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Prediction of cetane number and ignition delay of biodiesel using Artificial Neural Networks

机译:利用人工神经网络预测十六烷值和生物柴油着火延迟

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This work deals with obtaining models for predicting the cetane number and ignition delay using artificial neural networks. Models for the estimation of the cetane number of biodiesel from their methyl ester composition and ignition delay of palm oil and rapeseed biodiesel using artificial neural networks were obtained. For the prediction of the cetane number model, 38 biodiesel fuels and 10 pure fatty acid methyl esters from the available literature were given as inputs. The best neural network for predicting the cetane number was a conjugate gradient descend (11:4:1) showing 96.3 % of correlation for the validation data and a mean absolute error of 1.6. The proposed network is useful for prediction of the cetane number of biodiesel in a wide range of composition but keeping the percent of total unsaturations lower than 80 %. The model for prediction of the ignition delay was developed from 5 inputs: cetane number, engine speed, equivalence ratio, mean pressure and temperature. The results showed that the neural network corresponding to a topology (5:2:1) with a back propagation algorithm gave the best prediction of the ignition delay. The correlation coefficient and the mean absolute error were 97.2% and 0.03 respectively. The models developed to predict cetane number and ignition delay using artificial neural networks showed higher accuracy than 95 %. Hence, the ANN models developed can be used for the prediction of cetane number and ignition delay of biodiesel.
机译:这项工作涉及使用人工神经网络获得用于预测十六烷值和点火延迟的模型。获得了使用人工神经网络从棕榈油和油菜籽生物柴油的甲酯组成和点火延迟估算生物柴油十六烷值的模型。为了预测十六烷值模型,从可用文献中提供了38种生物柴油燃料和10种纯脂肪酸甲酯作为输入。预测十六烷值的最佳神经网络是共轭梯度下降(11:4:1),显示验证数据的相关性为96.3%,平均绝对误差为1.6。拟议的网络可用于预测广泛组成范围内的生物柴油的十六烷值,但可使总不饱和度的百分比保持在80%以下。预测点火延迟的模型是从5种输入中得出的:十六烷值,发动机转速,当量比,平均压力和温度。结果表明,带有反向传播算法的对应于拓扑结构(5:2:1)的神经网络对点火延迟给出了最佳预测。相关系数和平均绝对误差分别为97.2%和0.03。使用人工神经网络预测十六烷值和点火延迟的模型显示出高于95%的准确度。因此,开发的神经网络模型可用于预测十六烷值和生物柴油的点火延迟。

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