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首页> 外文期刊>Journal of Petroleum Science & Engineering >Modeling and optimization of an industrial hydrocracker plant
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Modeling and optimization of an industrial hydrocracker plant

机译:工业加氢裂化装置的建模和优化

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The main objective of this study is modeling and optimization of an industrial Hydrocracker Unit (HU) using Artificial Neural Network (ANN) model. In this case some data from an industrial hydrocracker plant were collected. Two-thirds of the data points were used to train ANN model. Among the various networks and architectures, two multilayer feed forward networks with Back Propagation (BP) training algorithm were found as the best model for the plant. Inputs of both ANNs include fresh feed and recycle hydrogen flow rate, temperature of reactors, mole percentage of H2 and H2S, feed flow rate and temperature of debutanizer, pressure of debutanizer receiver, top and bottom temperature of fractionator column and pressure of fractionator column. The first network was employed to calculate the specific gravity of gas oil, kerosene, Light Naphtha (LN), Heavy Naphtha (HN), gas oil and kerosene flash point and gas oil pour point. The second network was used to calculate the volume percent of C4, LN, HN and kerosene, gas oil and fractionators column residual (off test). Unseen data points were used to check generalization capability of the best network. There were good overlap between network estimations and unseen data. In the next step of study sensitivity analysis was carried out on plant to check the effect of input variables on the plant performance. In this case temperature was found as the most affecting parameter in the plant. Finally optimization was performed to maximize the volume percent of gas oil, kerosene, HN and LN production and to identify the sets of optimum operating parameters to maximize these product yields. Optimum conditions were found as feed flow rate of 113.2 m~3/h, reactor temperature of 413 ℃, hydrogen flow rate of 111.3 MSCM/h and LN () feed vol.% of 9.22.
机译:这项研究的主要目的是使用人工神经网络(ANN)模型对工业加氢裂化装置(HU)进行建模和优化。在这种情况下,从工业加氢裂化厂收集了一些数据。三分之二的数据点用于训练ANN模型。在各种网络和体系结构中,两个带有反向传播(BP)训练算法的多层前馈网络被认为是该工厂的最佳模型。两种人工神经网络的输入包括新鲜进料和循环氢气流速,反应器温度,H2和H2S的摩尔百分比,脱丁烷塔的进料流速和温度,脱丁烷塔接收器的压力,分馏塔的顶部和底部温度以及分馏塔的压力。使用第一个网络来计算瓦斯油,煤油,轻石脑油(LN),重石脑油(HN),瓦斯油和煤油闪点和瓦斯油倾点的比重。第二个网络用于计算C4,LN,HN和煤油,粗柴油和分馏塔塔残余物的体积百分比(关闭测试)。看不见的数据点用于检查最佳网络的泛化能力。网络估算与看不见的数据之间存在良好的重叠。在下一步研究中,对植物进行了敏感性分析,以检查输入变量对植物性能的影响。在这种情况下,发现温度是工厂中影响最大的参数。最后,进行了优化,以最大化瓦斯油,煤油,HN和LN产量的体积百分比,并确定最佳操作参数集以最大化这些产品的产量。最佳条件为进料流速为113.2 m〜3 / h,反应器温度为413℃,氢气流速为111.3 MSCM / h,LN()进料体积%为9.22。

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