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潜山油藏多因素神经网络裂缝综合识别技术——以垦利潜山油藏为例

Integrated identification technology of multiple -factor neural network for buried hill reservoir

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【作者】 陶国秀

【Author】 Tao Guoxiu. Geological Scientific Research Institute, Shengli Oilfield Company of SINOPEC, Dongying City, Shandong Province ,257015, China

【机构】 中国石油大学(北京)地球资源与信息学院 北京昌平102249中国石化股份胜利油田分公司地质科学研究院山东东营257015

【摘要】 针对潜山油藏井间储层预测的难题,利用地震探测技术对潜山油藏裂缝进行预测。运用神经网络和模糊逻辑技术综合多种与裂缝有关的地质因素,对垦利潜山油藏储层中的裂缝进行了定量化预测和描述。预测结果表明,裂缝发育方向主要为北西向,其次为北东及近东西向;通过综合评价将裂缝发育强度细分为3个等级,该技术预测结果与地质认识对应性好,取得了较为理想的效果。

【Abstract】 The fractures in buried hill reservoir are predicted using seismic detection technology so as to solve the difficulty of crosshole reservoir prediction of the buried hill reservoir. Fractures in Kenli buried hill reservoir are predicted and described quantitatively by using neural network and fuzzy logic techniques combined with many geological factors related to the fractures. Using this new technique,fractures are predicted to be developed in NW direction mainly and in NE and nearly EW direction next. Fractures development intension is divided into three levels after comprehensive evaluation. Prediction results are well corresponding with geological recognitions and the ideal results are achieved.

  • 【文献出处】 油气地质与采收率 ,Petroleum Geology and Recovery Efficiency , 编辑部邮箱 ,2006年04期
  • 【分类号】P618.13
  • 【被引频次】6
  • 【下载频次】208
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