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首页> 外文期刊>Journal of Petroleum Science & Engineering >Rigorous modeling of permeability impairment due to inorganic scale deposition in porous media
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Rigorous modeling of permeability impairment due to inorganic scale deposition in porous media

机译:多孔介质中无机垢沉积引起的渗透性损害的严格建模

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Water flooding technique has widely been applied in oilfields aiming to augment the natural energy of the reservoir and displace the oil toward production wells. Deposition and accumulation of scaling minerals may occur in oilfields due to the incompatibility existing between foreign fluids injected into the medium and indigenous formation water. Deposition of these minerals in porous media may lead to severe permeability loss, formation damage and hydrocarbon production decline. This paper describes a modeling study representing permeability reduction due to scale deposition by employing an approach based on Least Squares Support Vector Machine (LSSVM) and Coupled Simulated Annealing (CSA), generally referred to as CSA-LSSVM. To this end, almost 1306 experimental data were assembled from the literature aiming to build a comprehensive and reliable model. Applicability of the CSA-LSSVM model was then evaluated in the range of data employed in this study and well accordance was observed between model predictions and experimental measurements yielding an overall correlation coefficient (R-2) 0.999. At the end, permeability reduction data gathered from the literature were analyzed for outlier diagnosis using the leverage statistical algorithm along with providing full details of the implemented method. (C) 2015 Elsevier B.V. All rights reserved.
机译:注水技术已经在油田中广泛应用,旨在增加油藏的自然能并将油驱向生产井。由于注入介质中的外来流体与本机地层水之间存在不相容性,结垢矿物的沉积和堆积可能会在油田中发生。这些矿物在多孔介质中的沉积可能导致严重的渗透率损失,地层破坏和碳氢化合物产量下降。本文描述了一种模型研究,该模型研究通过使用基于最小二乘支持向量机(LSSVM)和耦合模拟退火(CSA)的方法(通常称为CSA-LSSVM)来表示由于水垢沉积而引起的渗透率降低。为此,从文献中收集了将近1306个实验数据,旨在建立一个全面而可靠的模型。然后,在本研究中使用的数据范围内评估了CSA-LSSVM模型的适用性,并在模型预测与实验测量之间观察到了很好的一致性,从而得出整体相关系数(R-2)为0.999。最后,使用杠杆统计算法分析了从文献中收集的渗透率降低数据,以进行离群值诊断,并提供了所实施方法的完整细节。 (C)2015 Elsevier B.V.保留所有权利。

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