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Improved estimation of Cetane number of fatty acid methyl esters (FAMEs) based biodiesels using TLBO-NN and PSO-NN models

机译:使用TLBO-NN和PSO-NN模型改进基于脂肪酸甲酯(FAME)的十六烷值的估计

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摘要

Cetane number (CN) is one of the key factors of biodiesels and other diesel fuels. It is an indicator of ignition speed and required compression for ignition. CN estimation of biodiesel based on fatty acid methyl esters (FAME) composition was the main goal of this work. Application of artificial neural network (ANN) combined with particle swarm optimization (PSO) and teaching-learning based optimization (TLBO) is discussed in this communication. A number of 232 fuel samples was derived from the literature as the raw data for the models development. Different evaluative factors prove the satisfactory performance of the proposed ANN models. The obtained values of R-squared and mean square of errors are 0.973 & 3.538 and 0.951 & 6.324 for the proposed TLBO-ANN and PSO-ANN, respectively. Based on the outcome of this study, ANN coupled with PSO and TLBO algorithms can be suitable tools, especially TLBO algorithm to estimate CN of biodiesels.
机译:十六烷值(CN)是生物柴油和其他柴油燃料的关键因素之一。它是点火速度和点火所需压缩的指标。基于脂肪酸甲酯(FAME)组成的生物柴油的CN估算是这项工作的主要目标。讨论了人工神经网络(ANN)与粒子群优化(PSO)和基于教学的优化(TLBO)相结合的应用。从文献中获得了232个燃料样品,作为模型开发的原始数据。不同的评估因素证明了所提出的人工神经网络模型的令人满意的性能。拟议的TLBO-ANN和PSO-ANN的R平方和均方误差值分别为0.973和3.538和0.951和6.324。基于这项研究的结果,将人工神经网络与PSO和TLBO算法相结合可以成为合适的工具,尤其是TLBO算法来估算生物柴油的CN。

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