Comparison of Various Prediction Model for Biodiesel Cetane Number using Cascade-Forward Neural Network

Q2 Engineering
Sri Mumpuni Ngesti Rahaju, A. Hananto, P. A. Paristiawan, A. T. Mohammed, A. C. Opia, M. Idris
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引用次数: 2

Abstract

Cetane number (CN) is one of the important fuel properties of diesel fuels. It is a measurement of the ignition quality of diesel fuel. Numerous studies have been published to predict the CN of biodiesels. More recently, the utilization of soft computing methods such as artificial neural networks (ANN) has received considerable attention as a prediction tool. However, most studies in the use of ANN for estimating the CN of biodiesels have only used one algorithm to train a small number of datasets. This study aims to predict the CN of 63 biodiesels based on the fatty acid methyl esters (FAME) composition by developing an ANN model that was trained with 10 different algorithms. To the best of our knowledge, this is the first study to predict the CN of biodiesels using numerous ANN training algorithms utilizing sizeable datasets. Results revealed that the ANN model trained with Levenberg-Marquardt gave the highest prediction accuracy. LM algorithm successfully predicted the CN of biodiesels with the highest correlation and determination coefficient (R = 0.9615, R2 = 0.9245) as well as the lowest errors (MAD = 2.0804, RMSE = 3.1541, and MAPE = 4.2971). Hence, the Cascade neural network trained with the LM algorithm could be considered a promising alternative to the empirical correlations for predicting biodiesel’s CN.
级联正演神经网络用于生物柴油十六烷值预测模型的比较
十六烷值(CN)是柴油燃料的重要燃料特性之一。它是对柴油点火质量的测量。已经发表了许多研究来预测生物柴油的CN。最近,诸如人工神经网络(ANN)的软计算方法的使用作为预测工具受到了相当大的关注。然而,大多数使用人工神经网络估计生物柴油CN的研究只使用了一种算法来训练少量数据集。本研究旨在通过开发一个用10种不同算法训练的ANN模型,基于脂肪酸甲酯(FAME)的组成预测63种生物柴油的CN。据我们所知,这是第一项利用大量数据集使用大量人工神经网络训练算法预测生物柴油CN的研究。结果表明,用Levenberg-Marquardt训练的ANN模型给出了最高的预测精度。LM算法以最高的相关性和决定系数(R=0.9615,R2=0.9245)以及最低的误差(MAD=2.0804,RMSE=3.1541,MAPE=4.2971)成功地预测了生物柴油的CN。因此,用LM算法训练的级联神经网络可以被认为是预测生物柴油CN的经验相关性的一种有前途的替代方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Automotive Experiences
Automotive Experiences Engineering-Automotive Engineering
CiteScore
3.00
自引率
0.00%
发文量
14
审稿时长
12 weeks
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