首页> 外文期刊>Journal of Petroleum Science & Engineering >Identifying flow units by FA-assisted SSOM-An example from the Eocene basin-floor-fan turbidite reservoirs in the Daluhu Oilfield, Dongying Depression, Bohai Bay Basin, China
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Identifying flow units by FA-assisted SSOM-An example from the Eocene basin-floor-fan turbidite reservoirs in the Daluhu Oilfield, Dongying Depression, Bohai Bay Basin, China

机译:通过FA辅助SSOM识别流量单位 - 渤海湾盆地东营萧条滨水盆地风扇浊池储层的一个例子

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摘要

Accurate identification of flow units is essential in oil and gas development. In this study, integrated core, log, and production data from the Eocene basin-floor-fan turbidite reservoir demonstrates a new method to identify flow unit using factor analysis (FA) and supervised-mode self-organizing-map neural network (SSOM). The reservoirs were classified into four types of flow units (I, II, III and IV). Five principal factors were extracted through factor analysis on thirteen evaluation parameters for reflecting the characteristics of basin-floor-fan turbidite reservoirs. Then using the five principal factors as the input, the flow unit prediction model was established based on SSOM. The prediction results of flow unit based on FA-SSOM are consistent with the results of core analysis and test oil conclusion, which have a good classification effect. Therefore, the prediction model based on FA and SSOM provides an effective way for fine reservoir interpretation. The established FA-SSOM model is further compared with Linear Discriminant Analysis (LDA) and Back Propagation (BP) neural network and has the best prediction. This study also sheds light on the remaining oil development by linking the identified flow unit type with daily production data.
机译:精确识别流量单位在石油和天然气开发中是必不可少的。在本研究中,集成核心,日志和来自农业盆地 - 落地风扇浊度储存器的生产数据演示了使用因子分析(FA)和监督模式自组织地图神经网络(SSOM)识别流动单元的新方法。将储存器分为四种流量单位(I,II,III和IV)。通过对13分析来提取五个主要因素,反映盆地风扇浊度储层特性的十三评价参数。然后使用五个主要因素作为输入,基于SSOM建立流量单元预测模型。基于FA-SSOM的流动单元的预测结果与核心分析和测试油结论的结果一致,具有良好的分类效果。因此,基于FA和SSOM的预测模型为细水库解释提供了一种有效的方法。建立的FA-SSOM模型与线性判别分析(LDA)和后传播(BP)神经网络相比,并具有最佳预测。本研究还通过将所识别的流量单元类型与日常生产数据连接来阐明剩余的油开发。

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