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A Machine Learning Approach to Predict Gas Oil Ratio Based on Advanced Mud Gas Data

机译:一种机器学习方法,以预测高级泥浆气系的燃气比

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Mud gas data from drilling operations provide the very first indication of the presence of hydrocarbons in the reservoir.It has been a dream for decades in the oil industry to predict reservoir gas and oil properties from mud gas data,because it would provide knowledge of the reservoir fluid properties in an early stage,continuously for all reservoir zones,and at low costs.Previous efforts reported in the literature did not lead to a reliable method for quantitative prediction of the reservoir fluid properties from mud gas data.In this paper,we propose a novel approach based on machine learning which enables us to predict gas oil ratio (GOR) from advanced mud gas (AMG) data.The current work is based on a previous successful pilot in unconventional (shale) reservoirs.Our aim is to extend the results of the pilot study to conventional reservoirs.In general,prediction of reservoir fluid properties is more challenging for conventional reservoirs than for unconventional reservoirs,due to the complexity of petroleum systems in conventional reservoirs.Instead of building a model directly from AMG data,we trained a machine learning model using a well-established reservoir fluid database with more than 2000 PVT samples.After thorough investigation of compositional similarity between PVT samples and AMG data,we applied the model developed from PVT samples to AMG data.The predicted GORs from AMG data were compared with GOR measurements from corresponding PVT samples to assess the accuracy of the GOR predictions.The results from 22 wells with both AMG data and corresponding PVT samples show large agreement between prediction vs.measurement.The accuracy of the predictive model is much higher than previous results reported in the literature.In addition,a Quality Check (QC) metric was developed to efficiently flag low-quality AMG data.The QC metric is vital to give confidence level for GOR prediction based on AMG data when PVT samples are not available.The study confirms that AMG data can be used as a new data source to quantitatively predict continuous reservoir fluid properties in the drilling phase.The method can be used to optimize wireline operations and for some cases,it provides a unique opportunity to acquire reservoir fluid data when conventional fluid sampling or use of wireline tools is not possible.After high-quality PVT data becomes available in the wireline logging phase,the continuous GOR prediction can be further improved and used to determine reservoir fluid gradient and reservoir compartmentalization.
机译:来自钻井作业的泥气数据提供了储层中碳氢化合物存在的第一个指示。它已经是石油工业数十年的梦想,以预测泥土气体数据的储层气体和油性,因为它会提供对储层液体性质在早期的液层中,持续用于所有水库区域,并且以低成本。文献中报道的前所未有的努力不会导致从泥气数据的储层液体性质的定量预测的可靠方法。在本文中,我们提出一种基于机器学习的新方法,使我们能够预测来自先进的泥质气体(AMG)数据的瓦斯油比(GOR)。目前的工作基于以前的非传统(页岩)水库的成功飞行员。我们的目标是延伸传统储层的试验研究结果。一般来说,由于TH,储层液体性能的预测比传统水库更具挑战性,而不是为非传统水库。传统储层中的石油系统的复杂性。直接从AMG数据建立模型,我们使用具有超过2000个PVT样品的完善的储层流体数据库训练了机器学习模型。在PVT样品之间彻底调查了PVT样本之间的组成相似性。 AMG数据,我们应用了从PVT样本开发的模型到AMG数据。与来自相应的PVT样本的GOR测量的预测GOR与GOR测量进行了比较,以评估GOR预测的准确性。来自AMG数据的22个孔的结果和相应的结果PVT样品在预测Vs.mearsement之间显示了大的协议。预测模型的准确性远高于在文献中报告的先前结果。此外,开发了一种质量检查(QC)度量以有效地标记低质量的AMG数据。该当不可用PVT样品时,QC度量对于基于AMG数据的GOR预测提供置信水平。研究证实了AMG数据可以用作新的数据源来定量地预测钻井阶段的连续储库流体特性。该方法可用于优化有线操作,并且在某些情况下,它提供了当常规流体采样时获取储存流体数据的独特机会使用有线工具是不可能的。高质量的PVT数据在有线测井阶段可用,可以进一步改善连续的GOR预测并用于确定储层流体梯度和储层舱位化。

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