Investigation of Asphaltene Precipitation Using Response Surface Methodology Combined with Artificial Neural Network

Q4 Chemical Engineering
Z. Hosseini-Dastgerdi, Saeid Jafarzadeh-Ghoushchi
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引用次数: 3

Abstract

The precipitation of asphaltene, one of the components of oil, in reservoirs, transfer lines, and equipment causes many problems. Accordingly, researchers are prompted to determine the factors affecting asphaltene precipitation and methods of avoiding its formation. Predicting precipitation and examining the simultaneous effect of operational variables on asphaltene precipitation are difficult because of the multiplicity, complexity, and nonlinearity of factors affecting asphaltene precipitation and the high cost of experiments. This study combined the use of response surface methodology and the artificial neural network to predict asphaltene precipitation under the mutual effects of various parameters. The values of such parameters were determined to reach the minimum amount of precipitation. We initially selected the appropriate algorithm for predicting asphaltene precipitation from the two neural network algorithms. The outputs of designed experiments in response surface methodology were determined using the optimum algorithm of the neural network. The effects of variables on asphaltene precipitation were then investigated by response surface methodology. According to the results, the minimum precipitation of asphaltene achieved at zero mole percent of injected nitrogen and methane, 10–20 mole percent of injected carbon dioxide, asphaltene content of 0.46, the resin content of 16.8 weight percent, the pressure of 333 psi, and temperature of 180 . Results showed that despite the complexities of asphaltene precipitation, the combination of artificial neural network with response surface methodology can be successfully used to investigate the mutual effect of different variables affecting asphaltene precipitation.
响应面法结合人工神经网络研究沥青质沉淀
沥青质是石油的组成成分之一,它在储层、输油管和设备中的沉淀会引起许多问题。因此,研究人员需要确定影响沥青质沉淀的因素和避免沥青质形成的方法。由于影响沥青质沉淀的因素的多样性、复杂性和非线性以及实验成本高,预测降水和检查操作变量对沥青质沉淀的同时影响是困难的。本研究将响应面法与人工神经网络相结合,对各参数相互作用下的沥青质沉淀进行预测。确定这些参数的值以达到最小的降水量。我们首先从两种神经网络算法中选择合适的算法来预测沥青质沉淀。利用神经网络优化算法确定响应面法设计实验的输出。然后用响应面法研究了各变量对沥青质沉淀的影响。结果表明,在注入氮气和甲烷的摩尔数为0、注入二氧化碳的摩尔数为10-20、沥青质含量为0.46、树脂含量为16.8%、压力为333 psi、温度为180℃的条件下,沥青质析出量最小。结果表明,尽管沥青质沉淀具有复杂性,但人工神经网络与响应面方法的结合可以成功地研究影响沥青质沉淀的不同变量的相互作用。
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来源期刊
CiteScore
1.20
自引率
0.00%
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