porto
[Login] to see author email addresses.
Year
2025
Publication Date
2025-01-30
Version Comments
Original Submission
Download
Files
[Download 1v1.pdf] (875 kB)
Jan 30, 2025
License
None Specified
 
Meta
Record Statistics
Record Views
184
Version History
[v1] (Original Submission)
Jan 30, 2025
 
Verified by curator on
Feb 4, 2025
This Version Number
v1
Citations
Most Recent
This Version
URL Here
https://psecommunity.org/LAPSE:2025.0022
 
Record Owner
RuiDGMatias