利用机器学习模型预测沼气-氧气混合物的引爆单元大小

IF 1.7 4区 工程技术 Q3 MECHANICS Shock Waves Pub Date : 2024-06-03 DOI:10.1007/s00193-024-01164-7
S. Siatkowski, K. Wacko, J. Kindracki
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引用次数: 0

摘要

起爆单元尺寸是描述起爆过程的一个非常重要的参数,既可用于爆炸安全分析,也可用于起爆燃烧室的设计。通常情况下,我们通过实验或 CFD 模拟对其进行研究;这两种方法都需要耗费大量的金钱和时间。然而,机器学习(ML)方法的进步为获取电池尺寸提供了第三种方法。如果训练得当,这些模型能够提供快速、准确的预测。机器学习在燃烧领域的应用正日益受到研究界的关注。在本研究中,介绍了用于预测沼气-氧气混合物引爆电池尺寸的三种不同机器学习模型的训练、测试和评估过程。这些模型包括:线性回归(LR)、支持向量回归(SVR)和神经网络(NN)。用于训练和测试的数据集来自作者之前进行的实验研究。结果表明,所有模型都取得了非常好的结果,其中支持向量回归被证明是最好的。
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Predicting detonation cell size of biogas–oxygen mixtures using machine learning models

Detonation cell size is a very important parameter describing the detonation process, used both for explosion safety analysis and for the design of detonation combustion chambers. Typically it has been studied either experimentally or by CFD simulations; both options are costly in terms of money and time. However, progress in the machine learning (ML) methods opened a third way of obtaining cell size. When trained properly, such models are capable of giving rapid, accurate predictions. Utilization of machine learning in the combustion field is gaining more attention from the research community. In this study, the process of training, testing, and evaluation of three different machine learning models for predicting biogas–oxygen mixture detonation cell size is presented. The models include: linear regression (LR), support vector regression (SVR), and neural network (NN). The dataset used for training and testing comes from the experimental studies conducted previously by the authors. It was shown that all the models give very good results with support vector regression proving to be the best.

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来源期刊
Shock Waves
Shock Waves 物理-力学
CiteScore
4.10
自引率
9.10%
发文量
41
审稿时长
17.4 months
期刊介绍: Shock Waves provides a forum for presenting and discussing new results in all fields where shock and detonation phenomena play a role. The journal addresses physicists, engineers and applied mathematicians working on theoretical, experimental or numerical issues, including diagnostics and flow visualization. The research fields considered include, but are not limited to, aero- and gas dynamics, acoustics, physical chemistry, condensed matter and plasmas, with applications encompassing materials sciences, space sciences, geosciences, life sciences and medicine. Of particular interest are contributions which provide insights into fundamental aspects of the techniques that are relevant to more than one specific research community. The journal publishes scholarly research papers, invited review articles and short notes, as well as comments on papers already published in this journal. Occasionally concise meeting reports of interest to the Shock Waves community are published.
期刊最新文献
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