首页> 外文期刊>Journal of African Earth Sciences >Fracture density estimation from core and conventional well logs data using artificial neural networks: The Cambro-Ordovician reservoir of Mesdar oil field, Algeria
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Fracture density estimation from core and conventional well logs data using artificial neural networks: The Cambro-Ordovician reservoir of Mesdar oil field, Algeria

机译:使用人工神经网络从岩心和常规测井数据中估算裂缝密度:阿尔及利亚梅斯达尔油田的Cambro-Ordovician油藏

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Fracture density estimation is an indisputable challenge in fractured reservoir characterization. Traditional techniques of fracture characterization from core data are costly, time consuming, and difficult to use for any extrapolation to non-cored wells. The aim of this paper is to construct a model able to predict fracture density from conventional well logs calibrated to core data by using artificial neural networks (ANNs). This technique was tested in the Cambro-Ordovician clastic reservoir from Mesdar oil field (Saharan platform, Algeria). For this purpose, 170 cores (2120.14 m) from 17 unoriented wells have been studied in detail. Seven training algorithms and eight neuronal network architectures were tested. The best architecture is a four layered [6-16-3-1] network model with: a six-neuron input layer (Gamma ray, Sonic interval transit time, Caliper, Neutron porosity, Bulk density logs and core depth), two hidden layers; the first hidden layer has 16 neurons, the second one has three neurons. And a one-neuron output layer (fracture density). The results based on 8094 data points from 13 wells show the excellent prediction ability of the conjugate gradient descent (CGD) training algorithm (R-squar-ed = 0.812).The cross plot of measured and predicted values of fracture density shows a very high coefficient of determination of 0.848. Our studies have demonstrated a good agreement between our neural network model prediction and core fracture measurements. The results are promising and can be easily extended in other similar neighboring naturally fractured reservoirs.
机译:裂缝密度估算是裂缝储层表征中无可争议的挑战。从岩心数据表征裂缝的传统技术成本高昂,耗时且难以用于对非岩心井的任何外推。本文的目的是构建一个模型,该模型能够使用人工神经网络(ANN)从校准到岩心数据的常规测井中预测裂缝密度。该技术在梅斯达尔油田(阿尔及利亚撒哈拉平台)的坎布罗-奥陶纪碎屑岩储层中进行了测试。为此,已经对来自17个未定向井的170个岩心(2120.14 m)进行了详细研究。测试了七个训练算法和八个神经网络结构。最好的体系结构是四层[6-16-3-1]网络模型,其中包括:六个中子输入层(伽马射线,声波间隔传播时间,卡尺,中子孔隙率,堆积密度测井和芯深),两个隐藏层;第一隐藏层有16个神经元,第二个隐藏层有3个神经元。并有一个神经元输出层(断裂密度)。基于13口井的8094个数据点的结果表明,共轭梯度下降(CGD)训练算法具有出色的预测能力(R平方= 0.812)。裂缝密度的实测值和预测值的交点图显示出很高的测定系数为0.848。我们的研究表明,我们的神经网络模型预测与岩心断裂测量之间有着很好的一致性。结果是有希望的,并且可以容易地扩展到其他类似的邻近自然裂缝储层中。

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