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Development of New Rheological Models for Class G Cement with Nanoclay as an Additive Using Machine Learning Techniques

机译:用机器学习技术为纳米粘土为纳米粘土添加新流变模型的开发

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The rheology of the oil well cement plays a pivotal role in the cement placement. Accurate prediction of cement rheological parameters helps to monitor the durability and pumpability of the cement slurry. In this study, an artificial neural network is used to develop different models for the prediction of various rheological parameters such as shear stress, apparent viscosity, plastic viscosity, and yield point of a class G cement slurry with nanoclay as an additive. An extensive experimental study was conducted to generate enough data set for the training of artificial intelligence models. The class G oil well cement slurries were prepared by fixing the water–cement ratio to 0.44 and adding organically modified nanoclays as a strength enhancer. The rheological properties of the oil well cement slurries were investigated at a wide range of temperatures (37 ≤ T ≤ 90 °C) and shear rates (5 ≤ γ ≤ 500 s~(–1)). Experimental data generated were used for the training of feed-forward neural networks. The predicted values of the rheological properties from the trained model showed a good agreement when compared with the experimental values. The average absolute percentage error was less than 5% in both training and validation phases of modeling. A trend analysis was carried out to ensure that the proposed models can define the underlying physics. From the validation and the trend analysis, it was found that the new models can be used to predict cement rheological properties within the range of data set on which the models were trained. The proposed models are independent of laboratory-dependent variables and can give quick and real-time values of the rheological parameters.
机译:油井水泥的流变学在水泥放置中起着枢轴作用。精确预测水泥流变参数有助于监测水泥浆料的耐久性和可泵送性。在本研究中,人工神经网络用于开发不同模型,用于预测各种流变参数,例如剪切应力,表观粘度,塑料粘度,以及纳米粘土作为添加剂的G级水泥浆料的屈服点。进行了广泛的实验研究,以产生足够的数据集,用于培训人工智能模型。通过将水水泥比固定到0.44并将有机改性的纳米粘接添加为强度增强剂,制备G类油井水泥浆料。在宽范围的温度下研究了油井水泥浆料的流变性质(37≤x,≤90℃)和剪切速率(5≤γ≤500s〜(-1))。生成的实验数据用于训练前馈神经网络。与实验值相比,来自训练模型的流变性质的预测值显示出良好的一致性。在建模的培训和验证阶段,平均绝对百分比误差小于5%。进行了趋势分析,以确保所提出的模型可以定义底层物理学。从验证和趋势分析中,发现新模型可用于预测培训模型的数据集范围内的水泥流变性质。所提出的模型与实验室依赖性变量无关,可以提供流变参数的快速和实时值。

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