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首页> 外文期刊>Arabian journal of geosciences >A hybrid learning automata and case-based reasoning for fractured zone detection using petrophysical logs
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A hybrid learning automata and case-based reasoning for fractured zone detection using petrophysical logs

机译:使用岩石物理原木进行裂缝区检测的混合学习自动机和基于案例的推理

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Fractured zone detection and fracture density estimation in oil wells have significant effects on wellbore stability, reservoir modeling, drilling operations, and well production. Although high-resolution image logs facilitate the identification of fracture characteristics, they are not available for a large set of wells as they drilled before development of the enhanced well logging technologies. Petrophysical logs contain valuable information and can be used as an alternative approach in fracture identifications. These logs are almost available in all wells and can be used as useful inputs to shape a predictive model representing fracture characteristics where image logs are not accessible. This paper proposes a generalized case-based reasoning (CBR) method for fractured zone detection via petrophysical logs. To such aim, a set of train wells are used to beget a database composed of both petrophysical data and the image logs. A learning automata-based algorithm is conducted to find the optimal similarity relation between petrophysical logs and manual interpretation of the borehole image logs. Moreover, new decision parameters are introduced to enhance the applicability of the proposed method in real-life projects. The developed model is successfully tested on the Asmari reservoir through several oil wells from, followed by a discussion on results.
机译:裂缝区检测和油井骨折密度估计对井筒稳定,储层建模,钻井操作和井生产具有显着影响。虽然高分辨率图像日志有助于识别裂缝特性,但由于在开发增强良好的测井技术之前,它们的钻井不适用于大量的井。岩石物理日志包含有价值的信息,可用作骨折识别中的替代方法。这些日志几乎可用于所有井,可以用作塑造代表图像日志无法访问的裂缝特性的预测模型的有用输入。本文提出了通过岩石物理原木进行裂缝区检测的总基案例的推理(CBR)方法。为此目的,一组火车井用于生物组成的数据库,包括岩石物理数据和图像日志。进行了一种基于学习自动机的算法,以找到岩石物理日志与钻孔图像日志的手动解释之间的最佳相似关系。此外,引入了新的决策参数,以提高所提出的方法在现实生活项目中的适用性。开发的模型通过几个油井成功地测试了Asmari水库,然后讨论了结果。

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