Spectroscopy-Based Machine Learning Approach to Predict Engine Fuel Properties of Biodiesel

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY SAE International Journal of Engines Pub Date : 2024-04-11 DOI:10.4271/03-17-07-0051
Kiran Raj Bukkarapu, Anand Krishnasamy
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Abstract

Various feedstocks can be employed for biodiesel production, leading to considerable variation in composition and engine fuel characteristics. Using biodiesels originating from diverse feedstocks introduces notable variations in engine characteristics. Therefore, it is imperative to scrutinize the composition and properties of biodiesel before deployment in engines, a task facilitated by predictive models. Additionally, the international commercialization of biodiesel fuel is contingent upon stringent regulations. The traditional experimental measurement of biodiesel properties is laborious and expensive, necessitating skilled personnel. Predictive models offer an alternative approach by estimating biodiesel properties without depending on experimental measurements. This research is centered on building models that correlate mid-infrared spectra of biodiesel and critical fuel properties, encompassing kinematic viscosity, cetane number, and calorific value. The novelty of this investigation lies in exploring the suitability of support vector machine (SVM) regression, a burgeoning machine learning algorithm, for developing these models. Hyperparameter optimization for the SVM models was conducted using the grid search method, Bayesian optimization, and gray wolf optimization algorithms. The resultant SVM models exhibited a noteworthy reduction in mean absolute percentage error (MAPE) for the prediction of biodiesel viscosity (3.1%), cetane number (3%), and calorific value (2.1%). SVM regression, thus, emerges as a proficient machine learning algorithm capable of establishing correlations between the mid-infrared spectra of biodiesel and its properties, facilitating the reliable prediction of biodiesel characteristics.
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基于光谱学的机器学习方法预测生物柴油的发动机燃料特性
生物柴油的生产可采用多种原料,因此其成分和发动机燃料特性差异很大。使用来自不同原料的生物柴油会导致发动机特性的显著变化。因此,在发动机中使用生物柴油之前,必须对其成分和特性进行仔细研究,而预测模型可以帮助完成这项任务。此外,生物柴油燃料的国际商业化还取决于严格的法规。生物柴油特性的传统实验测量既费力又昂贵,需要技术熟练的人员。预测模型提供了另一种方法,它可以估算生物柴油的特性,而无需依赖实验测量。这项研究的核心是建立生物柴油中红外光谱与关键燃料特性(包括运动粘度、十六烷值和热值)相关联的模型。这项研究的新颖之处在于探索支持向量机(SVM)回归这种新兴的机器学习算法是否适用于建立这些模型。使用网格搜索法、贝叶斯优化和灰狼优化算法对 SVM 模型进行了超参数优化。结果表明,在预测生物柴油粘度(3.1%)、十六烷值(3%)和热值(2.1%)方面,SVM 模型显著降低了平均绝对百分比误差(MAPE)。因此,SVM 回归是一种熟练的机器学习算法,能够在生物柴油的中红外光谱与其特性之间建立相关性,从而促进生物柴油特性的可靠预测。
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来源期刊
SAE International Journal of Engines
SAE International Journal of Engines TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
2.70
自引率
8.30%
发文量
38
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