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首页> 外文期刊>Journal of Petroleum Science & Engineering >Estimation of NMR log parameters from conventional well log data using a committee machine with intelligent systems: A case study from the Iranian part of the South Pars gas field, Persian Gulf Basin
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Estimation of NMR log parameters from conventional well log data using a committee machine with intelligent systems: A case study from the Iranian part of the South Pars gas field, Persian Gulf Basin

机译:使用具有智能系统的委员会机,根据常规测井数据估算NMR测井参数:以波斯湾盆地南帕尔斯气田的伊朗部分为例

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摘要

Nuclear Magnetic Resonance (NMR) log provides useful information for petrophysical study of the hydrocarbon bearing intervals. Free fluid porosity (effective porosity), rock permeability and bound fluid volume (BFV) could be obtained by processing and interpretation of NMR data. The present study proposes an improved strategy to make a quantitative correlation between the NMR log parameters and conventional well logs by integration of different intelligent systems using the concept of committee machine. The proposed committee machine with intelligent systems (CMIS) combines the results of Fuzzy Logic (FL), Neuro-Fuzzy (NF) and Neural Network (NN) algorithms for overall estimation of the NMR log parameters from conventional well log data. It assigns a weight factor to each of the individual intelligent algorithms showing its contribution in overall prediction. The weight factors are derived in two ways: simple averaging and weighted averaging. In the weighted averaging method a genetic algorithm (GA) was employed to obtain the optimal contribution of each algorithm in construction of the CMIS. The proposed methodology was applied to the South Pars gas field, Persian Gulf Basin. The petrophysical logs from two wells were used for constructing the intelligent models and a third well from the field was used to evaluate the reliability of the developed models. The results indicate the higher performance of the GA optimized model over the individual intelligent systems performing alone.
机译:核磁共振(NMR)日志为油气含油气层的岩石物理研究提供了有用的信息。可以通过处理和解释NMR数据来获得自由流体孔隙率(有效孔隙率),岩石渗透率和结合流体体积(BFV)。本研究提出了一种改进的策略,通过使用委员会机器的概念集成不同的智能系统,使NMR测井参数与常规测井之间定量相关。拟议的具有智能系统的委员会机(CMIS)结合了模糊逻辑(FL),神经模糊(NF)和神经网络(NN)算法的结果,可以从常规测井数据中全面估算NMR测井参数。它将权重因子分配给每个单独的智能算法,以显示其在总体预测中的作用。权重因子以两种方式得出:简单平均和加权平均。在加权平均法中,采用遗传算法(GA)获得每种算法在CMIS构建中的最佳贡献。所提出的方法已应用于波斯湾盆地南帕尔斯气田。使用两口井的岩石物理测井数据构建智能模型,并使用现场第三口井的岩石物理井评估开发的模型的可靠性。结果表明,GA优化模型比单独执行的单个智能系统具有更高的性能。

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