Descriptors-based machine-learning prediction of cetane number using quantitative structure–property relationship

IF 9.6 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Energy and AI Pub Date : 2024-06-13 DOI:10.1016/j.egyai.2024.100385
Rodolfo S.M. Freitas, Xi Jiang
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Abstract

The physicochemical properties of liquid alternative fuels are important but difficult to measure/predict, especially when complex surrogate fuels are concerned. In the present work, machine learning is used to develop quantitative structure–property relationship models. The fuel chemical structure is represented by molecular descriptors, allowing the linking of important features of the fuel composition and key properties of fuel utilization. Feature selection is employed to select the most relevant features that describe the chemical structure of the fuel and several machine learning algorithms are tested to construct interpretable models. The effectiveness of the methodology is demonstrated through the development of accurate and interpretable predictive models for cetane numbers, with a focus on understanding the link between molecular structure and fuel properties. In this context, matrix-based descriptors and descriptors related to the number of atoms in the molecule are directly linked with the cetane number of hydrocarbons. Furthermore, the results showed that molecular connectivity indices play a role in the cetane number for aromatic molecules. Also, the methodology is extended to predict the cetane number of ester and ether molecules, leveraging the design of alternative fuels towards fully sustainable fuel utilization.

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基于描述符的机器学习利用定量结构-性质关系预测十六烷值
液体替代燃料的物理化学特性非常重要,但却很难测量/预测,尤其是在涉及复杂的代用燃料时。在本研究中,机器学习被用来开发定量的结构-性能关系模型。燃料化学结构由分子描述符表示,从而将燃料成分的重要特征与燃料利用的关键属性联系起来。特征选择用于选择描述燃料化学结构的最相关特征,并对几种机器学习算法进行了测试,以构建可解释的模型。通过开发准确且可解释的十六烷值预测模型,展示了该方法的有效性,重点是了解分子结构与燃料特性之间的联系。在这种情况下,基于矩阵的描述符和与分子中原子数有关的描述符与碳氢化合物的十六烷值直接相关。此外,研究结果表明,分子连通性指数对芳香族分子的十六烷值也有影响。此外,该方法还可用于预测酯类和醚类分子的十六烷值,从而有助于替代燃料的设计,实现完全可持续的燃料利用。
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来源期刊
Energy and AI
Energy and AI Engineering-Engineering (miscellaneous)
CiteScore
16.50
自引率
0.00%
发文量
64
审稿时长
56 days
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