Machine Learning-Aided Modeling of the Hydrogen Storage in Zeolite-Based Porous Media

Hai, Tao and Alenizi, Farhan A. and Mohammed, Adil Hussein and Chauhan, Bhupendra Singh and Al-Qargholi, Basim and Metwally, Ahmed Sayed Mohammed and Ullah, Mirzat (2023) Machine Learning-Aided Modeling of the Hydrogen Storage in Zeolite-Based Porous Media. International Communications in Heat and Mass Transfer, 145: 106848. ISSN 07351933

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Abstract

Zeolites are among the most popular porous solids for hydrogen storage. Hydrogen attaches to the surface and microporous structure of zeolites. The literature mainly inspected the hydrogen adsorption capacity of zeolites (HACZ) experimentally and paid little attention to its modeling. Furthermore, there is no tool to compare/reveal the role of surface and pore characteristics of zeolites in hydrogen storage. This work applies several well-established artificial intelligence techniques to correlate the HACZ to surface and pore characteristics of zeolites, pressure, and temperature. The topology-tuned multi-layer perceptron neural network is the best model to simulate the hydrogen storage of fourteen systems (NH4Y, X, and ZSM-5). This model predicts the HACZ of a vast experimental databank with a regression coefficient of 0.99875 and an absolute average relative deviation of 6.43%. Results approve that the role of the BET surface area of zeolites on the HACZ is more vital than the pore volume.

Item Type: Article
Uncontrolled Keywords: Zeolites, Hydrogen Storage, Adsorption Capacity, Artificial Intelligence, Multi-Layer Perceptron Neural Network
Subjects: Q Science > Q Science (General)
Q Science > QA Mathematics > QA76 Computer software
Divisions: Department of Communication and Computer Engineering > Research papers
Depositing User: ePrints Depositor
Date Deposited: 30 Oct 2024 13:55
Last Modified: 30 Oct 2024 13:55
URI: https://eprints.cihanuniversity.edu.iq/id/eprint/1933

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