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Modeling and Optimizing a Vacuum Gas Oil Hydrocracking Plant using an Artificial Neural Network

机译:基于人工神经网络的真空瓦斯加氢裂化装置建模与优化

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In this research, based on actual data gathered from an industrial scale vacuum gas oil (VGO) hydrocracker and artificial neural network (ANN) method, a model is proposed to simulate yields of products including light gases, liquefied petroleum gas (LPG), light naphtha, heavy naphtha, kerosene, diesel and unconverted oil (off-test). The input layer of the ANN model consists of the catalyst, feed and recycle flow rates, and bed temperatures, while the output neurons are yields of those products. The results showed that the AAD% (average absolute deviation) of the developed ANN model for training, testing, and validating data are 0.445%, 1.131% and 0.755%, respectively. Then, by considering all operational constraints, the results confirmed that the decision variables (i.e., recycle rate and bed temperatures) generated by the optimization approach can enhance the gross profit of the hydrocracking process to more than $0.81 million annually, which is significant for the economy of the target refinery.
机译:在这项研究中,基于从工业规模减压瓦斯油(VGO)加氢裂化器和人工神经网络(ANN)方法收集的实际数据,提出了一个模型来模拟轻油,液化石油气(LPG),轻油等产品的产量石脑油,重石脑油,煤油,柴油和未转化油(未测试)。 ANN模型的输入层由催化剂,进料和循环流速以及床温组成,而输出神经元是这些产品的产量。结果表明,所开发的用于训练,测试和验证数据的ANN模型的AAD%(平均绝对偏差)分别为0.445%,1.131%和0.755%。然后,通过考虑所有操作约束,结果证实了优化方法产生的决策变量(即循环速率和床温)可以使加氢裂化过程的毛利润每年增加超过81万美元,这对于目标炼油厂的经济性。

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