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Modeling of thermal cracking of LPG: Application of artificial neural network in prediction of the main product yields

机译:液化石油气热裂化建模:人工神经网络在主要产品产量预测中的应用

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摘要

A three layer perceptron neural network, with back propagation (BP) training algorithm, was developed for modeling of thermal cracking of LPG. The optimum structure of neural network was determined by a trial and error method and different structures were tried. The model investigates the influence of the coil outlet temperature, steam ratio (H_2O/LPG), total mass feed rate and composition of feed such as C_3H_8, C_2H_6, iC_4, and nC_4 on the thermal cracking product yields. Good agreement was found between model results and industrial data. A comparison between the results of mathematical model and designed neural networks was also conducted and ANOVA calculation was carried out. Performance of the neural network model was better than mathematical model.
机译:开发了一种三层感知器神经网络,带有反向传播(BP)训练算法,用于对LPG的热裂化进行建模。通过试错法确定了神经网络的最佳结构,并尝试了不同的结构。该模型研究了盘管出口温度,蒸汽比(H_2O / LPG),总进料速率和进料组成(如C_3H_8,C_2H_6,iC_4和nC_4)对热裂解产物收率的影响。在模型结果和工业数据之间发现了很好的一致性。还对数学模型的结果与设计的神经网络进行了比较,并进行了方差分析计算。神经网络模型的性能优于数学模型。

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