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首页> 外文期刊>Journal of natural gas science and engineering >Machine-learning predictions of the shale wells' performance
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Machine-learning predictions of the shale wells' performance

机译:页岩井的机器学习预测

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The ultra-low permeability nature of shale reservoirs leads to an extended linear flow and necessitates horizontal wells with multi-stage engineered fractures to efficiently extract hydrocarbons resources. These artificially-generated and naturally-occurring fractures form complex networks that create complex flow regimes which control oil production. These fractures are neither identical nor equally-spaced, which leads to a production profile with a masked onset of the boundary-dominated flow. The combination of the extended linear flow with the indeterminate onset of the boundary-dominated flow challenges the current deterministic analytic approaches to forecast the estimated ultimate recovery (EUR). Herein, we propose a novel machine-learning approach which overcomes these challenges and provides reliable EUR estimates based on field-wide analyses. We implement a novel unsupervised machine learning (ML) methodology, which allows for automatic identification of the optimal number of features (signals) present in the data based on non-negative matrix/ tensor factorization coupled with k-means clustering incorporating regularization and physics constraints. In the presented analyses, the input data to the ML algorithm is the available (public) production history from the field collected at existing unconventional reservoirs. We validate our approach through hindcasting of the production data, where we achieved an excellent agreement. In addition, our approach is able to identify the poorlyperforming wells, which could benefit from early refracing. Our approach provides fast and accurate estimations of the well performance without presumptions about the state of the well or the flow regime.
机译:页岩储层的超低渗透性导致延长的线性流动,并需要具有多级工程裂缝的水平井来有效地提取油气资源。这些人工产生的和自然产生的裂缝形成了复杂的网络,形成了控制石油生产的复杂流态。这些裂缝既不相同,也不等距分布,这导致生产剖面出现边界主导流的隐蔽开始。扩展线性流与边界主导流的不确定开始相结合,对当前预测预计最终采收率(EUR)的确定性分析方法提出了挑战。在此,我们提出了一种新的机器学习方法,它克服了这些挑战,并基于现场分析提供了可靠的EUR估计。我们实现了一种新的无监督机器学习(ML)方法,该方法允许基于非负矩阵/张量因子分解,结合正则化和物理约束的k均值聚类,自动识别数据中存在的最佳特征(信号)数量。在本文的分析中,ML算法的输入数据是从现有非常规油藏采集的现场可用(公共)生产历史。我们通过对生产数据的后测来验证我们的方法,在后测中我们达成了极好的一致。此外,我们的方法能够识别出成型较差的井,这可能得益于早期的重新压裂。我们的方法可以快速准确地估计油井动态,而无需假设油井状态或流态。

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