Modeling High-Pressure Hydrogen Gas Leakages With Graph Neural NetworksSource: Journal of Energy Resources Technology, Part A: Sustainable and Renewable Energy:;2025:;volume( 001 ):;issue: 003::page 32102-1Author:Cerbarano, Davide
,
Tieghi, Lorenzo
,
Delibra, Giovanni
,
Minotti, Stefano
,
Corsini, Alessandro
DOI: 10.1115/1.4067273Publisher: The American Society of Mechanical Engineers (ASME)
Abstract: The introduction of hydrogen–methane blends as fuel in gas turbines raises concerns on the capability of state-of-art ventilation systems to dilute possible fuel leaks in the enclosures. Traditional numerical methods to perform leak analysis are limited by the number of factors involved, i.e., location and direction of the leak, cross section area, gas pressure in the pipelines, gas composition, and location of external objects. Hence, this raises the need for novel and fast tools capable for the accurate prediction of fuel dispersion in leak scenarios. To this extent, we propose a novel machine learning approach to model gas leaks. The model is trained on a dataset of numerical simulations accounting for several hydrogen/methane concentrations in the fuel, different storage to ambient pressure ratios at the leak section, and a set of cross-flow ventilation velocities. The architecture of the machine learning model is based on graph neural networks, to solve a node-level regression task predicting fuel concentration in space for different high-pressure leak scenarios. The model shows a significant speed up in predicting fuel dispersion with respect to conventional methodology (0.1 s vs 3.5 h) but the GPU memory requirements proved to be a problem when dealing with 3D domains.
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contributor author | Cerbarano, Davide | |
contributor author | Tieghi, Lorenzo | |
contributor author | Delibra, Giovanni | |
contributor author | Minotti, Stefano | |
contributor author | Corsini, Alessandro | |
date accessioned | 2025-04-21T10:31:46Z | |
date available | 2025-04-21T10:31:46Z | |
date copyright | 1/3/2025 12:00:00 AM | |
date issued | 2025 | |
identifier issn | 2997-0253 | |
identifier other | jerta_1_3_032102.pdf | |
identifier uri | http://yetl.yabesh.ir/yetl1/handle/yetl/4306382 | |
description abstract | The introduction of hydrogen–methane blends as fuel in gas turbines raises concerns on the capability of state-of-art ventilation systems to dilute possible fuel leaks in the enclosures. Traditional numerical methods to perform leak analysis are limited by the number of factors involved, i.e., location and direction of the leak, cross section area, gas pressure in the pipelines, gas composition, and location of external objects. Hence, this raises the need for novel and fast tools capable for the accurate prediction of fuel dispersion in leak scenarios. To this extent, we propose a novel machine learning approach to model gas leaks. The model is trained on a dataset of numerical simulations accounting for several hydrogen/methane concentrations in the fuel, different storage to ambient pressure ratios at the leak section, and a set of cross-flow ventilation velocities. The architecture of the machine learning model is based on graph neural networks, to solve a node-level regression task predicting fuel concentration in space for different high-pressure leak scenarios. The model shows a significant speed up in predicting fuel dispersion with respect to conventional methodology (0.1 s vs 3.5 h) but the GPU memory requirements proved to be a problem when dealing with 3D domains. | |
publisher | The American Society of Mechanical Engineers (ASME) | |
title | Modeling High-Pressure Hydrogen Gas Leakages With Graph Neural Networks | |
type | Journal Paper | |
journal volume | 1 | |
journal issue | 3 | |
journal title | Journal of Energy Resources Technology, Part A: Sustainable and Renewable Energy | |
identifier doi | 10.1115/1.4067273 | |
journal fristpage | 32102-1 | |
journal lastpage | 32102-11 | |
page | 11 | |
tree | Journal of Energy Resources Technology, Part A: Sustainable and Renewable Energy:;2025:;volume( 001 ):;issue: 003 | |
contenttype | Fulltext |