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A New Approach to Characterize CO2 Flooding Utilizing Artificial Intelligence Techniques

机译:一种利用人工智能技术表征二氧化碳洪水的新方法

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The use of carbon dioxide in miscible flooding has been considered as one of the most effective techniques for enhancing oil production. The flooding efficiency is an extreme function of the minimum miscibility pressure (MMP), therefore, searching for a quick and rigorous method to determine MMP is highly needed. Slim tube experiments are normally used to measure the minimum miscibility pressure. However, such experiments are time-consuming and very costly. Different correlations have been developed to determine the MMP during CO2 injection process. These empirical equations are not widely applicable and might produce severe estimation errors, because they are developed based on limited experimental results. This paper proposes a new technique to evaluate the CO2 flooding and minimize the uncertainties of using numerical approaches. The objective of this work is developing a reliable model to predict the MMP during CO2 flooding. Actual case studies for flooding heterogeneous and anisotropic reservoir were utilized to generate the MMP model, more than 140 data points were used to construct and evaluate the proposed model. Several artificial intelligence techniques were studied to estimate the CO2-MMP for a wider range of conditions. The developed models investigate the effect of API gravity, fluid composition, and injected gas composition on the performance of CO2 flooding operation. The CO2-MMP was estimated using different artificial intelligence techniques including; radial basis function network, artificial neural network, generalized neural network and adaptive neuro-fuzzy inference system. The wellbore condition and reservoir parameters were used to provide an accurate and quick prediction for the flooding performance. Sensitivity study was conducted to optimize the model parameters. Then, the optimized artificial neural network model was utilized to extract an empirical equation. The developed equation was verified using actual field data an acceptable average absolute percentage error (AAPE) of 6.6% was obtained. In addition, the developed CO2-MMP model was compared with different determination approaches. It is found that, the proposed technique outperforms the current CO2-MMP models. This work would afford an effective approach to characterize the CO2-flooding for complex reservoirs, also improve the prediction performance of commercial software, which leads to a better production management in the particular CO2-operations.
机译:二氧化碳在混溶性洪水中的使用被认为是增强石油产量最有效的技术之一。洪水效率是最小混溶性压力(MMP)的极端功能,因此,非常需要寻找快速和严格的方法来确定MMP。纤细管实验通常用于测量最小的混溶性压力。然而,这种实验是耗时的,并且非常昂贵。已经开发出不同的相关性来确定CO2注射过程中的MMP。这些经验方程不广泛适用,可能产生严重的估计误差,因为它们是基于有限的实验结果开发的。本文提出了一种新的技术来评估二氧化碳洪水,最大限度地减少使用数值方法的不确定性。这项工作的目的正在开发一种可靠的模型来预测CO2洪水期间的MMP。利用泛洪异质和各向异性储层的实际研究来产生MMP模型,使用超过140个数据点来构建和评估所提出的模型。研究了几种人工智能技术以估计CO2-MMP在更广泛的条件下。开发模型研究了API重力,流体组合物和注入气体组合物对CO2泛滥操作的性能的影响。使用不同的人工智能技术估计CO2-MMP,包括;径向基函数网络,人工神经网络,广义神经网络和自适应神经模糊推理系统。井筒状况和储层参数用于提供对洪水性能的准确和快速预测。进行敏感性研究以优化模型参数。然后,利用优化的人工神经网络模型提取经验方程。使用实际的现场数据验证了所开发的方程,获得了6.6%的可接受的平均绝对百分比误差(SAPE)。此外,将开发的CO2-MMP模型与不同的测定方法进行比较。发现,所提出的技术优于当前的CO2-MMP型号。这项工作能够有效的方法来表征复杂水库的二氧化碳洪水,还提高了商业软件的预测性能,这导致特定二氧化碳运营中的更好的生产管理。

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