Real-Time prediction of pool fire burning rates under complex heat transfer effects influenced by ullage height: A comparative study of BPNN and SVR

IF 5.1 3区 工程技术 Q2 ENERGY & FUELS Thermal Science and Engineering Progress Pub Date : 2024-12-01 DOI:10.1016/j.tsep.2024.103060
Chaolan Gao , Wei Ji , Jiyun Wang , Xianli Zhu , Chunxiang Liu , Zhongyu Yin , Ping Huang , Longxing Yu
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Abstract

This research utilizes machine learning methods to forecast the complex, non-linear thermal phenomena, along with heat transfer mechanisms, that influence the burning rate of pool fires, especially with changes in ullage height. Experiments involving pool fires were systematically designed and carried out, incorporating different diameters and ullage heights. Heptane was used as the representative alkane fuels. A dataset containing more than 70,000 sets of data was created as a training dataset for training the Backpropagation Neural Network (BPNN) and Support Vector Regression (SVR) models. During the optimization of machine learning model parameters, this study is based on Particle Swarm Optimization (PSO) with the principle of intelligent optimization to efficiently and accurately screen and optimize the key parameters of the model. The combustion duration, pool dimensions, and non-dimensional ullage height were input into a machine-learning model to predict the burning rate. By comparing against experimental data, the model was found to be able to predict the dynamic evolution of the burning rate of the pool fire in a real-time manner. The SVR model demonstrates greater predictive accuracy in comparison to the BPNN model, and the relative prediction error remains within ± 20 %, which fully proves its effectiveness and generalization ability in the prediction of pool fire burning rate. The insights gained will offer substantial scientific backing for enhanced fire monitoring systems, while highlighting the capability of advanced machine learning methodologies to predict the intricate, real-time thermal dynamics and heat transfer characteristics of burning liquid fuels.
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高度影响下复杂换热效应下池火燃烧速率的实时预测:BPNN与SVR的对比研究
本研究利用机器学习方法来预测复杂的非线性热现象,以及传热机制,这些现象会影响池火的燃烧速度,特别是随着高度的变化。系统地设计和进行了涉及池火的实验,包括不同的直径和高度。以庚烷为代表的烷烃燃料。创建了一个包含超过70,000组数据的数据集作为训练数据集,用于训练反向传播神经网络(BPNN)和支持向量回归(SVR)模型。在机器学习模型参数优化过程中,本研究基于粒子群算法(Particle Swarm optimization, PSO),采用智能优化的原理对模型的关键参数进行高效、准确的筛选和优化。燃烧持续时间、池尺寸和无量纲高度被输入到机器学习模型中,以预测燃烧速度。通过与实验数据的对比,发现该模型能够实时预测池火燃烧速率的动态演变。与BPNN模型相比,SVR模型的预测精度更高,相对预测误差保持在±20%以内,充分证明了其在池火燃烧速率预测中的有效性和泛化能力。所获得的见解将为增强的火灾监测系统提供实质性的科学支持,同时突出先进的机器学习方法的能力,以预测复杂的实时热动力学和燃烧液体燃料的传热特性。
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来源期刊
Thermal Science and Engineering Progress
Thermal Science and Engineering Progress Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
7.20
自引率
10.40%
发文量
327
审稿时长
41 days
期刊介绍: Thermal Science and Engineering Progress (TSEP) publishes original, high-quality research articles that span activities ranging from fundamental scientific research and discussion of the more controversial thermodynamic theories, to developments in thermal engineering that are in many instances examples of the way scientists and engineers are addressing the challenges facing a growing population – smart cities and global warming – maximising thermodynamic efficiencies and minimising all heat losses. It is intended that these will be of current relevance and interest to industry, academia and other practitioners. It is evident that many specialised journals in thermal and, to some extent, in fluid disciplines tend to focus on topics that can be classified as fundamental in nature, or are ‘applied’ and near-market. Thermal Science and Engineering Progress will bridge the gap between these two areas, allowing authors to make an easy choice, should they or a journal editor feel that their papers are ‘out of scope’ when considering other journals. The range of topics covered by Thermal Science and Engineering Progress addresses the rapid rate of development being made in thermal transfer processes as they affect traditional fields, and important growth in the topical research areas of aerospace, thermal biological and medical systems, electronics and nano-technologies, renewable energy systems, food production (including agriculture), and the need to minimise man-made thermal impacts on climate change. Review articles on appropriate topics for TSEP are encouraged, although until TSEP is fully established, these will be limited in number. Before submitting such articles, please contact one of the Editors, or a member of the Editorial Advisory Board with an outline of your proposal and your expertise in the area of your review.
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