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Optimization of models for a rapid identification of lithology while drilling-A win-win strategy based on machine learning

机译:基于机器学习的钻探快速识别模型优化模型

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The identification of lithology from well log data is an important task in petroleum exploration and development. However, due to the complexity of the sedimentary environment and reservoir heterogeneity, the traditional lithology identification methods can not meet the needs of real-time and accurate prediction and identification with logging while drilling (LWD) equipment. The basic data of this paper are derived from conventional wireline logging (CWL) data and the LWD data in Yan'an Gas Field. The main research goal is to compare and analyse three popular machine learning algorithms, which are one-versus-rest support vector machines (OVR SVMs), one-versus-one support vector machines (OVO SVMs) and random forest (RF), and to optimize a more practical method in the field for LWD systems. To reduce the dimensions of the input data, the characteristic parameters of the training data are obtained by a correlation analysis of the logging data. The optimal parameter values of each algorithm are determined by grid search method and 10-fold cross-validation method. On this basis, the lithology predictions of the actual LWD data are carried out by using three classifiers. Considering the time consumption of the model training and the lithology identification accuracy of the model, the best lithology identification model while drilling is selected. The results show that the characteristic parameters of the training data after the correlation analysis are AC, CAL, GR, K, RD and SP logs. The overall classification and recognition performance of the RF classifier is better than that of the other two classifiers, and its accuracy is even greater than 90%. The evaluation matrix shows that the OVR SVMs and RF classifiers yield lower prediction errors than the OVO SVMs classifier in each single lithology identification, but the RF classifier spends much less time in the training process. Based on the comprehensive comparative analysis, it is considered that the RF classifier has the characteristics of a short training time and high recognition accuracy in practical production applications, so it is an ideal optimization classifier for lithology identification while drilling. The research results provide not only a theoretical basis for the drilling geosteering of oilfield development but also valuable information for future basic research.
机译:从井日志数据的识别是石油勘探和发展中的重要任务。然而,由于沉积环境和储层异质性的复杂性,传统的岩性识别方法不能满足实时和准确预测和识别的需求,并在钻井(LWD)设备时使用测井。本文的基本数据来自延安气体场中的传统有线记录(CWL)数据和LWD数据。主要研究目标是比较和分析三种流行的机器学习算法,这是一个与休息的支持向量机(OVR SVM),一个与一个支持向量机(OVO SVM)和随机森林(RF),以及优化LWD系统领域中的更实用方法。为了减少输入数据的尺寸,通过对日志记录数据的相关性分析来获得训练数据的特征参数。每种算法的最佳参数值由网格搜索方法和10倍交叉验证方法确定。在此基础上,通过使用三个分类器来执行实际LWD数据的岩性预测。考虑到模型训练的时间消耗和模型的岩性识别准确性,选择了钻孔时的最佳岩性识别模型。结果表明,相关分析后训练数据的特征参数是AC,CAL,GR,K,RD和SP日志。 RF分类器的整体分类和识别性能优于其他两个分类器的识别性能,其精度甚至大于90%。评估矩阵表明,OVR SVM和RF分类器产生的预测误差低于每个单个岩性识别中的OVO SVMS分类器,但RF分类器在训练过程中花费了更短的时间。基于全面的比较分析,认为RF分类器具有在实际生产应用中具有短暂训练时间和高识别准确性的特点,因此它是钻孔时岩性识别的理想优化分类器。研究结果不仅提供了油田开发的钻井地统治的理论依据,而且提供了未来基础研究的宝贵信息。

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