高斯正交GQ用于通过累积分布函数精确地近似储量、潜在资源和潜在资源的相对权重

Nefeli Moridis, W. J. Lee, Wayne Sim, T. Blasingame
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引用次数: 0

摘要

这项工作的目的是通过累积分布函数,从数字上估计分配给资源管理系统矩阵中每个储备类别的储备的比例。我们从德克萨斯A&M大学提供的Permian盆地数据集中选择了38口井。以前的研究表明,通过正态分布的cdf将储量类别联系起来的Swanson平均值是一种不准确的方法,无法确定储量类别与非对称分布之间的关系。无论盆地类型如何,生产数据都是对数正态分布的,因此不能遵循SM概念。高斯正交法(GQ)提供了一种方法来准确估计位于1P、2P和3P类别的储量比例,即权重。高斯正交是一种数值积分方法,它使用离散随机变量和与原始数据匹配的分布。对于这项工作,我们将对数正态累积分布函数(CDF)与一组替代生产数据的离散随机变量联系起来,并确定相关概率。常规油田和非常规油田的生产数据都是对数正态分布的,因此我们希望这种方法可以应用于任何油田。为了做到这一点,我们使用Arps的双曲模型和蒙特卡罗模拟进行了概率递减曲线分析(DCA),获得了1P、2P和3P的体积,并计算了每个储量类别的相对权重。我们使用商业软件进行了概率率暂态分析(RTA),获得了1P、2P和3P体积,并计算了每个储量类别的相对权重。我们实施了3点、5点和10点GQ,以获得每口井的权重和百分位数。一旦完成,我们通过计算概率DCA、RTA和GQ结果之间的百分比差来验证GQ结果。我们增加了标准偏差,以考虑潜在资源和潜在资源的不确定性,并实施了3点、5点和10点GQ,以获得每口井的权重和百分位数。这也使我们能够近似这些体量的权重,从而在给定项目的整个生命周期中跟踪它们。概率DCA、RTA和储量的结果表明,SM是估计各储量类别相对权重的不准确方法。1C、2C、3C、1U、2U和3U的潜在资源和潜在资源分别以类似的方式分布,但方差更大,纳入标准差。结果表明,GQ能够通过对数正态CDF捕获储量权重的准确表示。基于所提出的结果,我们认为GQ是准确的,可以用来近似PRMS类别之间的关系。这种关系将有助于向SEC预订储备金,因为它可以为任何字段重新创建。这些储备和储备以外的资源(ROTR)的分配对计划和资源盘点很重要。由于概率DCA、RTA和GQ权重之间的百分比差异很小,GQ提供了对储备权重预测的信心度量。该方法适用于常规和非常规油田。
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Gaussian Quadrature GQ Used to Accurately Approximate the Relative Weights of Reserves, Contingent Resources, and Prospective Resources Through A Cumulative Distribution Function
The objective of this work is to numerically estimate the fraction of Reserves assigned to each Reserves category of the PRMS matrix through a cumulative distribution function. We selected 38 wells from a Permian Basin dataset available to Texas A&M University. Previous work has shown that Swanson's Mean, which relates the Reserves categories through a cdf of a normal distribution, is an inaccurate method to determine the relationship of the Reserves categories with asymmetric distributions. Production data are lognormally distributed, regardless of basin type, thus cannot follow the SM concept. The Gaussian Quadrature (GQ) provides a methodology to accurately estimate the fraction of Reserves that lie in 1P, 2P, and 3P categories – known as the weights. Gaussian Quadrature is a numerical integration method that uses discrete random variables and a distribution that matches the original data. For this work, we associate the lognormal cumulative distribution function (CDF) with a set of discrete random variables that replace the production data, and determine the associated probabilities. The production data for both conventional and unconventional fields are lognormally distributed, thus we expect that this methodology can be implemented in any field. To do this, we performed probabilistic decline curve analysis (DCA) using Arps’ Hyperbolic model and Monte Carlo simulation to obtain the 1P, 2P, and 3P volumes, and calculated the relative weights of each Reserves category. We performed probabilistic rate transient analysis (RTA) using a commercial software to obtain the 1P, 2P, and 3P volumes, and calculated the relative weights of each Reserves category. We implemented the 3-, 5-, and 10-point GQ to obtain the weight and percentiles for each well. Once this was completed, we validated the GQ results by calculating the percent-difference between the probabilistic DCA, RTA, and GQ results. We increase the standard deviation to account for the uncertainty of Contingent and Prospective resources and implemented 3-, 5-, and 10-point GQ to obtain the weight and percentiles for each well. This allows us to also approximate the weights of these volumes to track them through the life of a given project. The probabilistic DCA, RTA and Reserves results indicate that the SM is an inaccurate method for estimating the relative weights of each Reserves category. The 1C, 2C, 3C, and 1U, 2U, and 3U Contingent and Prospective Resources, respectively, are distributed in a similar way but with greater variance, incorporated in the standard deviation. The results show that the GQ is able to capture an accurate representation of the Reserves weights through a lognormal CDF. Based on the proposed results, we believe that the GQ is accurate and can be used to approximate the relationship between the PRMS categories. This relationship will aid in booking Reserves to the SEC because it can be recreated for any field. These distributions of Reserves and resources other than Reserves (ROTR) are important for planning and for resource inventorying. The GQ provides a measure of confidence on the prediction of the Reserves weights because of the low percent difference between the probabilistic DCA, RTA, and GQ weights. This methodology can be implemented in both conventional and unconventional fields.
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