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Bayesian Biclustering by dynamics: A clustering algorithm for SAGD time series data

机译:贝叶斯动力学聚类:SAGD时间序列数据的聚类算法

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Steam-Assisted Gravity Drainage (SAGD) is an extra heavy oil recovery process consisting of an upper horizontal steam injector and a lower horizontal producer that removes fluids from the reservoir. Given its costs and environmental impact, SAGD injection strategies must be examined to find ways to improve performance. In this paper, a new Bayesian Biclustering by Dynamics (BBCD) method is proposed, which finds and differentiates groups of SAGD wells based on their oil production response to steam injected over time. This is a greedy algorithm that automatically clusters both rows and columns of SAGD injection and production data and then generates a descriptive summary for each cluster. Clusters are described with probability distributions that capture the likelihood of transitioning between discrete steam-to-oil ratio states. In addition, BBCD incorporates background knowledge on SAGD directly into the clustering process via prior transition probability distributions. Real SAGD operation data from sites in Alberta, Canada are used for this analysis. The results reveal nine production responses to two different steam injection strategies, and new insights into SAGD process performance.
机译:蒸汽辅助重力排水(SAGD)是一种额外的重油回收工艺,由上部水平蒸汽注入器和下部水平产生器组成,用于从储层中去除流体。考虑到其成本和环境影响,必须检查SAGD注入策略,以找到提高性能的方法。本文提出了一种新的动力学贝叶斯比集法(BBCD),该方法根据SAGD井的组对随时间注入的蒸汽的产油响应来发现和区分SAGD井组。这是一种贪心算法,可自动将SAGD注入和生产数据的行和列聚类,然后为每个聚类生成描述性摘要。用概率分布描述聚类,该概率分布捕获离散的汽油比状态之间转换的可能性。此外,BBCD通过先前的转移概率分布将有关SAGD的背景知识直接纳入聚类过程。来自加拿大艾伯塔省站点的实际SAGD操作数据用于此分析。结果揭示了对两种不同蒸汽注入策略的九种生产响应,以及对SAGD工艺性能的新见解。

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