Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning

A numerical model is developed to predict the methanol steam reforming for H-2 production. This research designs an methanol steam reforming reactor and uses the Nelder-Mead algorithm to find an equivalent steam tube radius by minimizing the error between the simulation and experimental data. The ef...

Full description

Saved in:
Bibliographic Details
Main Authors: Chen, Wei-Hsin, Chen, Zih-Yu, Hsu, Sheng-Yen, Park, Young-Kwon, Juan, Joon Ching
Format: Article
Published: John Wiley & Sons 2022
Subjects:
Online Access:http://eprints.um.edu.my/41024/
Tags: Add Tag
No Tags, Be the first to tag this record!
id my.um.eprints.41024
record_format eprints
spelling my.um.eprints.410242023-08-30T03:16:37Z http://eprints.um.edu.my/41024/ Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning Chen, Wei-Hsin Chen, Zih-Yu Hsu, Sheng-Yen Park, Young-Kwon Juan, Joon Ching QA75 Electronic computers. Computer science QC Physics A numerical model is developed to predict the methanol steam reforming for H-2 production. This research designs an methanol steam reforming reactor and uses the Nelder-Mead algorithm to find an equivalent steam tube radius by minimizing the error between the simulation and experimental data. The effects of three operating parameters (ie, inlet temperature, S/C ratio, and Reynolds number) on CH3OH conversion and H-2 yield are discussed. Finally, the predictions of CH3OH conversion and H-2 yield in terms of the operating parameters through neural networks are performed for finding the best combination of the operating parameter to maximize the H-2 yield. After finding the equivalent radius from the simplified reactor, the evolutionary computation improves the prediction accuracy by 42.69%. For the operating parameters, an increase in temperature or S/C ratio intensifies the reforming performance, whereas the Reynolds number of 50 is more suitable for H-2 production. A three-step training and test of the database by the neural networks is adopted to evaluate the influence of the number of data sets and find the best combination of the parameters. The best combination poses the highest H-2 yield of 2.905 mol (mol CH3OH)(-1), and the error between the prediction and simulation is merely 0.206%. John Wiley & Sons 2022-11 Article PeerReviewed Chen, Wei-Hsin and Chen, Zih-Yu and Hsu, Sheng-Yen and Park, Young-Kwon and Juan, Joon Ching (2022) Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning. International Journal of Energy Research, 46 (14). pp. 20685-20703. ISSN 0363-907X, DOI https://doi.org/10.1002/er.7543 <https://doi.org/10.1002/er.7543>. 10.1002/er.7543
institution Universiti Malaya
building UM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaya
content_source UM Research Repository
url_provider http://eprints.um.edu.my/
topic QA75 Electronic computers. Computer science
QC Physics
spellingShingle QA75 Electronic computers. Computer science
QC Physics
Chen, Wei-Hsin
Chen, Zih-Yu
Hsu, Sheng-Yen
Park, Young-Kwon
Juan, Joon Ching
Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
description A numerical model is developed to predict the methanol steam reforming for H-2 production. This research designs an methanol steam reforming reactor and uses the Nelder-Mead algorithm to find an equivalent steam tube radius by minimizing the error between the simulation and experimental data. The effects of three operating parameters (ie, inlet temperature, S/C ratio, and Reynolds number) on CH3OH conversion and H-2 yield are discussed. Finally, the predictions of CH3OH conversion and H-2 yield in terms of the operating parameters through neural networks are performed for finding the best combination of the operating parameter to maximize the H-2 yield. After finding the equivalent radius from the simplified reactor, the evolutionary computation improves the prediction accuracy by 42.69%. For the operating parameters, an increase in temperature or S/C ratio intensifies the reforming performance, whereas the Reynolds number of 50 is more suitable for H-2 production. A three-step training and test of the database by the neural networks is adopted to evaluate the influence of the number of data sets and find the best combination of the parameters. The best combination poses the highest H-2 yield of 2.905 mol (mol CH3OH)(-1), and the error between the prediction and simulation is merely 0.206%.
format Article
author Chen, Wei-Hsin
Chen, Zih-Yu
Hsu, Sheng-Yen
Park, Young-Kwon
Juan, Joon Ching
author_facet Chen, Wei-Hsin
Chen, Zih-Yu
Hsu, Sheng-Yen
Park, Young-Kwon
Juan, Joon Ching
author_sort Chen, Wei-Hsin
title Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
title_short Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
title_full Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
title_fullStr Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
title_full_unstemmed Reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
title_sort reactor design of methanol steam reforming by evolutionary computation and hydrogen production maximization by machine learning
publisher John Wiley & Sons
publishDate 2022
url http://eprints.um.edu.my/41024/
_version_ 1776247431488339968
score 13.159267