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Artificial intelligence model for rheological properties of oil well cement slurries incorporating SCMs

机译:结合SCM的油井水泥浆流变特性人工智能模型

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In this study, an artificial intelligence model has been developed to predict the rheological properties of oil well cement (OWC) slurries incorporating supplementary cementitious materials (SCM) such as metakaolin (MK), silica fume (SF), rice husk ash (RHA) or fly ash (FA). An experimental study has been carried out to create the database used for training the model. OWC slurries having a water-to-binder ratio of 0-44 along with a new-generation, polycarboxyiate-based, high-range water-reducing admixture (PCH) were prepared. They had 5 to 15% partial replacement of API class-G OWC by MK, SF, RHA or FA. The rheological properties of the slurries were investigated at different temperatures in the range 23 to 60°C using an advanced shear-stress/shear-strain controlled rheometer. Experimental data thus obtained were used to develop a predictive model based on feed-forward back-propagation artificial neural networks. The developed model could effectively predict the effect of key variables such as temperature, dosage of SCM and dosage of PCH on the rheological properties of OWC slurries with an absolute error of less than 7%. The developed model could also effectively predict the rheological properties of new slurries designed within the range of input parameters of the experimental database used in the training process.
机译:在这项研究中,已经开发了一种人工智能模型来预测掺有偏高岭土(MK),硅粉(SF),稻壳灰(RHA)等辅助胶结材料(SCM)的油井水泥(OWC)泥浆的流变特性。或粉煤灰(FA)。已经进行了实验研究以创建用于训练模型的数据库。制备了水与粘合剂之比为0-44的OWC浆料以及新一代的基于多羧酸盐的高范围减水剂(PCH)。他们用MK,SF,RHA或FA替代了API类G OWC的5%至15%。使用高级剪切应力/剪切应变控制的流变仪,在23至60°C的不同温度下研究了浆料的流变特性。如此获得的实验数据被用于建立基于前馈反向传播人工神经网络的预测模型。建立的模型可以有效地预测温度,SCM剂量和PCH剂量等关键变量对OWC浆料流变性质的影响,绝对误差小于7%。所开发的模型还可以有效地预测在训练过程中使用的实验数据库的输入参数范围内设计的新浆料的流变特性。

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