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首页> 外文期刊>Arabian journal of geosciences >Reservoir parameters determination using artificial neural networks: Ras Fanar field, Gulf of Suez, Egypt
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Reservoir parameters determination using artificial neural networks: Ras Fanar field, Gulf of Suez, Egypt

机译:使用人工神经网络确定储层参数:埃及苏伊士湾Ras Fanar油田

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摘要

Ras Fanar field is one of the largest oil-bearing carbonate reservoirs in the Gulf of Suez. The field produces from the Middle Miocene Nullipore carbonate reservoir, which consists mainly of algal-rich dolomite and dolomitic limestone rocks, and range in thickness between 400 and 980 ft. All porosity types within the Nullipore rocks have been modified by diagenetic processes such as dolomitization, leaching, and cementation; hence, the difficulty arise in the accurate determination of certain petrophysical parameters, such as porosity and permeability, using logging data only. In this study, artificial neural networks (ANN) are used to estimate and predict the most important petrophysical parameters of Nullipore reservoir based on well logging data and available core plug analyses. The different petrophysical parameters are first calculated from conventional logging and measured core analyses. It is found that pore spaces are uniform all over the reservoirs (17-23%), while hydrocarbon content constitutes more than 55% and represented mainly by oil with little saturations of secondary gasses. A regular regression analysis is carried out over the calculated and measured parameters, especially porosity and permeability. Fair to good correlation (R <65%) is recognized between both types of datasets. A predictive ANN module is applied using a simple forward backpropagation technique using the information gathered from the conventional and measured analyses. The predicted petrophysical parameters are found to be much more accurate if compared with the parameters calculated from conventional logging analyses. The statistics of the predicted parameters relative to the measured data, show lower sum error (<0.17%) and higher correlation coefficient (R >80%) indicating that good matching and correlation is achieved between the measured and predicted parameters. This well-learned artificial neural network can be further applied as a predictive module in other wells in Ras Fanar field where core data are unavailable.
机译:Ras Fanar油田是苏伊士湾最大的含碳酸盐储层之一。该油田产自中新世中部Nullipore碳酸盐岩储集层,该储集层主要由富含藻类的白云岩和白云质石灰岩组成,厚度范围在400至980英尺之间。 ,浸出和胶结;因此,仅使用测井数据来准确确定某些岩石物理参数(例如孔隙度和渗透率)会遇到困难。在这项研究中,基于测井数据和可用的岩心塞分析,人工神经网络(ANN)用于估算和预测Nullipore油藏最重要的岩石物理参数。首先从常规测井和测得的岩心分析中计算出不同的岩石物理参数。发现在整个储层中孔隙空间是均匀的(17-23%),而碳氢化合物含量占55%以上,并且主要以次生气体饱和度很小的油为代表。对计算和测量的参数(尤其是孔隙率和渗透率)进行常规回归分析。两种类型的数据集之间都具有相当好的相关性(R <65%)。使用简单的正向反向传播技术(使用从常规分析和测量分析中收集的信息)来应用预测性ANN模块。如果与从常规测井分析中计算出的参数相比,预测的岩石物理参数将更加准确。相对于测量数据的预测参数的统计数据显示较低的和误差(<0.17%)和较高的相关系数(R> 80%),表明在测量参数和预测参数之间实现了良好的匹配和相关性。该知识渊博的人工神经网络可以进一步用作Ras Fanar油田中无法获得核心数据的其他井中的预测模块。

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