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Optimization of Models for Rapid Identification of Oil and Water Layers During Drilling - A Win-Win Strategy Based on Machine Learning

机译:钻井过程中油水层快速识别模型的优化 - 基于机器学习的双赢策略

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The identification of oil and water layers (OWL) from well log data is an important task in petroleum exploration and engineering. At present, the commonly used methods for OWL identification are timeconsuming, low accuracy or need better experience of researchers. Therefore, some machine learning methods have been developed to identify the lithology and OWL. Based on logging while drilling data, this paper optimizes machine learning methods to identify OWL while drilling. Recently, several computational algorithms have been used for OWL identification to improve the prediction accuracy. In this paper, we evaluate three popular machine learning methods, namely the oneagainst- rest support vector machine, one-against-one support vector machine, and random forest. First, we choose apposite training set data as a sample for model training. Then, GridSearch method was used to find the approximate range of reasonable parameters' value. And then using k-fold cross validation to optimize the final parameters and to avoid overfitting. Finally, choosing apposite test set data to verify the model. The method of using machine learning method to identify OWL while drilling has been successfully applied in Weibei oilfield. We select 1934 groups of well logging response data for 31 production wells. Among them, 198 groups of LWD data were selected as the test set data. Natural gamma, shale content, acoustic time difference, and deep-sensing logs were selected as input feature parameters. After GridSearch and 10-fold cross validation, the results suggest that random forest method is the best algorithm for supervised classification of OWL using well log data. The accuracy of the three classifiers after the calculation of the training set is greater than 90%, but their differences are relative large. For the test set, the calculated accuracy of the three classifiers is about 90%, with a small difference. The one-against-rest support vector machine classifier spends much more time than other methods. The one-against-one support vector machine classifier is the classifier which training set accuracy and test set accuracy are the lowest in three methods. Although all the calculation results have diffierences in accuracy of OWL identification, their accuracy is relatively high. For different reservoirs, taking into account the time cost and model calculation accuracy, we can use random forest and one-against-one support vector machine models to identify OWL in real time during drilling.
机译:从井日志数据的鉴定是石油和水层(OWL)是石油勘探和工程中的重要任务。目前,常用的猫头鹰识别方法是时间分子,低精度或需要更好的研究人员体验。因此,已经开发了一些机器学习方法来识别岩性和猫头鹰。基于钻井数据的同时采用日志记录,本文优化了钻孔时识别猫头头的机器学习方法。最近,已经使用了几种计算算法用于猫头鹰识别以提高预测精度。在本文中,我们评估了三种流行的机器学习方法,即oneagst-Rest支持向量机,一个反对一个支持向量机和随机森林。首先,我们选择Apposital Training Set Data作为模型培训的样本。然后,GridSearch方法用于找到合理参数值的近似范围。然后使用k折叠交叉验证来优化最终参数并避免过度拟合。最后,选择Apposite测试设置数据以验证模型。使用机器学习方法来识别猫头鹰的方法,同时在渭北油田成功应用。我们为31个生产井选择1934组井测井响应数据。其中,选择了198组LWD数据作为测试集数据。选择天然伽玛,页岩含量,声学时间差和深度传感日志作为输入功能参数。在GridSearch和10倍交叉验证之后,结果表明随机森林方法是使用井日志数据监督猫头鹰分类的最佳算法。三分类机计算训练集后的准确性大于90%,但它们的差异是相对大的。对于测试集,三分类器的计算精度约为90%,差异很小。一个反对休息支持向量机分类器比其他方法花费更多的时间。一个反对一个支持向量机分类器是培训设置精度和测试设置精度的分类器是三种方法的最低方法。虽然所有计算结果都具有猫头鹰识别准确性的差异,但它们的精度相对较高。对于不同的水库,考虑到时间成本和模型计算精度,我们可以使用随机森林和一个反对一个支持向量机模型,在钻井期间实时识别猫头鹰。

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