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Machine-Learning Model for the Prediction of Lithology Porosity from Surface Drilling Parameters

机译:从表面钻井参数预测岩性孔隙率的机器学习模型

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Introduction:The accurate characterization of the lithology porosity is critical for geological interpretation and decision making in petroleum exploration.For this,wireline logging(including sonic,neutron porosity,and density,among other logs)is often used for the characterization of geophysical data performed as a function of wellbore depth.The common practice in the oil and gas industry is to perform the wireline logging for every new well,which is a lengthy and expensive operation.Therefore,the objective of this study is to use the historical logging data and surface drilling parameters to derive machine-learning(ML)models able to identify the different lithology classifications.Methodology We used historical logging data and surface drilling parameters to derive ML models to predict the following lithology classification:1)porous gas,2)porous wet,3)tight sand,and 4)shaly sand.These models can predict these classifications without running wireline logs in the new wells.In this approach,the four lithology classifications are defined from the sonic,neutron porosity,gamma-ray,and density logs from historical data and are considered as the learning target/labels for the ML model.Therefore,the ML model learns the relationship between the surface drilling parameters and mud weight with their respective lithology classification.Finally,the model is capable of being executed in real-time,improving crew decision making.Results The results obtained from a stratified 5-fold cross-validation technique demonstrated that the random forest model was able to learn from the data with an accurate classification for the four lithology porosity categories.The derived ML model obtained an average of 89.66% and 89.20% for precision and recall,respectively.Novelty Although many studies have suggested the use of ML to imputing logging data,the inputs of these models are the data from other logs.Conversely,our proposed approach utilizes the wireline logging data only during the training of the model for assigning the porosity classification as labels.As such,the model learns the relationship between drilling parameters and the associated labels.This approach not only simplifies the learning of the ML but eliminates the need to run wireline logging in new wells,considerably reducing time and costs.
机译:介绍:岩性孔隙度的准确表征对于石油勘探的地质解释和决策至关重要。如此,有线记录(包括声波,中子孔隙度和密度等,其中在其他原影)通常用于表征所执行的地球物理数据作为井筒深度的函数。石油和天然气行业的常见做法是为每一个新的井进行电缆测井,这是一种漫长而昂贵的操作。因此,本研究的目的是使用历史记录数据和表面钻探参数来推导机器学习(ML)模型,能够识别不同的岩性分类。方法我们使用了历史记录数据和表面钻探参数来导出ML模型来预测以下岩性分类:1)多孔气体,2)多孔潮湿3)紧身沙子和4)Shaly Sand.这些模型可以预测新井中的无线线路的情况下,可以预测这些分类。在此批准中OACH,四个岩性分类由历史数据的声波,中子孔隙度,伽马射线和密度日志定义,并且被认为是ML模型的学习目标/标签。因此,ML模型学会了表面之间的关系钻探参数和泥浆重量与各自的岩性分类。最后,该模型能够实时执行,提高机组决策。结果从分层的5倍交叉验证技术获得的结果表明随机林模型能够为四个岩性孔隙率类别的准确分类学习数据。衍生的ML模型分别获得了89.66%和89.20%的精确和召回。虽然许多研究表明使用ML抵御日志记录数据,这些模型的输入是来自其他日志的数据。相交,我们所提出的方法仅在培训期间利用有线记录数据将孔隙度分类分配为标签的模型。诸如此类的模型,了解钻探参数和相关标签之间的关系。这一方法不仅简化了ML的学习,而且消除了在新井中运行有线记录的需要减少时间和成本。

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