首页> 外文期刊>Journal of Petroleum Science & Engineering >Prediction of natural fracture porosity from well log data by means of fuzzy ranking and an artificial neural network in Hassi Messaoud oil field, Algeria
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Prediction of natural fracture porosity from well log data by means of fuzzy ranking and an artificial neural network in Hassi Messaoud oil field, Algeria

机译:利用模糊排序和人工神经网络从测井数据预测自然裂缝孔隙度,阿尔及利亚哈西·梅萨乌德油田

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The fracture porosity is estimated especially through the log data (density, neutron porosity and transit time) and the characteristics of the mud (fluid density, transit time of the saturating fluid). If one of these parameters is lacking, the estimation of the natural fracture porosity using log data becomes impossible. The problem found in the study area of the Hassi Messaoud oil field is that the transit time is missing in many wells, which makes the calculations of the natural fracture porosity difficult. A methodology is proposed in this paper to estimate this parameter by means of fuzzy ranking and artificial neural network (ANN) using four conventional log data (deep resistivity, density, neutron porosity and gamma ray) from well#l and well#2 in Hassi Messaoud oil field. Fuzzy ranking is used to rank the log data input with the degree of influence at the desired output of the ANN, the results obtained confirm that all data used by ANN are important and we cannot neglect any one. The structure of the ANN was trained using the back-propagation algorithm, the training was retained when the number of epochs is equal to 1000 and the mean squared error is equal to 0.001. The correlation coefficient (R~2) between the natural fracture porosity obtained from ANN and log data is equal to 0.878. The methodology presented in this paper can serve for the prediction of natural fracture porosity from well log data when the transit time or the characteristics of the mud are unknown in the oil wells.
机译:尤其是通过测井数据(密度,中子孔隙度和传输时间)和泥浆的特性(流体密度,饱和流体的传输时间)估算裂缝孔隙度。如果缺少这些参数之一,则无法使用测井数据估算自然裂缝孔隙率。 Hassi Messaoud油田研究区发现的问题是,许多井中缺少穿越时间,这使得天然裂缝孔隙度的计算变得困难。本文提出了一种方法,利用模糊排序和人工神经网络(ANN),使用来自Hassi井#1和井#4的四个常规测井数据(深电阻率,密度,中子孔隙度和伽马射线)估算此参数。梅萨乌德油田。模糊排序用于对输入的日志数据的影响程度对ANN的期望输出进行排序,获得的结果证实ANN所使用的所有数据都很重要,我们不能忽略任何一个。使用反向传播算法对ANN的结构进行了训练,当历元数等于1000且均方误差等于0.001时,将保留训练。由人工神经网络获得的天然裂缝孔隙率与测井数据之间的相关系数(R〜2)等于0.878。当油井的传输时间或泥浆特征未知时,本文提出的方法可用于根据测井数据预测天然裂缝孔隙度。

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