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Production Forecasting and Uncertainty Quantification for a Naturally Fractured Reservoir using a New Data-Space Inversi

机译:使用新的数据空间virersi生产预测和天然裂缝储层的不确定性量化

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A new method for production forecasting and uncertainty quantification, applicable for realistic naturally fractured reservoirs (NFRs) represented as general discrete-fracture-matrix (DFM) models, is developed and applied. The forecasting procedure extends a recently developed data-space inversion (DSI) technique that generates production predictions using only prior-model simulation results and observed data. The method does not provide posterior (history-matched) geological models. Rather, the DSI method treats production data as random variables. The prior distribution is estimated from the flow simulations performed on prior geological models, and the posterior data-variable distribution is sampled using a data-space randomized maximum likelihood method. The DSI treatment requires the parameterization of data variables to render them approximately multivariate Gaussian. The complex production data considered here (resulting from frequent well shut-ins) is treated using a new reparameterization that involves principal component analysis combined with histogram transformation. The DSI procedure is applied to a real NFR that has undergone years of primary production and is now under consideration for waterflooding. To construct the DSI representation, 400 prior DFM models, which correspond to different geologic concepts and properties, are simulated. Two different reference true' models, along with different data-assimilation durations, are considered to evaluate the performance of the DSI procedure. In all cases. the DSI predictions are shown to be consistent with the forecasts from the true' model, and to provide reasonable quantification of the forecast uncertainty.
机译:开发和应用适用于作为通用离散 - 骨折 - 矩阵(DFM)模型的现实自然裂缝储层(NFR)的生产预测和不确定量化的新方法。预测过程扩展了最近开发的数据空间反演(DSI)技术,该技术仅使用先前模型仿真结果和观察数据来生成生产预测。该方法不提供后(历史匹配)地质模型。相反,DSI方法将生产数据视为随机变量。从现有地质模型执行的流动模拟估计了先前分布,并使用数据空间随机化最大似然方法对后部数据变量分布进行采样。 DSI处理需要数据变量的参数化,以使它们大致多变量高斯。这里考虑的复杂生产数据(由频繁的良好关闭)使用新的Reparameterization进行处理,涉及主成分分析与直方图转换相结合。 DSI程序适用于经过多年初级生产的真实NFR,现在正在考虑到水上浇灌。为了构建DSI表示,模拟了与不同地质概念和属性相对应的400个以前的DFM模型。两个不同的参考真实'模型以及不同的数据同化持续时间,被认为是评估DSI程序的性能。在所有情况下。 DSI预测显示与真实“模型的预测”一致,并提供了预测不确定性的合理量化。

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