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Newly Developed Correlations to Predict the Rheological Parameters of High-Bentonite Drilling Fluid Using Neural Networks

机译:利用神经网络预测高膨润土钻井液流变参数的最新相关性

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摘要

High-bentonite mud (HBM) is a water-based drilling fluid characterized by its remarkable improvement in cutting removal and hole cleaning efficiency. Periodic monitoring of the rheological properties of HBM is mandatory for optimizing the drilling operation. The objective of this study is to develop new sets of correlations using artificial neural network (ANN) to predict the rheological parameters of HBM while drilling using the frequent measurements, every 15 to 20 min, of mud density (MD) and Marsh funnel viscosity (FV). The ANN models were developed using 200 field data points. The dataset was divided into 70:30 ratios for training and testing the ANN models respectively. The optimized ANN models showed a significant match between the predicted and the measured rheological properties with a high correlation coefficient (R) higher than 0.90 and a maximum average absolute percentage error (AAPE) of 6%. New empirical correlations were extracted from the ANN models to estimate plastic viscosity (PV), yield point (Y ), and apparent viscosity (AV) directly without running the models for easier and practical application. The results obtained from AV empirical correlation outperformed the previously published correlations in terms of R and AAPE.
机译:高膨润土泥浆(HBM)是一种水基钻井液,其切削清除和孔清洁效率显着提高。为了优化钻井作业,必须定期监测HBM的流变性。这项研究的目的是使用人工神经网络(ANN)开发新的相关性组,以每15到20分钟频繁测量泥浆密度(MD)和沼泽漏斗粘度( FV)。 ANN模型是使用200个现场数据点开发的。该数据集被分为70:30的比例,分别用于训练和测试ANN模型。优化的ANN模型显示出预测的和测量的流变特性之间的显着匹配,相关系数(R)高于0.90,最大平均绝对百分比误差(AAPE)为6%。从ANN模型中提取了新的经验相关性,以直接估算塑性粘度(PV),屈服点(Y)和表观粘度(AV),而无需运行模型以进行更轻松,更实际的应用。从AV经验相关性获得的结果在R和APE方面优于先前发表的相关性。

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