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Improving Permeability and Productivity Estimation with Electrofacies Classification and Core Data Collected in Multiple Oilfields

机译:用电离缩探分类和多种油田收集的核心数据改善渗透性和生产力估算

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In the industry, it is a common practice to estimate continuous permeability by establishing a porosity-permeability relationship (poroperm) from conventional core analysis. For each new oilfield, core data is required to build a permeability model for this particular field. Due to reservoir heterogeneity, core derived poroperm can sometimes lead to biased predictions. This is particularly true for oilfields where core samples are scarce or provide a poor coverage of the reservoirs. Improving the accuracy of permeability models in these oilfields is key to better productivity estimation in the oilfield development planning. In 1984. Hearn et al. first proposed the concept of flow unit while studying Shannon reservoir in HartogDraw oilfield. Wyoming, USA. Since Hearn put forward the concept of reservoir flow unit, various Electrofacies classification methods have been proposed by different scholars (Hearn et al. 1984). Generally they can be divided into two categories. One is geological research method, which mainly uses geological cuttings and routine core analysis to calculate flow zone index (FZI) for reservoir classification (Xinlei et al. 2017; Elphick et al. 1999; Kohonen et al. 1982). This method improves the accuracy of permeability evaluation to a certain extent, but it mainly relies on routine core analysis data. Due to poor ductility, this method has certain limitations in the classification of uncored reservoirs. The other is the relatively popular artificial intelligence technology in the oil industry in recent years. With the rapid development of computer hardware, artificial intelligence as a new technology is becoming more and more popular. In particular, the machine learning algorithm represented by neural network has a long history in petroleum industry technology, which solves many problems in petroleum specialty and is favored by many petroleum engineers. Machine learning classifies electrofacies mainly by clustering analysis of logging curves through mathematical algorithms such as neural network classification. K-nearest neighbor classification (KNN) and Multi-Resolution Graph based Clustering (MRGC), and then the corresponding relationship between electrofacies and lithofacies is established by combining core analysis and cutting data. Since this method is based on continuous well logs, it has strong extensibility and is easy to learn from uncored wells (Xinlei et al. 2017). In this paper, we describe a novel workflow that predicts continuous permeability from conventional well logs, based on Electrofacies classification and core data collected in multiple oilfields. In this method. firstly, the MRGC is used to classify electrofacies of the logging curves in coring sections. Secondly, KNN algorithm is used to learn the results of electrofacies classification into uncored sections. Finally, the permeability model based on the electrofacies constraint is established. Compared with the neural network classification, the MRGC has the advantages of fast operation speed and stable operation results. The Neighbor Index (NI) parameter in the algorithm can quickly classify the sample data, and the Kernel Representative Index (KRI) parameter can select the optimal class from the results of multiple classifications(Yunjiang et al. 2018: Ting et al. 2018). Our study area consists of 13 oilfields with the same depositional environment and mineralogy. As a result, well log responses in these oilfields have similar characteristics. A total of 2122 core samples were collected in these oilfields and triple combo well logs are also available in the same wells. Based on routine core analysis and log feature analysis, we divide log responses into 6 electrofacies. Permeability models are then established for each electrofacies using core data and are used to make predictions in new wells without any core data. Using the proposed idea, we re-estimated the permeability and productivity in a producer well in the study area. The
机译:在该行业中,通过建立来自常规核心分析的孔隙源关系(PoroPerm)来估计连续渗透性的常见做法。对于每个新的油田,需要核心数据来为此特定领域构建渗透性模型。由于储层异质性,核心衍生的茯苓可以导致偏置预测。对于油田尤其如此,其中核心样本稀缺或提供储存器的覆盖率差。提高这些油田中渗透性模型的准确性是油田开发规划中更好地生产力估算的关键。 1984年。令人印象深刻。首先提出了流动单元的概念,同时在哈特港油田研究香农水库。怀俄明州,美国。由于审核提出了储层流量单元的概念,因此不同的学者提出了各种电离缩放方法(Meparn等,1984)。通常,它们可以分为两类。一个是地质研究方法,主要使用地质切屑和常规核心分析来计算储层分类的流量区指数(FZI)(Xinlei等,2017; Elphick等,1999; Kohonen等人。1982)。该方法在一定程度上提高了渗透性评估的准确性,但主要依赖于常规核心分析数据。由于延展性差,这种方法在未揭露水库的分类中具有一定的局限性。另一个是近年来石油工业中相对流行的人工智能技术。随着计算机硬件的快速发展,人工智能作为新技术越来越受欢迎。特别是,神经网络代表的机器学习算法在石油工业技术中具有悠久的历史,这解决了石油专业中的许多问题,并受到许多石油工程师的青睐。机器学习主要通过诸如神经网络分类等数学算法的测井曲线分析来分类电离曲线。基于K最近邻分类(KNN)和基于多分辨率图的聚类(MRGC),然后通过组合核心分析和切割数据来建立电离处和锂离样之间的相应关系。由于这种方法基于连续井日志,因此它具有强大的可扩展性,并且易于从未采集的井中学习(Xinlei等,2017)。在本文中,我们描述了一种新颖的工作流程,其基于多种油田收集的电离缩放分类和核心数据,从传统井日志中预测来自传统井日志的连续渗透性的新型工作流程。在这种方法中。首先,MRGC用于对核心部分中的测井曲线的电离曲线进行分类。其次,kNN算法用于将电离缩探分类的结果学到未运种部分。最后,建立了基于电涂层约束的渗透性模型。与神经网络分类相比,MRGC具有快速运行速度和运行稳定的运行结果的优点。算法中的邻居索引(NI)参数可以快速对样本数据进行分类,并且内核代表性索引(KRI)参数可以从多种分类结果中选择最佳类(云江等人2018:Ting等,2018) 。我们的研究区由13个油田组成,具有相同的沉积环境和矿物质。因此,这些油田中的良好日志响应具有相似的特性。在这些油田中收集了总共2122个核心样品,并且在同一孔中也可提供三重组合井原木。基于常规核心分析和日志特征分析,我们将日志响应分成6个电梯。然后使用核心数据为每个电离缩放建立渗透性模型,并用于在没有任何核心数据的新井中进行预测。使用拟议的想法,我们重新估计了研究区的生产者中的渗透性和生产力。这

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