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Decomposition of Publicly Reported Combined Hydrocarbon Streams Using Machine Learning in the Montney and Duvernay

机译:在Montney和Duvernay中使用机器学习的公开报道的碳氢化合物流分解

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Publicly reported hydrocarbon production data offers the opportunity to assess new acreage,compare production with privately held wells,and to develop general insights about hydrocarbon plays.However,in some cases,publicly reported data obscures valuable information due to reporting requirements and procedures.For example,in Canada,retrograde condensate reservoirs produce gas and condensate,but the volume is often reported as total gas-equivalent hydrocarbon volume.Our goal in this study is to deconvolve production histories of aggregated gas-equivalent hydrocarbon volumes into separate production histories for the condensate and gas streams.We use a small proprietary dataset of a few hundred wells,where each well contains a matched combined gas-equivalent production history with separate production histories for the individual condensate and gas products.We do not explicitly consider hydrocarbon composition or fluid properties;rather,we let our machine learning algorithm discern implicit relationships between location,which is directly correlated to fluid properties,hydrocarbon composition,and rock properties,and controllable parameters such as interwell spacing and completions designs.Using a held-out test set,our algorithm accurately captures cumulative volumes of each product over its first two years of production and captures condensate-to-gas ratios(CGR)over the same time span.This method reduces mean absolute percent errors in CGR at IP720 by 10-20% when compared with the traditional approach of estimating in-place CGR in conjunction with a simple decline curve,and accurately predicts decline curve shapes of the CGR history without any human bias.We apply our method to separate datasets from the Montney and Duvernay plays.While different features appear to be more important between the plays,the method offers comparable accuracy in both plays.We ultimately reduce our feature dataset to the publicly reported total gas-equivalent production history,digitized maps of relevant geological properties,and spacing and completions parameters.This feature dataset is all that is necessary to reproduce proprietary production histories of separated condensate and gas streams with a mean absolute percent error in the first two years of less than 30% on average.
机译:公开的碳氢化合物生产数据提供了评估新种植面积的机会,与私人持有的井进行比较生产,并开发关于碳氢化合物戏剧的一般见解。但是,在某些情况下,由于报告要求和程序而掩盖了有价值的信息。 ,在加拿大,逆行凝结物储存器产生气体和冷凝物,但该体积通常被报告为总气体当量烃体积。本研究的目标是将聚集的气体等量的生产历史解构为冷凝物的单独生产历史和天然气流。我们使用了几百个井的小专有数据集,其中每个井都包含一个匹配的组合气体等同的生产历史,具有单独的凝析液和天然气产品的生产历史。我们没有明确考虑碳氢化合物组成或流体性质;相反,我们让我们的机器学习算法辨别incli位置之间的CIT关系,其与流体性质,烃组合物和岩石性能直接相关,以及可控参数,如接口间距和完井设计。用于保持测试集,我们的算法准确地将每个产品的累积量捕获到其上在同一时间跨度,前两年的生产和捕获冷凝物 - 气差(CGR)。与估计地理CGR的传统方法相比,IP720在IP720的CGR中的平均绝对百分比减少10-20%结合简单的下降曲线,准确地预测CGR历史的下降曲线形状,没有任何人类偏见。我们将我们的方法应用于从Montney和Duvernay扮演的分开数据集。当戏剧之间不同的特征似乎更重要,方法在两者剧中提供了可比的准确性。我们最终会减少我们的特色数据集,以公开报告的总天然气量的生产历史,数字化MA相关地质特性的PS,以及间距和完成参数。本特征数据集是必要的,以便在平均值不到30%的前两年中使用平均绝对百分比的分离的冷凝物和气流的专有生产历史。

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