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Artificial Intelligence Based Methods for Asphaltenes Adsorption by Nanocomposites: Application of Group Method of Data Handling Least Squares Support Vector Machine and Artificial Neural Networks

机译:基于人工智能的纳米复合材料吸附沥青质的方法:数据处理最小二乘支持向量机和人工神经网络的分组方法的应用

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摘要

Asphaltenes deposition is considered a serious production problem. The literature does not include enough comprehensive studies on adsorption phenomenon involved in asphaltenes deposition utilizing inhibitors. In addition, effective protocols on handling asphaltenes deposition are still lacking. In this study, three efficient artificial intelligent models including group method of data handling (GMDH), least squares support vector machine (LSSVM), and artificial neural network (ANN) are proposed for estimating asphaltenes adsorption onto NiO/SAPO-5, NiO/ZSM-5, and NiO/AlPO-5 nanocomposites based on a databank of 252 points. Variables influencing asphaltenes adsorption include pH, temperature, amount of nanocomposites over asphaltenes initial concentration (D/C ), and nanocomposites characteristics such as BET surface area and volume of micropores. The models are also optimized using nine optimization techniques, namely coupled simulated annealing (CSA), genetic algorithm (GA), Bayesian regularization (BR), scaled conjugate gradient (SCG), ant colony optimization (ACO), Levenberg–Marquardt (LM), imperialistic competitive algorithm (ICA), conjugate gradient with Fletcher-Reeves updates (CGF), and particle swarm optimization (PSO). According to the statistical analysis, the proposed RBF-ACO and LSSVM-CSA are the most accurate approaches that can predict asphaltenes adsorption with average absolute percent relative errors of 0.892% and 0.94%, respectively. The sensitivity analysis shows that temperature has the most impact on asphaltenes adsorption from model oil solutions.
机译:沥青质沉积被认为是严重的生产问题。文献没有包括对利用抑制剂沉积沥青质所涉及的吸附现象的足够全面的研究。另外,仍然缺乏处理沥青质沉积的有效方案。在这项研究中,提出了三种有效的人工智能模型,包括数据处理的分组方法(GMDH),最小二乘支持向量机(LSSVM)和人工神经网络(ANN),用于估计沥青质在NiO / SAPO-5,NiO / ZSM-5和NiO / AlPO-5纳米复合材料基于252点的数据库。影响沥青质吸附的变量包括pH值,温度,超过沥青质初始浓度(D / C)的纳米复合材料的量,以及诸如BET表面积和微孔体积等纳米复合材料的特性。还使用九种优化技术对模型进行了优化,即耦合模拟退火(CSA),遗传算法(GA),贝叶斯正则化(BR),比例共轭梯度(SCG),蚁群优化(ACO),Levenberg-Marquardt(LM) ,帝国主义竞争算法(ICA),具有Fletcher-Reeves更新的共轭梯度(CGF)和粒子群优化(PSO)。根据统计分析,提出的RBF-ACO和LSSVM-CSA是最准确的方法,可以预测沥青质的吸附,相对绝对平均百分数的相对误差分别为0.892%和0.94%。敏感性分析表明,温度对模型油溶液中沥青质吸附的影响最大。

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