机器学习预测脂肪酸甲酯混合烷烃生物柴油在各种操作条件下的密度

IF 5.8 2区 生物学 Q1 AGRICULTURAL ENGINEERING
Soud Khalil Ibrahim , Rafid Jihad Albadr , Hardik Doshi , Anupam Yadav , Suhas Ballal , Abhayveer Singh , K. Satyam Naidu , Girish Chandra Sharma , Waam mohammed taher , Mariem Alwan , Mahmood Jasem Jawad , Hiba Mushtaq , Mehrdad Mottaghi
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引用次数: 0

摘要

生物柴油被认为比化石燃料更环保,因为它不含硫,燃烧时产生的二氧化碳排放量低,并且含有高氧含量,可以促进彻底燃烧。生物柴油通常与化石柴油混合,以满足用作燃料所需的性能。由于十烷和十二烷在化石柴油中的普遍存在,它们通常被用作化石柴油的替代品。本研究的目的是采用不同的机器学习技术,利用实验数据开发脂肪酸甲酯与烷烃混合作为生物柴油的密度预测模型。所使用的机器学习方法包括自适应增强(AB)、随机森林(RF)、决策树(DT)、卷积神经网络(CNN)、集成学习(EL)、多层感知器人工神经网络(MLP-ANN)和支持向量机(SVM)。各种统计度量和可视化方法作为准确性性能的指标。结果表明,几乎所有收集的数据点都适合建立模型。结果表明,十烷摩尔分数是影响密度的最主要因素。评估结果表明,CNN和SVR是最精确的智能模型,因为它们的r平方值最高(测试阶段分别为0.999和0.998),均方误差最低(测试阶段分别为1.41和2.76),平均绝对相对误差最低(测试阶段分别为0.125%和0.136%),并且密度作为输入参数的函数的趋势预测准确。开发的CNN和SVR模型在准确性和鲁棒性方面也优于Tammann - Tait相关。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning prediction of density of fatty acid methyl ester mixed with alkanes biodiesel over a wide range of operating conditions
Biodiesel is observed as more environmentally friendly than fossil fuels because it contains no sulfur, produces low carbon oxide emissions when burned, and has a high oxygen content that promotes thorough combustion. Biodiesel is often blended with fossil diesel to meet the required properties for use as a fuel. Decane and dodecane are commonly utilized as substitutes for fossil diesel due to their prevalence in fossil diesel. The goal of this study is to employ different machine learning techniques in order to develop predictive models for the density of fatty acid methyl esters mixed with alkanes as biodiesel using experimental data. The machine learning methods utilized include Adaptive Boosting (AB), Random Forest (RF), Decision Tree (DT), Convolutional Neural Network (CNN), Ensemble Learning (EL), Multilayer Perceptron Artificial Neural Network (MLP-ANN) and Support Vector Machine (SVM). Various statistical metrics and visual methods serve as indicators of accuracy performance. The findings indicate that almost all the collected data points are appropriate for building the model. It is shown that decane mole fraction is the most influential factor on the density. The assessment demonstrated that CNN and SVR are the most precise intelligent models due to the emerged highest R-squared values (0.999, and 0.998, respectively, for the testing phase), lowest mean square error (1.41 and 2.76, respectively, for the testing phase), lowest average absolute relative error (0.125 % and 0.136 %, respectively, for the testing phase), and accurate trend forecasting of density as a function of input parameters. The developed models of CNN and SVR also outperform Tammann−Tait correlation in terms of accuracy and robustness.
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来源期刊
Biomass & Bioenergy
Biomass & Bioenergy 工程技术-能源与燃料
CiteScore
11.50
自引率
3.30%
发文量
258
审稿时长
60 days
期刊介绍: Biomass & Bioenergy is an international journal publishing original research papers and short communications, review articles and case studies on biological resources, chemical and biological processes, and biomass products for new renewable sources of energy and materials. The scope of the journal extends to the environmental, management and economic aspects of biomass and bioenergy. Key areas covered by the journal: • Biomass: sources, energy crop production processes, genetic improvements, composition. Please note that research on these biomass subjects must be linked directly to bioenergy generation. • Biological Residues: residues/rests from agricultural production, forestry and plantations (palm, sugar etc), processing industries, and municipal sources (MSW). Papers on the use of biomass residues through innovative processes/technological novelty and/or consideration of feedstock/system sustainability (or unsustainability) are welcomed. However waste treatment processes and pollution control or mitigation which are only tangentially related to bioenergy are not in the scope of the journal, as they are more suited to publications in the environmental arena. Papers that describe conventional waste streams (ie well described in existing literature) that do not empirically address ''new'' added value from the process are not suitable for submission to the journal. • Bioenergy Processes: fermentations, thermochemical conversions, liquid and gaseous fuels, and petrochemical substitutes • Bioenergy Utilization: direct combustion, gasification, electricity production, chemical processes, and by-product remediation • Biomass and the Environment: carbon cycle, the net energy efficiency of bioenergy systems, assessment of sustainability, and biodiversity issues.
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