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A Support Vector Machine Approach for the Prediction of Drilling Fluid Density at High Temperature and High Pressure

机译:支持向量机方法在高温高压下钻井液密度预测

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摘要

A support vector machine (SVM) approach was presented for predicting the drilling fluid density at high temperature and high pressure (HTHP). It is a universal model for water-based, oil-based, and synthetic drilling fluids. Available experimental data in the literature were used to develop and test this SVM model. Good agreement between SVM predictions and measured drilling fluid density values confirmed that the developed SVM model had good predictive precision and extrapola-tive features. The SVM model was also compared with the most popular models such as the artificial neural network (ANN) model, empirical correlations, and analytical models. Results showed that the SVM approach outperformed the competing methods for the prediction of drilling fluid density at HTHP.
机译:提出了一种支持向量机(SVM)方法来预测高温高压下的钻井液密度(HTHP)。它是适用于水基,油基和合成钻井液的通用模型。文献中可用的实验数据用于开发和测试此SVM模型。 SVM预测与测得的钻井液密度值之间的良好一致性证实了开发的SVM模型具有良好的预测精度和外推特征。 SVM模型也与最受欢迎的模型进行了比较,例如人工神经网络(ANN)模型,经验相关性和分析模型。结果表明,SVM方法在预测HTHP钻井液密度方面优于竞争方法。

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