首页> 外文会议>SPE Liquids-Rich Basins Conference - North America >Augmenting Hybrid Physics-Based Multivariate Analysis with the Alternating Conditional Expectations Approach to Optimize Permian Basin Well Performance
【24h】

Augmenting Hybrid Physics-Based Multivariate Analysis with the Alternating Conditional Expectations Approach to Optimize Permian Basin Well Performance

机译:通过交替的条件预期方法来增强混合物理的多变量分析,优化二叠纪盆地性能

获取原文

摘要

The oil and gas industry has used multivariate analysis(MVA)to evaluate how geology,reservoir,and drilling/completion parameters(well characteristics)relate to well production.Although many techniques are used,multiple linear regression(MLR)has been especially popular due to its ease of use and the interpretability of its parameters.However,when the relationship between response and predictor variables is highly complex or nonlinear,this technique can yield erroneous and misleading results.Recent work showed the benefit of combining statistical MLR with fracture and numerical reservoir(physics-based)modeling,which yields a more physically realistic production response to suggested completion changes(Mayerhofer,2017).However,this work is limited to using the nonlinear relationships between production outcomes and only a few independent variables(i.e.,proppant/fluid volumes pumped and fracture spacing).For practicality,other important predictors are still assumed to be linearly correlated to the response variable(e.g.,predicted cumulative oil).In this paper,we describe the implementation of the Alternating Conditional Expectations(ACE)approach and the interpretation of its results,and we highlight the main advantages and limitations of the approach in MVA using a simulated dataset and field data from the Permian Basin.The ACE approach is a non-parametric regression method(i.e.,no explicit assumption about the relationships between dependent or response and independent or predictor variables is required).It maximizes the linear correlation between the response and predictor variables in the transformed space(the optimal transformations are derived solely from the given data)resulting in higher R-squared(R2)and smaller Root-Mean-Square-Error(RMSE)values compared to those obtained from the MLR.Because a priori assumptions about the functional form for a transformation(e.g.,linear,monotonic,periodic,and polynomial)do not have to be imposed,the ACE-guided transformation can give new insights into the relationship between the response and predictor variables.We have successfully identified nonlinear relationships between well production and completion/ reservoir properties for horizontal wells in the Permian Basin by means of ACE plots,and we have developed closed functional forms for these relationships.When integrated into the overall workflow of MVA,coupled with completion cost models,the ACE model could produce more realistic and accurate well performance predictions- using not only completion/reservoir parameters that are easily calibrated or "history-matched" as in the physics-based models,but also parameters that cannot be conveniently evaluated with the physics-based models.
机译:石油和天然气行业使用多元分析(MVA)来评估地质,水库和钻井/完成参数(井的特性)如何与井生产有关。尽管使用了许多技术,但多元线性回归(MLR)尤其受欢迎为了易于使用和其参数的可解释性。然而,当响应和预测因子变量之间的关系是高度复杂或非线性时,该技术可以产生错误和误导性的结果。作品表明,将统计信息与骨折和数值相结合的益处。储层(基于物理学)建模,从而产生更具物理上的逼真的生产响应,建议完成变化(Mayerhofer,2017)。然而,这种工作仅限于使用生产结果和仅几个独立变量之间的非线性关系(即,支撑剂/泵送和裂缝间距的液体量)。对于实用性,仍然假设其他重要的预测因子是线性相关的d到响应变量(例如,预测的累积油)。在本文中,我们描述了交替条件期望(ACE)方法的实施以及对结果的解释,并突出了MVA中方法的主要优势和局限性使用来自PEMIAN BASIN的模拟数据集和现场数据.ACE方法是非参数回归方法(即,不需要对所属或响应和独立或预测变量之间的关系的显式假设)。它最大化了之间的线性相关性变换空间中的响应和预测变量(最佳变换仅来自给定数据)导致与来自MLR所获得的那些相比,导致更高的R线(R2)和较小的根均方误差(RMSE)值。由于关于变换的功能形式的先验假设(例如,线性,单调,周期性和多项式)不必施加,但是ace-引导的变换CA n对响应和预测变量之间的关系进行新的见解。通过ACE图,我们已经成功地确定了Permian盆地水平井的井生产和完成/储存器属性之间的非线性关系,并且我们已经为这些开发了封闭的功能形式在与完成成本模型相结合的MVA整体工作流程中,ACE模型可以产生更加现实和准确的良好性能预测 - 不仅使用易于校准的或“历史匹配”的完工/储存器参数。基于物理的模型,还可以使用基于物理的模型方便地评估的参数。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号