A Comparative Study of the Neural Network, Fuzzy Logic, and Nero-fuzzy Systems in Seismic Reservoir Characterization: An Example from Arab (Surmeh) Reservoir as an Iranian Gas Field, Persian Gulf Basin

R. Mohebian, M. Riahi, A. Kadkhodaie-Ilkhchi
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引用次数: 2

Abstract

Intelligent reservoir characterization using seismic attributes and hydraulic flow units has a vital role in the description of oil and gas traps. The predicted model allows an accurate understanding of the reservoir quality, especially at the un-cored well location. This study was conducted in two major steps. In the first step, the survey compared different intelligent techniques to discover an optimum relationship between well logs and seismic data. For this purpose, three intelligent systems, including probabilistic neural network (PNN),fuzzy logic (FL), and adaptive neuro-fuzzy inference systems (ANFIS)were usedto predict flow zone index (FZI). Well derived FZI logs from three wells were employed to estimate intelligent models in the Arab (Surmeh) reservoir. The validation of the produced models was examined by another well. Optimal seismic attributes for the estimation of FZI include acoustic impedance, integrated absolute amplitude, and average frequency. The results revealed that the ANFIS method performed better than the other systems and showed a remarkable reduction in the measured errors. In the second part of the study, the FZI 3D model was created by using the ANFIS system.The integrated approach introduced in the current survey illustrated that the extracted flow units from intelligent models compromise well with well-logs. Based on the results obtained, the intelligent systems are powerful techniques to predict flow units from seismic data (seismic attributes) for distant well location. Finally, it was shown that ANFIS method was efficient in highlighting high and low-quality flow units in the Arab (Surmeh) reservoir, the Iranian offshore gas field.
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神经网络、模糊逻辑和nero -模糊系统在地震储层表征中的比较研究:以波斯湾盆地阿拉伯(Surmeh)气田为例
基于地震属性和水力流动单元的智能储层表征在油气圈闭描述中具有重要作用。预测模型可以准确地了解储层质量,特别是在未取心的井位。这项研究分两个主要步骤进行。在第一步,该调查比较了不同的智能技术,以发现测井和地震数据之间的最佳关系。为此,采用概率神经网络(PNN)、模糊逻辑(FL)和自适应神经模糊推理系统(ANFIS)三种智能系统预测流区指数(FZI)。利用3口井的FZI测井数据对阿拉伯(Surmeh)油藏的智能模型进行了估计。用另一口井验证了模型的正确性。估计FZI的最佳地震属性包括声阻抗、综合绝对振幅和平均频率。结果表明,ANFIS方法比其他系统性能更好,测量误差显著降低。在研究的第二部分,利用ANFIS系统建立了FZI的三维模型。当前研究中引入的综合方法表明,从智能模型中提取的流动单元与测井曲线很好地吻合。基于所获得的结果,智能系统是根据地震数据(地震属性)预测远程井位流动单元的强大技术。最后,在伊朗海上气田Arab (Surmeh)储层中,ANFIS方法可以有效地突出高质量和低质量的流动单元。
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