History Matching in a Reservoir Model Using an Automatic Approach

C. I. Ndubuka, Okon, Edet Ita
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Abstract

History matching may be seen as an optimization problem based on minimizing an objective function that measures the mismatch between reservoir history and simulated data. Manual methods of history matching are largely cumbersome and grossly ineffective especially when the optimization parameters are large. Recourse to the manual method leads to development of models which cannot accurately predict the reservoir behaviour and thus are not suitable for predicting future behaviour of the reservoir. The only way out is the use of automatic methods especially those backed by artificial intelligence. The study aims at applying an automatic method to perform history matching in a reservoir model. The objectives will be to; Perform automatic history matching using ABC, match permeability distribution in the reservoir using oil production and bottom hole flowing pressure data and compare the effectiveness and convergence speed of the algorithm. History matching aims at fine-tuning the parameters used in building a reservoir model to closely match that of the real field. In this study, a very promising novel optimization algorithm has been employed to history a well-known reservoir model namely the PUNQ-S3 model. The model used for this study is the popular PUNQ-S3 reservoir model. PUNQ (Production forecasting with Uncertainty Quantification) is a joint industrial-academic project with the aim of developing efficient history matching and uncertainty quantification methods. Results obtained proves the algorithm used to be a very efficient optimization tool as the data used as the history of the study is nearly equaled by the optimization tool. We therefore conclude that the ABC algorithm be employed in performing tasks that demand high degree of accuracy.
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使用自动方法在储层模型中进行历史匹配
历史匹配可以看作是一个优化问题,其基础是最小化目标函数,该函数用于衡量储层历史与模拟数据之间的不匹配程度。历史匹配的人工方法非常麻烦,而且效果很差,尤其是当优化参数很大时。采用人工方法开发的模型无法准确预测储层的行为,因此也不适合预测储层未来的行为。唯一的出路就是使用自动方法,尤其是人工智能方法。本研究旨在应用一种自动方法,在储层模型中执行历史匹配。目标是:使用 ABC 进行自动历史匹配,使用石油产量和井底流动压力数据匹配储层中的渗透率分布,并比较算法的有效性和收敛速度。历史匹配的目的是微调用于建立储层模型的参数,使其与实际油田的参数接近。在本研究中,我们采用了一种非常有前途的新型优化算法,对一个著名的储层模型(即 PUNQ-S3 模型)进行历史匹配。本研究使用的模型是著名的 PUNQ-S3 储层模型。PUNQ(带有不确定性量化的生产预测)是一个产学联合项目,旨在开发高效的历史匹配和不确定性量化方法。研究结果证明,所使用的算法是一种非常有效的优化工具,因为作为研究历史的数据几乎与优化工具相等。因此,我们得出结论,在执行对精确度要求较高的任务时,可以采用 ABC 算法。
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