Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires

Aim: This article focuses on the use of artificial neural networks to mathematically describe the parameters that determine the size of a jet fire flame. To teach the neural network, the results of a horizontal propane jet fire, carried out experimentally and using CFD mathematical modelling, were u...

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Main Authors: Michał Lewak, Jarosław Tępiński
Format: Article
Language:English
Published: Scientific and Research Centre for Fire Protection - National Research Institute 2023-12-01
Series:Safety & Fire Technology
Subjects:
Online Access:https://sft.cnbop.pl/pdf/SFT-Vol.-62-Issue-2-2023-pp.-34-48.pdf
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author Michał Lewak
Jarosław Tępiński
author_facet Michał Lewak
Jarosław Tępiński
author_sort Michał Lewak
collection DOAJ
description Aim: This article focuses on the use of artificial neural networks to mathematically describe the parameters that determine the size of a jet fire flame. To teach the neural network, the results of a horizontal propane jet fire, carried out experimentally and using CFD mathematical modelling, were used. Project and methods: The main part of the work consisted of developing an artificial neural network to describe the flame length and propane-air mixing path lengths with good accuracy, depending on the relevant process parameters. Two types of data series were used to meet the stated objective. The first series of data came from field tests carried out by CNBOP-PIB and from research contained in scientific articles. The second type of data was provided by numerical calculations made by the authors. The methods of computational fluid mechanics were used to develop the numerical simulations. The ANSYS Fluent package was used for this purpose. Matlab 2022a was used to develop the artificial neural network and to verify it. Results: Using the nftool function included in Matlab 2022a, an artificial neural network was developed to determine the flame length Lflame and the length of the Slift-off mixing path as a function of the diameter of the dnozzle and the mass flux of gas leaving the nozzle. Using Pearson’s correlation coefficient, a selection was made of the best number of neurons in the hidden layer to describe the process parameters. The neural network developed allows Lflame and Slift-off values to be calculated with good accuracy. Conclusions: Artificial neural networks allow a function to be developed to describe the parameters that determine flame sizes in relation to process parameters. For this purpose, the results of the CFD simulations and the results of the jet fire experiments were combined to create a single neural network. The result is a ready-made function that can be used in programmes for the rapid determination of flame sizes. Such a function can support the process of creating scenarios in the event of an emergency. A correctly developed neural network provides opportunities for the mathematical description of jet fires wherever experimental measurements are not possible. Solution proposed by the authors does not require a large investment in ongoing calculations, as the network can be implemented in any programming language. Keywords: computational fluid mechanics, artificial neural networks, jet fire
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spelling doaj.art-33b495b18347471f9a25cd32f1aa1a692024-01-10T12:32:47ZengScientific and Research Centre for Fire Protection - National Research InstituteSafety & Fire Technology2657-88082658-08102023-12-01622344810.12845/sft.62.2.2023.2Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet FiresMichał Lewak0https://orcid.org/0000-0001-9012-8347Jarosław Tępiński1https://orcid.org/0000-0002-5005-2795Faculty of Chemical and Process Engineering, Warsaw University of TechnologyScientific and Research Centre for Fire Protection – National Research InstituteAim: This article focuses on the use of artificial neural networks to mathematically describe the parameters that determine the size of a jet fire flame. To teach the neural network, the results of a horizontal propane jet fire, carried out experimentally and using CFD mathematical modelling, were used. Project and methods: The main part of the work consisted of developing an artificial neural network to describe the flame length and propane-air mixing path lengths with good accuracy, depending on the relevant process parameters. Two types of data series were used to meet the stated objective. The first series of data came from field tests carried out by CNBOP-PIB and from research contained in scientific articles. The second type of data was provided by numerical calculations made by the authors. The methods of computational fluid mechanics were used to develop the numerical simulations. The ANSYS Fluent package was used for this purpose. Matlab 2022a was used to develop the artificial neural network and to verify it. Results: Using the nftool function included in Matlab 2022a, an artificial neural network was developed to determine the flame length Lflame and the length of the Slift-off mixing path as a function of the diameter of the dnozzle and the mass flux of gas leaving the nozzle. Using Pearson’s correlation coefficient, a selection was made of the best number of neurons in the hidden layer to describe the process parameters. The neural network developed allows Lflame and Slift-off values to be calculated with good accuracy. Conclusions: Artificial neural networks allow a function to be developed to describe the parameters that determine flame sizes in relation to process parameters. For this purpose, the results of the CFD simulations and the results of the jet fire experiments were combined to create a single neural network. The result is a ready-made function that can be used in programmes for the rapid determination of flame sizes. Such a function can support the process of creating scenarios in the event of an emergency. A correctly developed neural network provides opportunities for the mathematical description of jet fires wherever experimental measurements are not possible. Solution proposed by the authors does not require a large investment in ongoing calculations, as the network can be implemented in any programming language. Keywords: computational fluid mechanics, artificial neural networks, jet firehttps://sft.cnbop.pl/pdf/SFT-Vol.-62-Issue-2-2023-pp.-34-48.pdfcomputational fluid mechanicsartificial neural networksjet fire
spellingShingle Michał Lewak
Jarosław Tępiński
Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
Safety & Fire Technology
computational fluid mechanics
artificial neural networks
jet fire
title Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
title_full Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
title_fullStr Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
title_full_unstemmed Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
title_short Application of Artificial Neural Networks for Mathematical Modelling of Horizontal Jet Fires
title_sort application of artificial neural networks for mathematical modelling of horizontal jet fires
topic computational fluid mechanics
artificial neural networks
jet fire
url https://sft.cnbop.pl/pdf/SFT-Vol.-62-Issue-2-2023-pp.-34-48.pdf
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