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Applying of LSSVM approach as a novel tool for accurate prediction of asphaltene inhibition efficiency

机译:利用LSSVM方法作为一种精确预测沥青质抑制效率的新型工具

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摘要

Asphaltene precipitation is one of critical problems for petroleum industries. There are different methods for inhibition of asphaltene precipitation. One of the common and effective methods for inhibition of asphaltene precipitation is utilizing asphaltene inhibitors. In this work, Least squares support vector machine (LSSVM) algorithm was coupled with simplex optimizer to create a novel and accurate tool for estimation of effect of inhibitors on asphaltene precipitation as function of concentration and structure of inhibitors and crude oil properties. To this end a total number of 75 measured data was extracted from the literature for training and testing of predicting model. The average absolute relative deviation (AARD), the coefficient of determination (R-2) and root mean square error (RMSE) of total data for prediction algorithm were determined as 1.1479, 0.99406 and 0.61039. According to these parameters and graphical comparisons the LSSVM algorithm has potential to predict asphaltene precipitation in high degree of accuracy.
机译:沥青质沉淀是石油工业的关键问题之一。有不同的方法抑制沥青质沉淀。抑制沥青质沉淀的常见有效方法之一是利用沥青质抑制剂。在这项工作中,最小二乘支持向量机(LSSVM)算法与Simplex Optimizer耦合,以创建一种新颖和准确的工具,用于估计抑制剂对沥青质沉淀的抑制作用和抑制剂和原油性能的函数的影响。为此,从文献中提取了75个测量数据的总数,用于训练和测试预测模型。预测算法总数据的平均绝对相对偏差(AARD),确定总数据的判定系数(R-2)和均方根误差(RMSE)确定为1.1479,0.99406和0.61039。根据这些参数和图形比较,LSSVM算法具有高精度预测沥青质沉淀的可能性。

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