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A lithology identification method for continental shale oil reservoir based on BP neural network

机译:基于BP神经网络的大陆页岩油藏岩性识别方法

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The Dongying Depression and Jiyang Depression of the Bohai Bay Basin consist of continental sedimentary facies with a variable sedimentary environment and the shale layer system has a variety of lithologies and strong heterogeneity. It is difficult to accurately identify the lithologies with traditional lithology identification methods. The back propagation (BP) neural network was used to predict the lithology of continental shale oil reservoirs. Based on the rock slice identification, x-ray diffraction bulk rock mineral analysis, scanning electron microscope analysis, and the data of well logging and logging, the lithology was divided with carbonate, clay and felsic as end-member minerals. According to the core-electrical relationship, the frequency histogram was then used to calculate the logging response range of each lithology. The lithology-sensitive curves selected from 23 logging curves (GR, AC, CNL, DEN, etc) were chosen as the input variables. Finally, the BP neural network training model was established to predict the lithology. The lithology in the study area can be divided into four types: mudstone, lime mudstone, lime oil-mudstone, and lime argillaceous oil-shale. The logging responses of lithology were complicated and characterized by the low values of four indicators and medium values of two indicators. By comparing the number of hidden nodes and the number of training times, we found that the number of 15 hidden nodes and 1000 times of training yielded the best training results. The optimal neural network training model was established based on the above results. The lithology prediction results of BP neural network of well XX-1 showed that the accuracy rate was over 80%, indicating that the method was suitable for lithology identification of continental shale stratigraphy. The study provided the basis for the reservoir quality and oily evaluation of continental shale reservoirs and was of great significance to shale oil and gas exploration.
机译:渤海湾盆地的东营萧条和济阳坳陷由具有可变沉积环境的大陆沉积相,页岩层系统具有各种岩性和强烈的异质性。难以用传统的岩性识别方法准确地识别岩性。反向传播(BP)神经网络用于预测欧陆页岩油藏的岩性。基于岩石切片鉴定,X射线衍射散装岩矿物分析,扫描电子显微镜分析和井测井和测井数据,岩性与碳酸盐,粘土和肠道作为末端成员矿物分开。根据核心关系,然后使用频率直方图来计算每个岩性的测井响应范围。选择从23个记录曲线(GR,AC,CNL,DEN等)中选择的岩性敏感曲线作为输入变量。最后,建立了BP神经网络训练模型预测岩性。研究区的岩性可分为四种类型:泥岩,石灰泥岩,石灰 - 泥岩和石灰骨质油页岩。岩性的测井响应是复杂的,其特征在于4个指标的低值和两个指标的低值。通过比较隐藏节点的数量和培训时间的数量,我们发现15个隐藏节点的数量和1000次训练次数产生了最佳的培训结果。基于上述结果建立了最佳神经网络训练模型。 XX-1井BP神经网络的岩性预测结果表明,精度率超过80%,表明该方法适用于大陆页岩地层的岩性识别。该研究为大陆物流储层的水库质量和油性评估提供了基础,对页岩油和天然气勘探具有重要意义。

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