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Opportunity to Improve Diesel-Fuel Cetane-Number Prediction from Easily Available Physical Properties and Application of the Least-Squares Method and Artificial Neural Networks

机译:通过容易获得的物理性质以及最小二乘方法和人工神经网络的应用来改进柴油十六烷值预测的机会

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摘要

A database of 140 diesel fuels having cetane numbers in the range of 10-70 points; densities at 15 degrees C; and distillation characteristics according to ASTM D-86 T-10%, T-50%, and T-90% was used to develop new procedures for predicting diesel cetane numbers by application of the least-squares method (LSM) using MAPLE software and an artificial neural network (ANN) using MATLAB. The existing standard methods of determining cetane-index values, ASTM D-976 and ASTM D-4737, which are correlations of the cetane number, confirmed the earlier conclusions that these methods predict the cetane number with a large variation. The four-variable ASTM D-4737 method was found to better approximate the diesel cetane number than the two-variable ASTM D-976 method. The developed four cetane-index models (one LSM and three ANN models) were found to better approximate the middle-distillate cetane numbers. Between 4% and 5% of the selected database of 140 middle distillates were samples with differences between their measured cetane numbers and the cetane-index values predicted by the four new procedures was higher than the specified reproducibility limit in the standard for measuring cetane number, ASTM D-613. In contrast, the cetane-index values calculated in accordance with standards ASTM D-976 and ASTM D-4737 demonstrated that 18% and 16% of the selected database of 140 middle distillates, respectively, were samples with differences between their measured cetane numbers and predicted cetane-index values higher than the specified reproducibility limit in standard ASTM D-613. The ASTM D-4737 method, LSM, and three ANN models were tested against 22 middle distillates not included in the database of 140 diesel fuels. The LSM cetane index showed the best cetane-number prediction capability among all of the models tested.
机译:十六烷值在10-70点之间的140种柴油的数据库; 15摄氏度时的密度;根据ASTM D-86的T-10%,T-50%和T-90%的蒸馏特性,通过使用MAPLE软件应用最小二乘法(LSM)来开发预测柴油十六烷值的新程序使用MATLAB的人工神经网络(ANN)。与十六烷值相关的确定十六烷指数值的现有标准方法ASTM D-976和ASTM D-4737证实了较早的结论,即这些方法可预测十六烷值的变化很大。发现四变量ASTM D-4737方法比二变量ASTM D-976方法更好地近似柴油十六烷值。发现已开发的四个十六烷指数模型(一个LSM和三个ANN模型)可以更好地近似中间馏分十六烷值。在所选择的140个中间馏分的数据库中,有4%至5%的样品中十六烷值的测量值与四种新方法预测的十六烷指数值之间的差异高于测量十六烷值的标准中指定的可重复性限值, ASTM D-613。相反,根据标准ASTM D-976和ASTM D-4737计算的十六烷指数值表明,所选择的140种中间馏分数据库中分别有18%和16%是样品,其十六烷值和十六烷指数的预测值高于标准ASTM D-613中指定的可重复性极限。针对140种柴油数据库中未包含的22种中间馏分,对ASTM D-4737方法,LSM和三种ANN模型进行了测试。在所有测试的模型中,LSM十六烷指数显示出最佳的十六烷值预测能力。

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  • 来源
    《Energy & fuels》 |2015年第maraaapra期|1520-1533|共14页
  • 作者单位

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    LUKOIL Neftohim Burgas, Burgas 8104, Bulgaria;

    Univ Chem Technol & Met, Dept Math, Sofia 1756, Bulgaria;

    Univ Chem Technol & Met, Dept Math, Sofia 1756, Bulgaria;

    Univ Prof Dr Assen Zlatarov, Lab Intelligent Syst, Burgas 8010, Bulgaria;

    Univ Prof Dr Assen Zlatarov, Lab Intelligent Syst, Burgas 8010, Bulgaria;

    Ufa State Petr Technol Univ, Ufa 450062, Russia;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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