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Using Supervised Machine Learning Algorithms to Predict Pressure Drop in Narrow Annulus

机译:使用监督机器学习算法预测窄环中的压降

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Narrow annulus is frequently encountered in drilling operations as in Casing while Drilling,Liner Drilling etc.Hydraulics of narrow annulus is a relatively new topic of research in drilling.Current analytical solutions have limited applicability for complex flow regimes affected by casing motion,pipe rotation,eccentricity and cuttings.Therefore,the objective of this research is to develop data-driven statistical learning models which can be very effective in making pressure loss predictions for given operating conditions.The data for proposed supervised learning was obtained from large scale experiments conducted on a narrow annulus wellbore configuration on LPAT(Low Pressure Ambient Temperature)flow loop at TUDRP,Tulsa University Research Projects Group.Exploratory visualizations were used to determine the relationship between operational parameters and pressure drop.Resampling methods,such as cross-validation and bootstrapping,were used to split the dataset into training and test data.Shrinkage and Decomposition technique was applied to make multivariate regression more robust.Comparison was made between different algorithms to determine the best model in terms of Least Mean-Squared-Error(MSE)on test data prediction and interpretability.Multivariate exploratory plots were used for data inference.Relationships between different factors and annular pressure drop were mostly linear.As expected,pressure drop increased with increase in flow-rate,inclination angle,ROP and for non-Newtonian polymeric fluids.Principal Component Analysis(PCA)was performed to reduce the dimensionality of the data set.Approximately 98% of variance in data was explained by 5 principal components and the resulting model produced a MSE less than 1% of median pressure drop.Even though PCA regression model performed well on test data,final model was more difficult to interpret because it does not perform feature selection or even produce coefficient estimates.Therefore,Partial Least Squares(PLS)regression was used which gives better model interpretability as it is supervised by feature-outcome relationship.Shrinkage methods-Lasso and Ridge Regression were also used.These methods add an additional penalty term to Least Square Regression to get a bias-variance tradeoff.Cross-validation was used to select the penalty term that gave the lowest MSE.Both methods produced competitive MSE but performed better than PCA and PLS regression.In conclusion,Lasso-Regression performed the best with lowest error and good interpretability.
机译:较窄的环在钻孔操作中常常,如套管中,钻井,衬里钻孔等窄环的液流是钻井研究的一个相对较新的话题.Current分析解决方案对受套管运动影响的复杂流动制度具有有限的适用性,偏心和切割。因此,本研究的目的是开发数据驱动的统计学习模型,这对于给予操作条件的压力损失预测非常有效。提出的受监管学习的数据是从A的大规模实验获得的Tulsa大学研究项目组的LPAT(低压环境温度)流量环的窄环井网。探索可视化用于确定操作参数和压力下降之间的关系。诸如交叉验证和自动启动的方法。用于将数据集拆分为培训和测试DAT A.Shrinkage和分解技术应用于使多变量回归更高的robust.Clemparison在不同的算法之间进行了比较,以确定测试数据预测和解释性的最小均衡误差(MSE)的最佳模型..使用了解释性探索性图。对于数据推断。不同因素和环形压降之间的关系大多是线性的。预期,随着流速,倾斜角,ROP和非牛顿聚合物流体的增加而增加。均分析(PCA)进行减少数据集的维度。使用5个主成分解释了数据的维数98%,并且由此产生的模型产生了低于1%的中位压降的MSE。虽然PCA回归模型对测试数据进行了很好的测试数据,最终模型更难以解释,因为它没有执行特征选择甚至产生系数估计。因此,部分最小二乘(PLS)R使用出口,这提供了更好的模型解释性,因为它由特征结果关系监督.Shrinkage方法也使用了套索和岭回归。这些方法增加了额外的惩罚术语,以获得最小二乘oriance orderoff.cross-验证用于选择给出最低MSE的罚款项。方法产生竞争力的MSE,但比PCA和PLS回归表现更好。在结论中,套索回归最佳误差和良好的解释性。

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