Issondj Banta Nelson Junior, Patrick Njionou, Offole Florence, Mouangue Ruben
National Higher Polytechnic School of Douala, University of Douala, P.O. BOX 2107, Douala, Cameroon.
Laboratory of Energy, Materials, Modeling and Method of the University of Douala, Douala, Cameroon.
Heliyon. 2024 May 3;10(9):e30497. doi: 10.1016/j.heliyon.2024.e30497. eCollection 2024 May 15.
The work carried out in this paper focused on "Machine learning models for the prediction of turbulent combustion speed for hydrogen-natural gas spark ignition engines". The aim of this work is to develop and verify the ability of machine learning models to solve the problem of estimating the turbulent flame speed for a spark-ignition internal combustion engine operating with a hydrogen-natural gas mixture, then evaluate the relevance of these models in relation to the usual approaches. The novelty of this work is the possibility of a direct calculation of turbulent combustion speed with a good precision, using only machine learning model. The obtained models are also compared to each other by considering in turn as a comparison criterion: the precision of the result, calculation time, and the ability to assimilate original data (which has not undergone preprocessing). An important particularity of this work is that the input variables of the machine learning models were chosen among the variables directly measurable experimentally, based on the opinion of experts in combustion in internal combustion engines and not on the usual approaches to dimensionality reduction on a dataset. The data used for this work was taken from a MINSEL 380, a 380-cc single-cylinder engine. The results show that all the machine learning models obtained are significantly faster than the usual approach and Random Forest (R: R-squared = 0.9939 and RMSE: Root Mean Square Error = 0.4274) gives the best results. With a forecasting accuracy of over 90 %, both approaches can make reasonable predictions for most industrial applications such as designing engine monitoring and control systems, firefighting systems, simulation, and prototyping tools.
本文开展的工作聚焦于“用于预测氢气 - 天然气火花点火发动机湍流燃烧速度的机器学习模型”。这项工作的目的是开发并验证机器学习模型解决估算以氢气 - 天然气混合物运行的火花点火式内燃机湍流火焰速度问题的能力,然后评估这些模型相对于常用方法的相关性。这项工作的新颖之处在于仅使用机器学习模型就能高精度地直接计算湍流燃烧速度。还依次将结果精度、计算时间以及吸收原始数据(未经过预处理的数据)的能力作为比较标准,对所得模型进行相互比较。这项工作的一个重要特点是,机器学习模型的输入变量是根据内燃机燃烧领域专家的意见,从可直接通过实验测量的变量中选取的,而不是基于数据集降维的常用方法。用于这项工作的数据取自一台MINSEL 380型380立方厘米单缸发动机。结果表明,所有得到的机器学习模型都比常用方法显著更快,随机森林模型(R:决定系数 = 0.9939,RMSE:均方根误差 = 0.4274)给出了最佳结果。两种方法的预测准确率均超过90%,对于大多数工业应用,如设计发动机监测与控制系统、消防系统、模拟和原型制作工具等,都能做出合理预测。