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A Data Driven Method For Sweet Spot Identification In Shale Plays Using Well Log Data

机译:使用井日志数据在页岩播放中的甜点识别数据驱动方法

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In recent years, interest in shale plays has grown substantially due to horizontal drilling and hydraulic fracturing techniques. Special interest is in shale plays previously exhausted with vertical wells that are believed to still have high potential if developed with horizontal wells. However, with drilling costs at an all time high, choosing the right locations for new wells is a crucial issue. Therefore, identifying so called “sweet spots” with high potential for oil and gas is of great importance for oil companies worldwide. Well log data from millions of wells drilled using conventional techniques since the industry’s inception is available and generally not used. We propose a data analytical solution that 1) automatically extracts simple features from complex and high-dimensional well log curves arising from vertical wells using functional Principal Component Analysis (fPCA), and 2) builds models that predict sweet spots in shale plays by correlating extracted features with production data from horizontal wells. Our solution builds predictive models for production directly using previous production data and petrophysical well logs alone, thus circumventing time consuming and expensive geological analysis. Regression in conjunction with interpolation (Regression-Kriging) is a well-known approach that can be used to correlate well log curves with production data. However, this method is only applicable once the set of (one-dimensional) predictors and the corresponding regression model have been defined. Summary statistics such as means, maximum or minimum peak heights are obvious candidates but are too simple to capture all the relevant features from the well logs. Instead, we extract a set of one-dimensional features from each of the well log curves, facilitating simple 2D interpolations as opposed to more difficult 3D interpolations. This is particularly advantageous in situations where seismic data are not available and 3D interpolations are challenging. Finally, by regressing previous production data from horizontal wells on the extracted features we show that it is possible to predict production at new locations directly. We have implemented our method using the R statistical package. We tested it using well log data from 2020 vertical wells and production data from 702 horizontal wells in a single field. For gas we get an accuracy of 90% at predicting whether a given horizontal well has production above a given high-production threshold, while for oil, we get an accuracy of 71%. The main novelty of our method is the systematic extraction of one-dimensional predictors using a statistically robust method called functional Principal Components Analysis (fPCA). To the best of our knowledge this is the first time fPCA is applied to well log curves in the context of oil and gas exploration.
机译:近年来,由于水平钻井和液压压裂技术,对页岩剧的兴趣基本上增加。特殊兴趣在页岩剧中,先前用垂直井耗尽的垂直井,如果用水平井开发,仍被认为仍然具有高潜力。然而,随着钻井成本在历史新高,选择新井的正确位置是一个至关重要的问题。因此,识别所谓的“甜点”,具有高潜力的石油和天然气对全球石油公司的重要性非常重要。从数百万孔使用传统技术钻取的井数数据,因为该行业的初始可用并且通常不使用。我们提出了一种数据分析解决方案,其中1)使用功能主成分分析(FPCA)自动提取由垂直井中产生的复杂井和高维井日志曲线的简单特征,以及2)通过相关提取来构建预测页岩中的甜点的模型具有水平井生产数据的功能。我们的解决方案支持直接使用以前的生产数据和岩石物理井路的生产预测模型,从而避免耗时和昂贵的地质分析。与插值结合的回归(回归-Kriging)是一种众所周知的方法,可用于将井日志曲线与生产数据相关联。然而,该方法仅适用于已经定义了一组(一维)预测器和相应的回归模型。概述统计诸如含义,最大或最小峰值高度是明显的候选者,但是太简单,无法捕获来自井日志的所有相关功能。相反,我们从井日志曲线中的每一个提取一组一维特征,促进简单的2D插值,而不是更困难的3D插值。这在不可用的地震数据的情况下是特别有利的,并且3D插值具有挑战性。最后,通过在提取的特征上从水平井回归之前的生产数据,我们表明可以直接预测新位置的生产。我们使用R统计包实现了我们的方法。我们使用从2020个垂直井和702水平井中的生产数据中使用井的日志数据进行测试。对于天然气,我们在预测给定水平良好的情况下获得90%的准确性,在给定的高产量阈值之上,对于油,我们得到71%的准确性。我们的方法的主要新颖性是使用称为功能主成分分析(FPCA)的统计学鲁棒方法来系统提取一维预测器。据我们所知,这是第一次FPCA应用于石油和天然气勘探背景下的良好日志曲线。

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