Improvement of Fracture Network Modeling in Fractured Reservoirs Using Conditioning and Geostatistical Method

IF 1 Q4 ENGINEERING, CIVIL
S. R. M. Madani, H. Hassani, B. Tokhmechi
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引用次数: 1

Abstract

Abstract The fracture network in hydrocarbon reservoirs plays a major role in reservoir fluid transfer to production wells. Modeling of fracture in fractured reservoir is often done randomly. Modelling is based on image logs and core information. Because the information is available in a small number of wells, the model is not reliable and this problem makes it impossible to predict the correct flow rate and the amount of wells produced. In this study, an algorithm based on primary and secondary data for fracture network modelling in one of the southwest fields of Iran has been presented. The initial data include aperture fracture and fracture density, and secondary data includes petrophysical data, i.e. electrical resistance and resistance logs used to scale-up characteristics of fracture in wells. In this study, we tried to increase the accuracy of modelling by using modelling conditionality on existing and constructed data. Gaussian conditional simulation produces a set of realizations on which non-linear statistics can be readily available. In this way, information was entered into the model in areas where fracture was predicted to exist. Using the turning bands co-simulation method in geostatistic, the fracture characteristics were simulated in wells that were not available. Using the results of the 3D model, the fracture of the reservoir was re-constructed. The results showed that the modelling performed in this study has been able to increase the fracture prediction accuracy and their properties in fracture density by about 9% and in the fracture opening by about 5%.
裂缝性储层裂缝网络建模的调节与地质统计学方法改进
油气储层裂缝网络对储层流体向生产井的运移起着重要作用。裂缝性油藏的裂缝建模通常是随机的。建模基于图像日志和岩心信息。由于这些信息只在少数井中可用,因此模型不可靠,这使得无法预测正确的流量和井的产量。本文提出了一种基于一次和二次数据的伊朗西南油田裂缝网络建模算法。初始数据包括孔径裂缝和裂缝密度,二次数据包括岩石物性数据,即电阻和电阻测井,用于放大井中裂缝的特征。在本研究中,我们试图通过对现有和构建的数据使用建模条件来提高建模的准确性。高斯条件模拟产生了一组实现,在这些实现上可以很容易地获得非线性统计。通过这种方式,将预测裂缝存在的区域的信息输入到模型中。利用地质统计学中的转向带联合模拟方法,模拟了未得到裂缝的井的裂缝特征。利用三维模型的结果,重建了储层的裂缝。结果表明,本研究所进行的建模能够将裂缝预测精度和裂缝密度的预测精度提高约9%,裂缝开度的预测精度提高约5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
自引率
9.10%
发文量
18
审稿时长
12 weeks
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